论文《Visualizing Residual Networks》摘要:
Residual networks are the current state of the art on ImageNet. Similar work
in the direction of utilizing shortcut connections has been done extremely
recently with derivatives of residual networks and with highway networks. This
work potentially challenges our understanding that CNNs learn layers of local
features that are followed by increasingly global features. Through qualitative
visualization and empirical analysis, we explore the purpose that residual skip
connections serve. Our assessments show that the residual shortcut connections
force layers to refine features, as expected. We also provide alternate
visualizations that confirm that residual networks learn what is already
intuitively known about CNNs in general.
链接:
https://arxiv.org/abs/1701.02362
原文链接:
http://weibo.com/1402400261/Er22jkgCD?from=page_1005051402400261_profile&wvr=6&mod=weibotime