zoukankan      html  css  js  c++  java
  • Learning to Compare Image Patches via Convolutional Neural Networks --- Reading Summary

     

    Learning to Compare Image Patches via Convolutional Neural Networks ---  Reading Summary 

    2017.03.08 

     

    Target: this paper attempt to learn a geneal similarity function for comparing image patches from image data directly. 

    There are several ways in which patch pairs can be processed by the network and how the information sharing can take place in this case. This paper studied 3 types about the comparion network:

      1. 2-channel    2. Siamese   3. Pseu-siamese Network 


    1. Siamese Network : 

      This is a chassical network which first proposed by Lecun. This network has two networks which denote two inputs (the compared image pairs). Each network has its own convolution layer, ReLU and max-pooling layer. It is also worthy to notice that: the two networks are share same weights. 

     

    2. Pseudo-siamese Network :

      the same definition as siamese network, but the two branches do not share weights. This is the most difference between siamese and pseudo-siamese network. 

    3. 2-channel network : 

      Just combine two input patches 1 and 2 together, and input it into normal convolutional network. The output of the network is 1 value. This kind of network has greater flexibnility and fast to train. But, it is expensive when testing, because it need all combinations of patches. 



      

     

      

     

  • 相关阅读:
    tmp:算法数据结构
    [转]Open Live Writer 配置
    GCC ,Clang 与 make,cmake 一览
    概率统计(1):数据分布
    ISP基础(31):Lost Frame Strategy
    支付宝对接授权及加好友
    css实现定宽高比(非内容撑出)
    display:table实现多列等高布局
    vue挂载全局组件
    两个数组根据指定字段去重
  • 原文地址:https://www.cnblogs.com/wangxiaocvpr/p/6523147.html
Copyright © 2011-2022 走看看