Residual networks, which use a residual unit to supplement the identity mappings, enable very deep convolutional architecture to operate well, however, the residual architecture has been proved to be diverse and redundant, which may leads to low-efficient modeling. In this work, we propose a competitive squeeze-excitation (SE) mechanism for the residual network. Re-scaling the value for each channel in this structure will be determined by the residual and identity mappings jointly, and this design enables us to expand the meaning of channel relationship modeling in residual blocks. Modeling of the competition between residual and identity mappings cause the identity flow to control the complement of the residual feature maps for itself. Furthermore, we design a novel inner-imaging competitive SE block to shrink the consumption and re-image the global features of intermediate network structure, by using the inner-imaging mechanism, we can model the channel-wise relations with convolution in spatial. We carry out experiments on the CIFAR, SVHN, and ImageNet datasets, and the proposed method can challenge state-of-the-art results.
翻译:残余网络使用残余单元来补充身份测绘,使得非常深层的革命结构能够很好地运作,然而,残余结构已证明是多样化和多余的,可能导致低效率建模;在这项工作中,我们提议为残余网络建立一个竞争性的挤压(SE)机制;这一结构中每个渠道的价值的重新尺度将由残余和身份测绘共同确定,这一设计使我们能够扩大剩余区段的频道关系建模的含义;对残余和身份测绘之间的竞争进行建模,导致身份流动以控制剩余地貌图的补充;此外,我们设计了一个新型的具有内在形象的SE区块,通过内部构思机制减少中间网络结构的消费,并重新塑造中间网络结构的全球特征;我们可以建模与空间进化的通道关系;我们对CIFAR、SVHN和图像网络数据集进行实验,拟议的方法可以挑战最新的结果。