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  • ONNX 开始

    环境

    基础

    conda create -n onnx python=3.8 -y
    conda activate onnx
    
    # ONNX
    #  https://github.com/onnx/onnx
    conda install -c conda-forge onnx -y
    python -c "import onnx; print(onnx.__version__)"
    
    import onnx
    model = onnx.load("model.onnx")
    

    简化

    # ONNX Simplifier
    #  https://github.com/daquexian/onnx-simplifier
    pip install onnx-simplifier
    python -m onnxsim -h
    
    import onnxsim
    model_simp, check = onnxsim.simplify(model, perform_optimization=False)
    assert check, "Simplified ONNX model could not be validated"
    

    使用

    给出些 ONNX 模型使用的示例方法。

    提取子模型

    import onnx
    
    input_path = "path/to/the/original/model.onnx"
    output_path = "path/to/save/the/extracted/model.onnx"
    input_names = ["input_0", "input_1", "input_2"]
    output_names = ["output_0", "output_1"]
    
    onnx.utils.extract_model(input_path, output_path, input_names, output_names)
    

    修改输入输出名称

    def _onnx_rename(model, names, names_new):
      for node in model.graph.node:
        for i, n in enumerate(node.input):
          if n in names:
            node.input[i] = names_new[names.index(n)]
        for i, n in enumerate(node.output):
          if n in names:
            node.output[i] = names_new[names.index(n)]
      for node in model.graph.input:
        if node.name in names:
          node.name = names_new[names.index(node.name)]
      # print(model.graph.input)
      for node in model.graph.output:
        if node.name in names:
          node.name = names_new[names.index(node.name)]
      # print(model.graph.output)
    
    _onnx_rename(model, ["input", "output"], ["input_new", "output_new"])
    

    修改输入输出维度

    此为修改模型的。如果要修改某节点的,见参考 onnx_cut.py_onnx_specify_shapes()

    from onnx.tools import update_model_dims
    
    update_model_dims.update_inputs_outputs_dims(model,
      {"input": [1, 3, 512, 512]},
      {"scores": [100, 1], "boxes": [100, 4]}
    )
    

    推理模型节点维度

    指明模型输入维度后,可自动推理后续节点的维度。

    model_infer = onnx.shape_inference.infer_shapes(model)
    

    获取图属性名称索引

    辅助找出指定名称的图属性。

    def _onnx_graph_name_map(graph_prop_list):
      m = {}
      for n in graph_prop_list:
        m[n.name] = n
      return m
    
    node_map = _onnx_graph_name_map(graph.node)
    initializer_map = _onnx_graph_name_map(graph.initializer)
    input_map = _onnx_graph_name_map(graph.input)
    output_map = _onnx_graph_name_map(graph.output)
    value_info_map = _onnx_graph_name_map(graph.value_info)
    

    获取节点输入名称索引

    辅助找出指定输入名称的节点列表。输出同样。

    def _onnx_node_input_map(node_list):
      m = {}
      for n in node_list:
        for n_input in n.input:
          if n_input in m:
            m[n_input].append(n)
          else:
            m[n_input] = [n]
      return m
    
    node_input_map = _onnx_node_input_map(graph.node)
    

    获取图属性位置

    辅助找出图某属性所在列表位置。

    def _onnx_graph_index(graph_prop_list, prop, by_name=False):
      for i, n in enumerate(graph_prop_list):
        if by_name:
          if n.name == prop.name:
            return i
        else:
          if n == prop:
            return i
      return -1
    
    node_i = _onnx_graph_index(graph.node, node)
    

    获取某区间的节点

    辅助找出某区间的节点字典。

    def _onnx_node_between(node_beg, node_end, node_input_map):
      nodes = {}
      def _between(beg, end):
        if beg.name == end.name:
          return
        for n_output in beg.output:
          for n in node_input_map[n_output]:
            if n.name == end.name or n.name in nodes:
              continue
            nodes[n.name] = n
            _between(n, end)
      _between(node_beg, node_end)
      return nodes
    

    替换某个节点

    替换或修改某个节点的过程。

    from onnx import helper
    
    node = graph.node[100]
    node_i = _onnx_graph_index(graph.node, node)
    
    graph.node.remove(node)
    
    node_new = helper.make_node(
      'Pad',                  # name
      ['X', 'pads', 'value'], # inputs
      ['Y'],                  # outputs
      mode='constant',        # attributes
    )
    graph.node.insert(node_i, node_new)
    

    模型运行推理

    模型运行推理,得到输出的过程。

    import cv2 as cv
    import numpy as np
    import onnxruntime as nxrun
    
    onnx_session = nxrun.InferenceSession("path/to/model.onnx")
    
    img = cv.imread("path/to/image.png", cv.IMREAD_COLOR)
    # img = img[...,::-1]  # BGR > RGB
    # _, _, h, w = input_node.shape  # BCHW
    # img = cv.resize(src=img, dsize=(w, h), interpolation=cv.INTER_LINEAR_EXACT)
    input_data = np.moveaxis(img, -1, 0)  # HWC > CHW
    input_data = input_data[np.newaxis, :].astype(np.float32)
    
    def _get_output_names(onnx_session):
      names = []
      for node in onnx_session.get_outputs():
        names.append(node.name)
      return names
    
    output_names = _get_output_names(onnx_session)
    
    outputs = onnx_session.run(
      output_names, input_feed={"input": input_data}
    )
    

    参考

    GoCoding 个人实践的经验分享,可关注公众号!

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  • 原文地址:https://www.cnblogs.com/gocodinginmyway/p/14843914.html
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