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  • ubuntu tensorflow cpu faster-rcnn train data

    (flappbird) luo@luo-All-Series:~/MyFile/tf-faster-rcnn_box$ 

    (flappbird) luo@luo-All-Series:~/MyFile/tf-faster-rcnn_box$ 

    (flappbird) luo@luo-All-Series:~/MyFile/tf-faster-rcnn_box$ 

    (flappbird) luo@luo-All-Series:~/MyFile/tf-faster-rcnn_box$ 

    (flappbird) luo@luo-All-Series:~/MyFile/tf-faster-rcnn_box$ 

    (flappbird) luo@luo-All-Series:~/MyFile/tf-faster-rcnn_box$ ./experiments/scripts/train_faster_rcnn.sh 0 pascal_voc_0712 res101
    + set -e
    + export PYTHONUNBUFFERED=True
    + PYTHONUNBUFFERED=True
    + GPU_ID=0
    + DATASET=pascal_voc_0712
    + NET=res101
    + array=($@)
    + len=3
    + EXTRA_ARGS=
    + EXTRA_ARGS_SLUG=
    + case ${DATASET} in
    + TRAIN_IMDB=voc_2007_trainval+voc_2012_trainval
    + TEST_IMDB=voc_2007_test
    + STEPSIZE='[200]'
    + ITERS=3200
    + ANCHORS='[8,16,32]'
    + RATIOS='[0.5,1,2]'
    ++ date +%Y-%m-%d_%H-%M-%S
    + LOG=experiments/logs/res101_voc_2007_trainval+voc_2012_trainval__res101.txt.2019-05-16_14-21-07
    + exec
    ++ tee -a experiments/logs/res101_voc_2007_trainval+voc_2012_trainval__res101.txt.2019-05-16_14-21-07
    + echo Logging output to experiments/logs/res101_voc_2007_trainval+voc_2012_trainval__res101.txt.2019-05-16_14-21-07
    Logging output to experiments/logs/res101_voc_2007_trainval+voc_2012_trainval__res101.txt.2019-05-16_14-21-07
    + set +x
    + '[' '!' -f output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_3200.ckpt.index ']'
    + [[ ! -z '' ]]
    + CUDA_VISIBLE_DEVICES=0
    + time python ./tools/trainval_net.py --weight data/imagenet_weights/res101.ckpt --imdb voc_2007_trainval+voc_2012_trainval --imdbval voc_2007_test --iters 3200 --cfg experiments/cfgs/res101.yml --net res101 --set ANCHOR_SCALES '[8,16,32]' ANCHOR_RATIOS '[0.5,1,2]' TRAIN.STEPSIZE '[200]'
    Called with args:
    Namespace(cfg_file='experiments/cfgs/res101.yml', imdb_name='voc_2007_trainval+voc_2012_trainval', imdbval_name='voc_2007_test', max_iters=3200, net='res101', set_cfgs=['ANCHOR_SCALES', '[8,16,32]', 'ANCHOR_RATIOS', '[0.5,1,2]', 'TRAIN.STEPSIZE', '[200]'], tag=None, weight='data/imagenet_weights/res101.ckpt')
    Using config:
    {'ANCHOR_RATIOS': [0.5, 1, 2],
    'ANCHOR_SCALES': [8, 16, 32],
    'DATA_DIR': '/home/luo/MyFile/tf-faster-rcnn_box/data',
    'EXP_DIR': 'res101',
    'MATLAB': 'matlab',
    'MOBILENET': {'DEPTH_MULTIPLIER': 1.0,
    'FIXED_LAYERS': 5,
    'REGU_DEPTH': False,
    'WEIGHT_DECAY': 4e-05},
    'PIXEL_MEANS': array([[[102.9801, 115.9465, 122.7717]]]),
    'POOLING_MODE': 'crop',
    'POOLING_SIZE': 7,
    'RESNET': {'FIXED_BLOCKS': 1, 'MAX_POOL': False},
    'RNG_SEED': 3,
    'ROOT_DIR': '/home/luo/MyFile/tf-faster-rcnn_box',
    'RPN_CHANNELS': 512,
    'TEST': {'BBOX_REG': True,
    'HAS_RPN': True,
    'MAX_SIZE': 1000,
    'MODE': 'nms',
    'NMS': 0.3,
    'PROPOSAL_METHOD': 'gt',
    'RPN_NMS_THRESH': 0.7,
    'RPN_POST_NMS_TOP_N': 300,
    'RPN_PRE_NMS_TOP_N': 6000,
    'RPN_TOP_N': 5000,
    'SCALES': [600],
    'SVM': False},
    'TRAIN': {'ASPECT_GROUPING': False,
    'BATCH_SIZE': 256,
    'BBOX_INSIDE_WEIGHTS': [1.0, 1.0, 1.0, 1.0],
    'BBOX_NORMALIZE_MEANS': [0.0, 0.0, 0.0, 0.0],
    'BBOX_NORMALIZE_STDS': [0.1, 0.1, 0.2, 0.2],
    'BBOX_NORMALIZE_TARGETS': True,
    'BBOX_NORMALIZE_TARGETS_PRECOMPUTED': True,
    'BBOX_REG': True,
    'BBOX_THRESH': 0.5,
    'BG_THRESH_HI': 0.5,
    'BG_THRESH_LO': 0.0,
    'BIAS_DECAY': False,
    'DISPLAY': 20,
    'DOUBLE_BIAS': False,
    'FG_FRACTION': 0.25,
    'FG_THRESH': 0.5,
    'GAMMA': 0.1,
    'HAS_RPN': True,
    'IMS_PER_BATCH': 1,
    'LEARNING_RATE': 0.001,
    'MAX_SIZE': 640,
    'MOMENTUM': 0.9,
    'PROPOSAL_METHOD': 'gt',
    'RPN_BATCHSIZE': 256,
    'RPN_BBOX_INSIDE_WEIGHTS': [1.0, 1.0, 1.0, 1.0],
    'RPN_CLOBBER_POSITIVES': False,
    'RPN_FG_FRACTION': 0.5,
    'RPN_NEGATIVE_OVERLAP': 0.3,
    'RPN_NMS_THRESH': 0.7,
    'RPN_POSITIVE_OVERLAP': 0.7,
    'RPN_POSITIVE_WEIGHT': -1.0,
    'RPN_POST_NMS_TOP_N': 2000,
    'RPN_PRE_NMS_TOP_N': 12000,
    'SCALES': [600],
    'SNAPSHOT_ITERS': 500,
    'SNAPSHOT_KEPT': 3,
    'SNAPSHOT_PREFIX': 'res101_faster_rcnn',
    'STEPSIZE': [200],
    'SUMMARY_INTERVAL': 10,
    'TRUNCATED': False,
    'USE_ALL_GT': True,
    'USE_FLIPPED': True,
    'USE_GT': False,
    'WEIGHT_DECAY': 0.0001},
    'USE_E2E_TF': True,
    'USE_GPU_NMS': False}
    Loaded dataset `voc_2007_trainval` for training
    Set proposal method: gt
    Appending horizontally-flipped training examples...
    wrote gt roidb to /home/luo/MyFile/tf-faster-rcnn_box/data/cache/voc_2007_trainval_gt_roidb.pkl
    done
    Preparing training data...
    done
    Loaded dataset `voc_2012_trainval` for training
    Set proposal method: gt
    Appending horizontally-flipped training examples...
    wrote gt roidb to /home/luo/MyFile/tf-faster-rcnn_box/data/cache/voc_2012_trainval_gt_roidb.pkl
    done
    Preparing training data...
    done
    3100 roidb entries
    Output will be saved to `/home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default`
    TensorFlow summaries will be saved to `/home/luo/MyFile/tf-faster-rcnn_box/tensorboard/res101/voc_2007_trainval+voc_2012_trainval/default`
    Loaded dataset `voc_2007_test` for training
    Set proposal method: gt
    Preparing training data...
    wrote gt roidb to /home/luo/MyFile/tf-faster-rcnn_box/data/cache/voc_2007_test_gt_roidb.pkl
    done
    388 validation roidb entries
    Filtered 0 roidb entries: 3100 -> 3100
    Filtered 0 roidb entries: 388 -> 388
    2019-05-16 14:21:10.101640: I tensorflow/core/platform/cpu_feature_guard.cc:140] Your CPU supports instructions that this TensorFlow binary was not compiled to use: AVX2 FMA
    Solving...
    /home/luo/anaconda3/envs/flappbird/lib/python3.6/site-packages/tensorflow/python/ops/gradients_impl.py:98: UserWarning: Converting sparse IndexedSlices to a dense Tensor of unknown shape. This may consume a large amount of memory.
    "Converting sparse IndexedSlices to a dense Tensor of unknown shape. "
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    Loaded.
    Fix Resnet V1 layers..
    Fixed.
    iter: 20 / 3200, total loss: 1.135714
    >>> rpn_loss_cls: 0.095185
    >>> rpn_loss_box: 0.219110
    >>> loss_cls: 0.245350
    >>> loss_box: 0.193565
    >>> lr: 0.001000
    speed: 18.402s / iter
    iter: 40 / 3200, total loss: 1.600461
    >>> rpn_loss_cls: 0.235677
    >>> rpn_loss_box: 0.519147
    >>> loss_cls: 0.258725
    >>> loss_box: 0.204415
    >>> lr: 0.001000
    speed: 18.246s / iter

    iter: 60 / 3200, total loss: 1.026078
    >>> rpn_loss_cls: 0.166990
    >>> rpn_loss_box: 0.091634
    >>> loss_cls: 0.133496
    >>> loss_box: 0.251467
    >>> lr: 0.001000
    speed: 18.454s / iter
    iter: 80 / 3200, total loss: 1.284394
    >>> rpn_loss_cls: 0.224517
    >>> rpn_loss_box: 0.456405
    >>> loss_cls: 0.072983
    >>> loss_box: 0.148006
    >>> lr: 0.001000
    speed: 18.529s / iter

    iter: 80 / 3200, total loss: 1.284394
    >>> rpn_loss_cls: 0.224517
    >>> rpn_loss_box: 0.456405
    >>> loss_cls: 0.072983
    >>> loss_box: 0.148006
    >>> lr: 0.001000
    speed: 18.529s / iter
    iter: 100 / 3200, total loss: 0.844565
    >>> rpn_loss_cls: 0.175153
    >>> rpn_loss_box: 0.030733
    >>> loss_cls: 0.099979
    >>> loss_box: 0.156224
    >>> lr: 0.001000
    speed: 18.616s / iter
    iter: 120 / 3200, total loss: 1.405110
    >>> rpn_loss_cls: 0.277845
    >>> rpn_loss_box: 0.059538
    >>> loss_cls: 0.414902
    >>> loss_box: 0.270357
    >>> lr: 0.001000
    speed: 18.615s / iter
    iter: 140 / 3200, total loss: 1.150603
    >>> rpn_loss_cls: 0.331623
    >>> rpn_loss_box: 0.227049
    >>> loss_cls: 0.082486
    >>> loss_box: 0.126985
    >>> lr: 0.001000
    speed: 18.609s / iter
    iter: 160 / 3200, total loss: 0.838705
    >>> rpn_loss_cls: 0.229634
    >>> rpn_loss_box: 0.022866
    >>> loss_cls: 0.052187
    >>> loss_box: 0.151566
    >>> lr: 0.001000
    speed: 18.610s / iter
    iter: 180 / 3200, total loss: 0.967498
    >>> rpn_loss_cls: 0.109740
    >>> rpn_loss_box: 0.070803
    >>> loss_cls: 0.195030
    >>> loss_box: 0.209483
    >>> lr: 0.001000
    speed: 18.599s / iter
    iter: 200 / 3200, total loss: 0.995808
    >>> rpn_loss_cls: 0.190712
    >>> rpn_loss_box: 0.229901
    >>> loss_cls: 0.050683
    >>> loss_box: 0.142080
    >>> lr: 0.001000
    speed: 18.590s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_201.ckpt
    iter: 220 / 3200, total loss: 0.947366
    >>> rpn_loss_cls: 0.117479
    >>> rpn_loss_box: 0.166095
    >>> loss_cls: 0.127740
    >>> loss_box: 0.153623
    >>> lr: 0.000100
    speed: 18.561s / iter
    iter: 240 / 3200, total loss: 0.930408
    >>> rpn_loss_cls: 0.091187
    >>> rpn_loss_box: 0.028099
    >>> loss_cls: 0.125474
    >>> loss_box: 0.303220
    >>> lr: 0.000100
    speed: 18.544s / iter
    iter: 260 / 3200, total loss: 0.783629
    >>> rpn_loss_cls: 0.175871
    >>> rpn_loss_box: 0.058733
    >>> loss_cls: 0.047003
    >>> loss_box: 0.119595
    >>> lr: 0.000100
    speed: 18.511s / iter
    iter: 280 / 3200, total loss: 0.883182
    >>> rpn_loss_cls: 0.122077
    >>> rpn_loss_box: 0.177903
    >>> loss_cls: 0.046702
    >>> loss_box: 0.154073
    >>> lr: 0.000100
    speed: 18.496s / iter
    iter: 300 / 3200, total loss: 0.723198
    >>> rpn_loss_cls: 0.075850
    >>> rpn_loss_box: 0.028023
    >>> loss_cls: 0.059075
    >>> loss_box: 0.177825
    >>> lr: 0.000100
    speed: 18.483s / iter
    iter: 320 / 3200, total loss: 0.725044
    >>> rpn_loss_cls: 0.070511
    >>> rpn_loss_box: 0.083238
    >>> loss_cls: 0.041324
    >>> loss_box: 0.147548
    >>> lr: 0.000100
    speed: 18.473s / iter
    iter: 340 / 3200, total loss: 0.664221
    >>> rpn_loss_cls: 0.067252
    >>> rpn_loss_box: 0.011058
    >>> loss_cls: 0.053833
    >>> loss_box: 0.149655
    >>> lr: 0.000100
    speed: 18.463s / iter
    iter: 360 / 3200, total loss: 0.839485
    >>> rpn_loss_cls: 0.020818
    >>> rpn_loss_box: 0.048659
    >>> loss_cls: 0.086075
    >>> loss_box: 0.301513
    >>> lr: 0.000100
    speed: 18.459s / iter
    iter: 380 / 3200, total loss: 0.825940
    >>> rpn_loss_cls: 0.090821
    >>> rpn_loss_box: 0.012293
    >>> loss_cls: 0.102120
    >>> loss_box: 0.238286
    >>> lr: 0.000100
    speed: 18.452s / iter
    iter: 400 / 3200, total loss: 0.616738
    >>> rpn_loss_cls: 0.038577
    >>> rpn_loss_box: 0.005539
    >>> loss_cls: 0.060641
    >>> loss_box: 0.129562
    >>> lr: 0.000100
    speed: 18.448s / iter
    iter: 420 / 3200, total loss: 0.788184
    >>> rpn_loss_cls: 0.101999
    >>> rpn_loss_box: 0.099144
    >>> loss_cls: 0.070542
    >>> loss_box: 0.134082
    >>> lr: 0.000100
    speed: 18.435s / iter
    iter: 440 / 3200, total loss: 1.085997
    >>> rpn_loss_cls: 0.093481
    >>> rpn_loss_box: 0.019349
    >>> loss_cls: 0.153576
    >>> loss_box: 0.437174
    >>> lr: 0.000100
    speed: 18.429s / iter
    iter: 460 / 3200, total loss: 1.423583
    >>> rpn_loss_cls: 0.356634
    >>> rpn_loss_box: 0.074707
    >>> loss_cls: 0.249503
    >>> loss_box: 0.360324
    >>> lr: 0.000100
    speed: 18.420s / iter
    iter: 480 / 3200, total loss: 0.916140
    >>> rpn_loss_cls: 0.162728
    >>> rpn_loss_box: 0.249070
    >>> loss_cls: 0.030213
    >>> loss_box: 0.091716
    >>> lr: 0.000100
    speed: 18.414s / iter
    iter: 500 / 3200, total loss: 0.761923
    >>> rpn_loss_cls: 0.176307
    >>> rpn_loss_box: 0.074660
    >>> loss_cls: 0.031245
    >>> loss_box: 0.097299
    >>> lr: 0.000100
    speed: 18.408s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_500.ckpt
    iter: 520 / 3200, total loss: 0.885430
    >>> rpn_loss_cls: 0.113050
    >>> rpn_loss_box: 0.014576
    >>> loss_cls: 0.103602
    >>> loss_box: 0.271790
    >>> lr: 0.000100
    speed: 18.402s / iter
    iter: 540 / 3200, total loss: 0.590627
    >>> rpn_loss_cls: 0.031484
    >>> rpn_loss_box: 0.032061
    >>> loss_cls: 0.015204
    >>> loss_box: 0.129469
    >>> lr: 0.000100
    speed: 18.396s / iter
    iter: 560 / 3200, total loss: 0.757290
    >>> rpn_loss_cls: 0.222908
    >>> rpn_loss_box: 0.022937
    >>> loss_cls: 0.036551
    >>> loss_box: 0.092485
    >>> lr: 0.000100
    speed: 18.388s / iter
    iter: 580 / 3200, total loss: 0.652721
    >>> rpn_loss_cls: 0.040262
    >>> rpn_loss_box: 0.007916
    >>> loss_cls: 0.077510
    >>> loss_box: 0.144626
    >>> lr: 0.000100
    speed: 18.386s / iter
    iter: 600 / 3200, total loss: 0.812826
    >>> rpn_loss_cls: 0.156050
    >>> rpn_loss_box: 0.142754
    >>> loss_cls: 0.028783
    >>> loss_box: 0.102833
    >>> lr: 0.000100
    speed: 18.379s / iter
    iter: 620 / 3200, total loss: 0.633658
    >>> rpn_loss_cls: 0.042237
    >>> rpn_loss_box: 0.018296
    >>> loss_cls: 0.040488
    >>> loss_box: 0.150232
    >>> lr: 0.000100
    speed: 18.376s / iter
    iter: 640 / 3200, total loss: 0.761751
    >>> rpn_loss_cls: 0.181334
    >>> rpn_loss_box: 0.024330
    >>> loss_cls: 0.028081
    >>> loss_box: 0.145603
    >>> lr: 0.000100
    speed: 18.370s / iter
    iter: 660 / 3200, total loss: 0.847254
    >>> rpn_loss_cls: 0.173398
    >>> rpn_loss_box: 0.032888
    >>> loss_cls: 0.055646
    >>> loss_box: 0.202919
    >>> lr: 0.000100
    speed: 18.363s / iter
    iter: 680 / 3200, total loss: 1.182448
    >>> rpn_loss_cls: 0.095425
    >>> rpn_loss_box: 0.015148
    >>> loss_cls: 0.255668
    >>> loss_box: 0.433806
    >>> lr: 0.000100
    speed: 18.359s / iter
    iter: 700 / 3200, total loss: 0.664434
    >>> rpn_loss_cls: 0.048816
    >>> rpn_loss_box: 0.061652
    >>> loss_cls: 0.052419
    >>> loss_box: 0.119148
    >>> lr: 0.000100
    speed: 18.353s / iter
    iter: 720 / 3200, total loss: 0.556006
    >>> rpn_loss_cls: 0.026380
    >>> rpn_loss_box: 0.015842
    >>> loss_cls: 0.031052
    >>> loss_box: 0.100334
    >>> lr: 0.000100
    speed: 18.347s / iter
    iter: 740 / 3200, total loss: 0.867070
    >>> rpn_loss_cls: 0.144368
    >>> rpn_loss_box: 0.197553
    >>> loss_cls: 0.022957
    >>> loss_box: 0.119795
    >>> lr: 0.000100
    speed: 18.340s / iter
    iter: 760 / 3200, total loss: 0.866542
    >>> rpn_loss_cls: 0.136555
    >>> rpn_loss_box: 0.022036
    >>> loss_cls: 0.139475
    >>> loss_box: 0.186081
    >>> lr: 0.000100
    speed: 18.338s / iter
    iter: 780 / 3200, total loss: 0.539158
    >>> rpn_loss_cls: 0.006686
    >>> rpn_loss_box: 0.008340
    >>> loss_cls: 0.030934
    >>> loss_box: 0.110804
    >>> lr: 0.000100
    speed: 18.333s / iter
    iter: 800 / 3200, total loss: 0.630556
    >>> rpn_loss_cls: 0.020302
    >>> rpn_loss_box: 0.007729
    >>> loss_cls: 0.060629
    >>> loss_box: 0.159504
    >>> lr: 0.000100
    speed: 18.330s / iter
    iter: 820 / 3200, total loss: 0.861949
    >>> rpn_loss_cls: 0.243657
    >>> rpn_loss_box: 0.037310
    >>> loss_cls: 0.102158
    >>> loss_box: 0.096434
    >>> lr: 0.000100
    speed: 18.326s / iter
    iter: 840 / 3200, total loss: 0.775692
    >>> rpn_loss_cls: 0.100457
    >>> rpn_loss_box: 0.011574
    >>> loss_cls: 0.121838
    >>> loss_box: 0.159434
    >>> lr: 0.000100
    speed: 18.324s / iter

    iter: 860 / 3200, total loss: 0.700040
    >>> rpn_loss_cls: 0.096587
    >>> rpn_loss_box: 0.133827
    >>> loss_cls: 0.014659
    >>> loss_box: 0.072578
    >>> lr: 0.000100
    speed: 18.326s / iter
    iter: 880 / 3200, total loss: 0.993830
    >>> rpn_loss_cls: 0.060564
    >>> rpn_loss_box: 0.050651
    >>> loss_cls: 0.277251
    >>> loss_box: 0.222975
    >>> lr: 0.000100
    speed: 18.320s / iter
    iter: 900 / 3200, total loss: 0.826665
    >>> rpn_loss_cls: 0.131063
    >>> rpn_loss_box: 0.146693
    >>> loss_cls: 0.047760
    >>> loss_box: 0.118763
    >>> lr: 0.000100
    speed: 18.313s / iter
    iter: 920 / 3200, total loss: 0.627156
    >>> rpn_loss_cls: 0.042170
    >>> rpn_loss_box: 0.043370
    >>> loss_cls: 0.026695
    >>> loss_box: 0.132535
    >>> lr: 0.000100
    speed: 18.309s / iter
    iter: 940 / 3200, total loss: 0.712300
    >>> rpn_loss_cls: 0.218988
    >>> rpn_loss_box: 0.018594
    >>> loss_cls: 0.025722
    >>> loss_box: 0.066611
    >>> lr: 0.000100
    speed: 18.306s / iter
    iter: 960 / 3200, total loss: 0.644802
    >>> rpn_loss_cls: 0.047781
    >>> rpn_loss_box: 0.058776
    >>> loss_cls: 0.024861
    >>> loss_box: 0.131001
    >>> lr: 0.000100
    speed: 18.301s / iter
    iter: 980 / 3200, total loss: 0.777553
    >>> rpn_loss_cls: 0.174956
    >>> rpn_loss_box: 0.077568
    >>> loss_cls: 0.035650
    >>> loss_box: 0.106997
    >>> lr: 0.000100
    speed: 18.300s / iter
    iter: 1000 / 3200, total loss: 0.700307
    >>> rpn_loss_cls: 0.185844
    >>> rpn_loss_box: 0.014858
    >>> loss_cls: 0.053437
    >>> loss_box: 0.063788
    >>> lr: 0.000100
    speed: 18.296s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_1000.ckpt
    iter: 1020 / 3200, total loss: 1.561479
    >>> rpn_loss_cls: 0.218791
    >>> rpn_loss_box: 0.087909
    >>> loss_cls: 0.353962
    >>> loss_box: 0.518438
    >>> lr: 0.000100
    speed: 18.291s / iter
    iter: 1040 / 3200, total loss: 0.502503
    >>> rpn_loss_cls: 0.008974
    >>> rpn_loss_box: 0.041055
    >>> loss_cls: 0.025225
    >>> loss_box: 0.044872
    >>> lr: 0.000100
    speed: 18.285s / iter
    iter: 1060 / 3200, total loss: 0.637269
    >>> rpn_loss_cls: 0.074090
    >>> rpn_loss_box: 0.005266
    >>> loss_cls: 0.061586
    >>> loss_box: 0.113950
    >>> lr: 0.000100
    speed: 18.281s / iter
    iter: 1080 / 3200, total loss: 0.642691
    >>> rpn_loss_cls: 0.077114
    >>> rpn_loss_box: 0.061559
    >>> loss_cls: 0.034487
    >>> loss_box: 0.087155
    >>> lr: 0.000100
    speed: 18.275s / iter
    iter: 1100 / 3200, total loss: 0.524348
    >>> rpn_loss_cls: 0.013191
    >>> rpn_loss_box: 0.000652
    >>> loss_cls: 0.032331
    >>> loss_box: 0.095801
    >>> lr: 0.000100
    speed: 18.270s / iter
    iter: 1120 / 3200, total loss: 0.706850
    >>> rpn_loss_cls: 0.095066
    >>> rpn_loss_box: 0.120149
    >>> loss_cls: 0.041416
    >>> loss_box: 0.067846
    >>> lr: 0.000100
    speed: 18.266s / iter
    iter: 1140 / 3200, total loss: 0.595206
    >>> rpn_loss_cls: 0.016495
    >>> rpn_loss_box: 0.018580
    >>> loss_cls: 0.011464
    >>> loss_box: 0.166294
    >>> lr: 0.000100
    speed: 18.267s / iter
    iter: 1160 / 3200, total loss: 0.566315
    >>> rpn_loss_cls: 0.027176
    >>> rpn_loss_box: 0.006928
    >>> loss_cls: 0.058577
    >>> loss_box: 0.091263
    >>> lr: 0.000100
    speed: 18.264s / iter
    iter: 1180 / 3200, total loss: 0.721197
    >>> rpn_loss_cls: 0.007940
    >>> rpn_loss_box: 0.019503
    >>> loss_cls: 0.129445
    >>> loss_box: 0.181939
    >>> lr: 0.000100
    speed: 18.261s / iter
    iter: 1200 / 3200, total loss: 1.085414
    >>> rpn_loss_cls: 0.062800
    >>> rpn_loss_box: 0.031376
    >>> loss_cls: 0.140148
    >>> loss_box: 0.468720
    >>> lr: 0.000100
    speed: 18.257s / iter
    iter: 1220 / 3200, total loss: 0.809050
    >>> rpn_loss_cls: 0.045930
    >>> rpn_loss_box: 0.008692
    >>> loss_cls: 0.091820
    >>> loss_box: 0.280240
    >>> lr: 0.000100
    speed: 18.256s / iter
    iter: 1240 / 3200, total loss: 0.852630
    >>> rpn_loss_cls: 0.077544
    >>> rpn_loss_box: 0.008498
    >>> loss_cls: 0.187316
    >>> loss_box: 0.196905
    >>> lr: 0.000100
    speed: 18.256s / iter
    iter: 1260 / 3200, total loss: 0.921142
    >>> rpn_loss_cls: 0.196232
    >>> rpn_loss_box: 0.177095
    >>> loss_cls: 0.069370
    >>> loss_box: 0.096080
    >>> lr: 0.000100
    speed: 18.254s / iter
    iter: 1280 / 3200, total loss: 0.717685
    >>> rpn_loss_cls: 0.042205
    >>> rpn_loss_box: 0.008405
    >>> loss_cls: 0.107432
    >>> loss_box: 0.177279
    >>> lr: 0.000100
    speed: 18.251s / iter
    iter: 1300 / 3200, total loss: 0.632722
    >>> rpn_loss_cls: 0.033402
    >>> rpn_loss_box: 0.022300
    >>> loss_cls: 0.086850
    >>> loss_box: 0.107807
    >>> lr: 0.000100
    speed: 18.248s / iter
    iter: 1320 / 3200, total loss: 0.772178
    >>> rpn_loss_cls: 0.011429
    >>> rpn_loss_box: 0.025728
    >>> loss_cls: 0.144161
    >>> loss_box: 0.208497
    >>> lr: 0.000100
    speed: 18.247s / iter
    iter: 1340 / 3200, total loss: 0.574342
    >>> rpn_loss_cls: 0.065278
    >>> rpn_loss_box: 0.014274
    >>> loss_cls: 0.054535
    >>> loss_box: 0.057895
    >>> lr: 0.000100
    speed: 18.245s / iter
    iter: 1360 / 3200, total loss: 0.558155
    >>> rpn_loss_cls: 0.023798
    >>> rpn_loss_box: 0.014620
    >>> loss_cls: 0.071267
    >>> loss_box: 0.066110
    >>> lr: 0.000100
    speed: 18.242s / iter
    iter: 1380 / 3200, total loss: 0.858874
    >>> rpn_loss_cls: 0.205179
    >>> rpn_loss_box: 0.135245
    >>> loss_cls: 0.071671
    >>> loss_box: 0.064420
    >>> lr: 0.000100
    speed: 18.238s / iter
    iter: 1400 / 3200, total loss: 0.732612
    >>> rpn_loss_cls: 0.158370
    >>> rpn_loss_box: 0.011229
    >>> loss_cls: 0.083095
    >>> loss_box: 0.097560
    >>> lr: 0.000100
    speed: 18.236s / iter
    iter: 1420 / 3200, total loss: 0.627655
    >>> rpn_loss_cls: 0.040317
    >>> rpn_loss_box: 0.020486
    >>> loss_cls: 0.051815
    >>> loss_box: 0.132679
    >>> lr: 0.000100
    speed: 18.233s / iter
    iter: 1440 / 3200, total loss: 0.655073
    >>> rpn_loss_cls: 0.050216
    >>> rpn_loss_box: 0.010175
    >>> loss_cls: 0.096886
    >>> loss_box: 0.115441
    >>> lr: 0.000100
    speed: 18.232s / iter
    iter: 1460 / 3200, total loss: 0.688864
    >>> rpn_loss_cls: 0.008139
    >>> rpn_loss_box: 0.005262
    >>> loss_cls: 0.112913
    >>> loss_box: 0.180196
    >>> lr: 0.000100
    speed: 18.229s / iter
    iter: 1480 / 3200, total loss: 0.551693
    >>> rpn_loss_cls: 0.035668
    >>> rpn_loss_box: 0.057819
    >>> loss_cls: 0.022829
    >>> loss_box: 0.053024
    >>> lr: 0.000100
    speed: 18.227s / iter
    iter: 1500 / 3200, total loss: 0.488739
    >>> rpn_loss_cls: 0.008646
    >>> rpn_loss_box: 0.022023
    >>> loss_cls: 0.038600
    >>> loss_box: 0.037119
    >>> lr: 0.000100
    speed: 18.225s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_1500.ckpt
    iter: 1520 / 3200, total loss: 0.618269
    >>> rpn_loss_cls: 0.034364
    >>> rpn_loss_box: 0.021852
    >>> loss_cls: 0.079264
    >>> loss_box: 0.100438
    >>> lr: 0.000100
    speed: 18.222s / iter
    iter: 1540 / 3200, total loss: 0.590856
    >>> rpn_loss_cls: 0.044112
    >>> rpn_loss_box: 0.048106
    >>> loss_cls: 0.018573
    >>> loss_box: 0.097715
    >>> lr: 0.000100
    speed: 18.221s / iter
    iter: 1560 / 3200, total loss: 0.497062
    >>> rpn_loss_cls: 0.005680
    >>> rpn_loss_box: 0.056790
    >>> loss_cls: 0.019771
    >>> loss_box: 0.032473
    >>> lr: 0.000100
    speed: 18.219s / iter
    iter: 1580 / 3200, total loss: 0.510572
    >>> rpn_loss_cls: 0.018339
    >>> rpn_loss_box: 0.012231
    >>> loss_cls: 0.035023
    >>> loss_box: 0.062633
    >>> lr: 0.000100
    speed: 18.218s / iter
    iter: 1600 / 3200, total loss: 0.762474
    >>> rpn_loss_cls: 0.011902
    >>> rpn_loss_box: 0.025903
    >>> loss_cls: 0.084226
    >>> loss_box: 0.258098
    >>> lr: 0.000100
    speed: 18.217s / iter
    iter: 1620 / 3200, total loss: 0.619664
    >>> rpn_loss_cls: 0.070678
    >>> rpn_loss_box: 0.090305
    >>> loss_cls: 0.026413
    >>> loss_box: 0.049923
    >>> lr: 0.000100
    speed: 18.216s / iter
    iter: 1640 / 3200, total loss: 0.668359
    >>> rpn_loss_cls: 0.115850
    >>> rpn_loss_box: 0.072974
    >>> loss_cls: 0.023126
    >>> loss_box: 0.074065
    >>> lr: 0.000100
    speed: 18.215s / iter
    iter: 1660 / 3200, total loss: 0.476542
    >>> rpn_loss_cls: 0.013453
    >>> rpn_loss_box: 0.008222
    >>> loss_cls: 0.043750
    >>> loss_box: 0.028776
    >>> lr: 0.000100
    speed: 18.212s / iter
    iter: 1680 / 3200, total loss: 0.801644
    >>> rpn_loss_cls: 0.034519
    >>> rpn_loss_box: 0.041312
    >>> loss_cls: 0.082695
    >>> loss_box: 0.260777
    >>> lr: 0.000100
    speed: 18.210s / iter
    iter: 1700 / 3200, total loss: 0.659899
    >>> rpn_loss_cls: 0.079036
    >>> rpn_loss_box: 0.135803
    >>> loss_cls: 0.016650
    >>> loss_box: 0.046071
    >>> lr: 0.000100
    speed: 18.210s / iter
    iter: 1720 / 3200, total loss: 0.468342
    >>> rpn_loss_cls: 0.012049
    >>> rpn_loss_box: 0.004853
    >>> loss_cls: 0.039877
    >>> loss_box: 0.029225
    >>> lr: 0.000100
    speed: 18.208s / iter
    iter: 1740 / 3200, total loss: 0.669494
    >>> rpn_loss_cls: 0.133278
    >>> rpn_loss_box: 0.021838
    >>> loss_cls: 0.053368
    >>> loss_box: 0.078672
    >>> lr: 0.000100
    speed: 18.207s / iter
    iter: 1760 / 3200, total loss: 0.805181
    >>> rpn_loss_cls: 0.054967
    >>> rpn_loss_box: 0.006205
    >>> loss_cls: 0.149222
    >>> loss_box: 0.212452
    >>> lr: 0.000100
    speed: 18.207s / iter
    iter: 1780 / 3200, total loss: 0.562770
    >>> rpn_loss_cls: 0.010171
    >>> rpn_loss_box: 0.011130
    >>> loss_cls: 0.051831
    >>> loss_box: 0.107303
    >>> lr: 0.000100
    speed: 18.206s / iter
    iter: 1800 / 3200, total loss: 0.478316
    >>> rpn_loss_cls: 0.008894
    >>> rpn_loss_box: 0.012034
    >>> loss_cls: 0.040808
    >>> loss_box: 0.034247
    >>> lr: 0.000100
    speed: 18.205s / iter
    iter: 1820 / 3200, total loss: 0.675417
    >>> rpn_loss_cls: 0.034308
    >>> rpn_loss_box: 0.043778
    >>> loss_cls: 0.080100
    >>> loss_box: 0.134900
    >>> lr: 0.000100
    speed: 18.205s / iter
    iter: 1840 / 3200, total loss: 0.694651
    >>> rpn_loss_cls: 0.145737
    >>> rpn_loss_box: 0.024914
    >>> loss_cls: 0.046499
    >>> loss_box: 0.095171
    >>> lr: 0.000100
    speed: 18.204s / iter
    iter: 1860 / 3200, total loss: 0.718186
    >>> rpn_loss_cls: 0.127955
    >>> rpn_loss_box: 0.141966
    >>> loss_cls: 0.027834
    >>> loss_box: 0.038102
    >>> lr: 0.000100
    speed: 18.204s / iter
    iter: 1880 / 3200, total loss: 0.610979
    >>> rpn_loss_cls: 0.056210
    >>> rpn_loss_box: 0.036878
    >>> loss_cls: 0.035137
    >>> loss_box: 0.100427
    >>> lr: 0.000100
    speed: 18.202s / iter
    iter: 1900 / 3200, total loss: 0.614251
    >>> rpn_loss_cls: 0.038210
    >>> rpn_loss_box: 0.119047
    >>> loss_cls: 0.018028
    >>> loss_box: 0.056639
    >>> lr: 0.000100
    speed: 18.203s / iter
    iter: 1920 / 3200, total loss: 0.684837
    >>> rpn_loss_cls: 0.219620
    >>> rpn_loss_box: 0.003852
    >>> loss_cls: 0.028762
    >>> loss_box: 0.050277
    >>> lr: 0.000100
    speed: 18.202s / iter
    iter: 1940 / 3200, total loss: 1.401672
    >>> rpn_loss_cls: 0.214034
    >>> rpn_loss_box: 0.037252
    >>> loss_cls: 0.231535
    >>> loss_box: 0.536528
    >>> lr: 0.000100
    speed: 18.204s / iter
    iter: 1960 / 3200, total loss: 0.469799
    >>> rpn_loss_cls: 0.010847
    >>> rpn_loss_box: 0.002549
    >>> loss_cls: 0.039865
    >>> loss_box: 0.034215
    >>> lr: 0.000100
    speed: 18.205s / iter
    iter: 1980 / 3200, total loss: 0.835782
    >>> rpn_loss_cls: 0.106353
    >>> rpn_loss_box: 0.087398
    >>> loss_cls: 0.108732
    >>> loss_box: 0.150977
    >>> lr: 0.000100
    speed: 18.206s / iter
    iter: 2000 / 3200, total loss: 0.546089
    >>> rpn_loss_cls: 0.031715
    >>> rpn_loss_box: 0.012836
    >>> loss_cls: 0.040940
    >>> loss_box: 0.078277
    >>> lr: 0.000100
    speed: 18.206s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_2000.ckpt
    iter: 2020 / 3200, total loss: 0.545260
    >>> rpn_loss_cls: 0.012997
    >>> rpn_loss_box: 0.019149
    >>> loss_cls: 0.063566
    >>> loss_box: 0.067229
    >>> lr: 0.000100
    speed: 18.206s / iter
    iter: 2040 / 3200, total loss: 0.787888
    >>> rpn_loss_cls: 0.210177
    >>> rpn_loss_box: 0.132033
    >>> loss_cls: 0.017017
    >>> loss_box: 0.046343
    >>> lr: 0.000100
    speed: 18.207s / iter
    iter: 2060 / 3200, total loss: 0.558850
    >>> rpn_loss_cls: 0.045758
    >>> rpn_loss_box: 0.025514
    >>> loss_cls: 0.028708
    >>> loss_box: 0.076553
    >>> lr: 0.000100
    speed: 18.207s / iter
    iter: 2080 / 3200, total loss: 0.778635
    >>> rpn_loss_cls: 0.150327
    >>> rpn_loss_box: 0.013490
    >>> loss_cls: 0.076305
    >>> loss_box: 0.156196
    >>> lr: 0.000100
    speed: 18.207s / iter
    iter: 2100 / 3200, total loss: 0.472197
    >>> rpn_loss_cls: 0.005612
    >>> rpn_loss_box: 0.001504
    >>> loss_cls: 0.044761
    >>> loss_box: 0.038007
    >>> lr: 0.000100
    speed: 18.207s / iter
    iter: 2120 / 3200, total loss: 0.510658
    >>> rpn_loss_cls: 0.040257
    >>> rpn_loss_box: 0.027463
    >>> loss_cls: 0.021357
    >>> loss_box: 0.039268
    >>> lr: 0.000100
    speed: 18.209s / iter
    iter: 2140 / 3200, total loss: 0.493665
    >>> rpn_loss_cls: 0.018207
    >>> rpn_loss_box: 0.011092
    >>> loss_cls: 0.031297
    >>> loss_box: 0.050758
    >>> lr: 0.000100
    speed: 18.210s / iter
    iter: 2160 / 3200, total loss: 0.499123
    >>> rpn_loss_cls: 0.023877
    >>> rpn_loss_box: 0.030999
    >>> loss_cls: 0.022961
    >>> loss_box: 0.038975
    >>> lr: 0.000100
    speed: 18.213s / iter
    iter: 2180 / 3200, total loss: 0.821315
    >>> rpn_loss_cls: 0.123565
    >>> rpn_loss_box: 0.022282
    >>> loss_cls: 0.126760
    >>> loss_box: 0.166399
    >>> lr: 0.000100
    speed: 18.215s / iter
    iter: 2200 / 3200, total loss: 0.553932
    >>> rpn_loss_cls: 0.036548
    >>> rpn_loss_box: 0.024991
    >>> loss_cls: 0.032991
    >>> loss_box: 0.077094
    >>> lr: 0.000100
    speed: 18.215s / iter
    iter: 2220 / 3200, total loss: 0.642815
    >>> rpn_loss_cls: 0.007771
    >>> rpn_loss_box: 0.011506
    >>> loss_cls: 0.111587
    >>> loss_box: 0.129644
    >>> lr: 0.000100
    speed: 18.217s / iter
    iter: 2240 / 3200, total loss: 0.676707
    >>> rpn_loss_cls: 0.080309
    >>> rpn_loss_box: 0.091322
    >>> loss_cls: 0.046900
    >>> loss_box: 0.075871
    >>> lr: 0.000100
    speed: 18.218s / iter
    iter: 2260 / 3200, total loss: 0.505770
    >>> rpn_loss_cls: 0.007053
    >>> rpn_loss_box: 0.005911
    >>> loss_cls: 0.044429
    >>> loss_box: 0.066073
    >>> lr: 0.000100
    speed: 18.219s / iter
    iter: 2280 / 3200, total loss: 0.790898
    >>> rpn_loss_cls: 0.308350
    >>> rpn_loss_box: 0.017412
    >>> loss_cls: 0.034671
    >>> loss_box: 0.048161
    >>> lr: 0.000100
    speed: 18.221s / iter
    iter: 2300 / 3200, total loss: 0.532100
    >>> rpn_loss_cls: 0.027462
    >>> rpn_loss_box: 0.053741
    >>> loss_cls: 0.033639
    >>> loss_box: 0.034956
    >>> lr: 0.000100
    speed: 18.224s / iter
    iter: 2320 / 3200, total loss: 0.589589
    >>> rpn_loss_cls: 0.057401
    >>> rpn_loss_box: 0.070292
    >>> loss_cls: 0.037399
    >>> loss_box: 0.042196
    >>> lr: 0.000100
    speed: 18.226s / iter
    iter: 2340 / 3200, total loss: 0.855214
    >>> rpn_loss_cls: 0.089843
    >>> rpn_loss_box: 0.269566
    >>> loss_cls: 0.024967
    >>> loss_box: 0.088538
    >>> lr: 0.000100
    speed: 18.228s / iter
    iter: 2360 / 3200, total loss: 0.717431
    >>> rpn_loss_cls: 0.076898
    >>> rpn_loss_box: 0.158315
    >>> loss_cls: 0.050144
    >>> loss_box: 0.049776
    >>> lr: 0.000100
    speed: 18.230s / iter
    iter: 2380 / 3200, total loss: 0.662857
    >>> rpn_loss_cls: 0.206039
    >>> rpn_loss_box: 0.003267
    >>> loss_cls: 0.020686
    >>> loss_box: 0.050567
    >>> lr: 0.000100
    speed: 18.232s / iter
    iter: 2400 / 3200, total loss: 0.746430
    >>> rpn_loss_cls: 0.118575
    >>> rpn_loss_box: 0.016239
    >>> loss_cls: 0.101525
    >>> loss_box: 0.127796
    >>> lr: 0.000100
    speed: 18.233s / iter
    iter: 2420 / 3200, total loss: 0.525143
    >>> rpn_loss_cls: 0.016888
    >>> rpn_loss_box: 0.017676
    >>> loss_cls: 0.045701
    >>> loss_box: 0.062582
    >>> lr: 0.000100
    speed: 18.235s / iter
    iter: 2440 / 3200, total loss: 0.737239
    >>> rpn_loss_cls: 0.078193
    >>> rpn_loss_box: 0.022456
    >>> loss_cls: 0.061732
    >>> loss_box: 0.192565
    >>> lr: 0.000100
    speed: 18.235s / iter
    iter: 2460 / 3200, total loss: 0.794321
    >>> rpn_loss_cls: 0.161831
    >>> rpn_loss_box: 0.136335
    >>> loss_cls: 0.062428
    >>> loss_box: 0.051433
    >>> lr: 0.000100
    speed: 18.238s / iter
    iter: 2480 / 3200, total loss: 0.590657
    >>> rpn_loss_cls: 0.047985
    >>> rpn_loss_box: 0.059276
    >>> loss_cls: 0.042091
    >>> loss_box: 0.059014
    >>> lr: 0.000100
    speed: 18.239s / iter
    iter: 2500 / 3200, total loss: 0.613719
    >>> rpn_loss_cls: 0.012276
    >>> rpn_loss_box: 0.012471
    >>> loss_cls: 0.076417
    >>> loss_box: 0.130265
    >>> lr: 0.000100
    speed: 18.241s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_2500.ckpt
    iter: 2520 / 3200, total loss: 0.654271
    >>> rpn_loss_cls: 0.095726
    >>> rpn_loss_box: 0.119870
    >>> loss_cls: 0.026189
    >>> loss_box: 0.030197
    >>> lr: 0.000100
    speed: 18.241s / iter
    iter: 2540 / 3200, total loss: 0.476279
    >>> rpn_loss_cls: 0.009193
    >>> rpn_loss_box: 0.004208
    >>> loss_cls: 0.034638
    >>> loss_box: 0.045952
    >>> lr: 0.000100
    speed: 18.239s / iter
    iter: 2560 / 3200, total loss: 0.625369
    >>> rpn_loss_cls: 0.019211
    >>> rpn_loss_box: 0.125371
    >>> loss_cls: 0.040915
    >>> loss_box: 0.057586
    >>> lr: 0.000100
    speed: 18.240s / iter
    iter: 2580 / 3200, total loss: 0.584985
    >>> rpn_loss_cls: 0.025460
    >>> rpn_loss_box: 0.020770
    >>> loss_cls: 0.048802
    >>> loss_box: 0.107668
    >>> lr: 0.000100
    speed: 18.240s / iter
    iter: 2600 / 3200, total loss: 0.516507
    >>> rpn_loss_cls: 0.015200
    >>> rpn_loss_box: 0.056073
    >>> loss_cls: 0.038995
    >>> loss_box: 0.023955
    >>> lr: 0.000100
    speed: 18.240s / iter
    iter: 2620 / 3200, total loss: 0.582457
    >>> rpn_loss_cls: 0.028390
    >>> rpn_loss_box: 0.076542
    >>> loss_cls: 0.024121
    >>> loss_box: 0.071122
    >>> lr: 0.000100
    speed: 18.241s / iter
    iter: 2640 / 3200, total loss: 0.569222
    >>> rpn_loss_cls: 0.073077
    >>> rpn_loss_box: 0.032400
    >>> loss_cls: 0.040884
    >>> loss_box: 0.040580
    >>> lr: 0.000100
    speed: 18.242s / iter
    iter: 2660 / 3200, total loss: 0.524355
    >>> rpn_loss_cls: 0.058348
    >>> rpn_loss_box: 0.038125
    >>> loss_cls: 0.017749
    >>> loss_box: 0.027854
    >>> lr: 0.000100
    speed: 18.242s / iter
    iter: 2680 / 3200, total loss: 0.519076
    >>> rpn_loss_cls: 0.043049
    >>> rpn_loss_box: 0.019109
    >>> loss_cls: 0.031268
    >>> loss_box: 0.043372
    >>> lr: 0.000100
    speed: 18.242s / iter
    iter: 2700 / 3200, total loss: 0.482006
    >>> rpn_loss_cls: 0.022864
    >>> rpn_loss_box: 0.027816
    >>> loss_cls: 0.034281
    >>> loss_box: 0.014768
    >>> lr: 0.000100
    speed: 18.242s / iter
    iter: 2720 / 3200, total loss: 0.848716
    >>> rpn_loss_cls: 0.095160
    >>> rpn_loss_box: 0.016932
    >>> loss_cls: 0.121365
    >>> loss_box: 0.232982
    >>> lr: 0.000100
    speed: 18.243s / iter
    iter: 2740 / 3200, total loss: 0.492927
    >>> rpn_loss_cls: 0.029951
    >>> rpn_loss_box: 0.027604
    >>> loss_cls: 0.027604
    >>> loss_box: 0.025493
    >>> lr: 0.000100
    speed: 18.244s / iter
    iter: 2760 / 3200, total loss: 0.594886
    >>> rpn_loss_cls: 0.106875
    >>> rpn_loss_box: 0.008636
    >>> loss_cls: 0.041538
    >>> loss_box: 0.055565
    >>> lr: 0.000100
    speed: 18.244s / iter
    iter: 2780 / 3200, total loss: 0.538749
    >>> rpn_loss_cls: 0.037678
    >>> rpn_loss_box: 0.019155
    >>> loss_cls: 0.038125
    >>> loss_box: 0.061520
    >>> lr: 0.000100
    speed: 18.245s / iter
    iter: 2800 / 3200, total loss: 0.468894
    >>> rpn_loss_cls: 0.010169
    >>> rpn_loss_box: 0.020934
    >>> loss_cls: 0.005108
    >>> loss_box: 0.050412
    >>> lr: 0.000100
    speed: 18.247s / iter
    iter: 2820 / 3200, total loss: 0.499144
    >>> rpn_loss_cls: 0.024749
    >>> rpn_loss_box: 0.019493
    >>> loss_cls: 0.035706
    >>> loss_box: 0.036926
    >>> lr: 0.000100
    speed: 18.248s / iter
    iter: 2840 / 3200, total loss: 0.630420
    >>> rpn_loss_cls: 0.070317
    >>> rpn_loss_box: 0.104080
    >>> loss_cls: 0.042845
    >>> loss_box: 0.030909
    >>> lr: 0.000100
    speed: 18.249s / iter
    iter: 2860 / 3200, total loss: 0.553930
    >>> rpn_loss_cls: 0.027323
    >>> rpn_loss_box: 0.005669
    >>> loss_cls: 0.057542
    >>> loss_box: 0.081128
    >>> lr: 0.000100
    speed: 18.250s / iter
    iter: 2880 / 3200, total loss: 0.532811
    >>> rpn_loss_cls: 0.041538
    >>> rpn_loss_box: 0.039164
    >>> loss_cls: 0.026999
    >>> loss_box: 0.042844
    >>> lr: 0.000100
    speed: 18.251s / iter
    iter: 2900 / 3200, total loss: 0.606645
    >>> rpn_loss_cls: 0.093004
    >>> rpn_loss_box: 0.072453
    >>> loss_cls: 0.032159
    >>> loss_box: 0.026763
    >>> lr: 0.000100
    speed: 18.252s / iter
    iter: 2920 / 3200, total loss: 0.610751
    >>> rpn_loss_cls: 0.035319
    >>> rpn_loss_box: 0.005256
    >>> loss_cls: 0.064158
    >>> loss_box: 0.123755
    >>> lr: 0.000100
    speed: 18.252s / iter
    iter: 2940 / 3200, total loss: 0.590238
    >>> rpn_loss_cls: 0.023853
    >>> rpn_loss_box: 0.011993
    >>> loss_cls: 0.036663
    >>> loss_box: 0.135465
    >>> lr: 0.000100
    speed: 18.253s / iter
    iter: 2960 / 3200, total loss: 0.732967
    >>> rpn_loss_cls: 0.042913
    >>> rpn_loss_box: 0.010557
    >>> loss_cls: 0.060128
    >>> loss_box: 0.237108
    >>> lr: 0.000100
    speed: 18.254s / iter
    iter: 2980 / 3200, total loss: 0.596565
    >>> rpn_loss_cls: 0.071422
    >>> rpn_loss_box: 0.087485
    >>> loss_cls: 0.026072
    >>> loss_box: 0.029326
    >>> lr: 0.000100
    speed: 18.255s / iter
    iter: 3000 / 3200, total loss: 0.449472
    >>> rpn_loss_cls: 0.007425
    >>> rpn_loss_box: 0.010065
    >>> loss_cls: 0.028121
    >>> loss_box: 0.021603
    >>> lr: 0.000100
    speed: 18.256s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_3000.ckpt
    iter: 3020 / 3200, total loss: 0.420432
    >>> rpn_loss_cls: 0.006059
    >>> rpn_loss_box: 0.003383
    >>> loss_cls: 0.015263
    >>> loss_box: 0.013469
    >>> lr: 0.000100
    speed: 18.256s / iter
    iter: 3040 / 3200, total loss: 0.499304
    >>> rpn_loss_cls: 0.028310
    >>> rpn_loss_box: 0.016560
    >>> loss_cls: 0.021902
    >>> loss_box: 0.050277
    >>> lr: 0.000100
    speed: 18.257s / iter
    iter: 3060 / 3200, total loss: 0.636695
    >>> rpn_loss_cls: 0.132401
    >>> rpn_loss_box: 0.043681
    >>> loss_cls: 0.022125
    >>> loss_box: 0.056233
    >>> lr: 0.000100
    speed: 18.258s / iter
    iter: 3080 / 3200, total loss: 0.493683
    >>> rpn_loss_cls: 0.031520
    >>> rpn_loss_box: 0.012919
    >>> loss_cls: 0.021214
    >>> loss_box: 0.045777
    >>> lr: 0.000100
    speed: 18.259s / iter
    iter: 3100 / 3200, total loss: 0.596595
    >>> rpn_loss_cls: 0.068079
    >>> rpn_loss_box: 0.014994
    >>> loss_cls: 0.028614
    >>> loss_box: 0.102655
    >>> lr: 0.000100
    speed: 18.260s / iter
    iter: 3120 / 3200, total loss: 0.502758
    >>> rpn_loss_cls: 0.014378
    >>> rpn_loss_box: 0.032935
    >>> loss_cls: 0.033033
    >>> loss_box: 0.040161
    >>> lr: 0.000100
    speed: 18.263s / iter
    iter: 3140 / 3200, total loss: 0.544400
    >>> rpn_loss_cls: 0.042744
    >>> rpn_loss_box: 0.029882
    >>> loss_cls: 0.026032
    >>> loss_box: 0.063492
    >>> lr: 0.000100
    speed: 18.266s / iter
    iter: 3160 / 3200, total loss: 0.595721
    >>> rpn_loss_cls: 0.087768
    >>> rpn_loss_box: 0.085453
    >>> loss_cls: 0.020308
    >>> loss_box: 0.019943
    >>> lr: 0.000100
    speed: 18.267s / iter
    iter: 3180 / 3200, total loss: 0.547231
    >>> rpn_loss_cls: 0.021856
    >>> rpn_loss_box: 0.027437
    >>> loss_cls: 0.030406
    >>> loss_box: 0.085284
    >>> lr: 0.000100
    speed: 18.269s / iter
    iter: 3200 / 3200, total loss: 0.463937
    >>> rpn_loss_cls: 0.009630
    >>> rpn_loss_box: 0.001617
    >>> loss_cls: 0.039288
    >>> loss_box: 0.031156
    >>> lr: 0.000100
    speed: 18.272s / iter
    Wrote snapshot to: /home/luo/MyFile/tf-faster-rcnn_box/output/res101/voc_2007_trainval+voc_2012_trainval/default/res101_faster_rcnn_iter_3200.ckpt
    done solving

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