Learning Strict Identity Mappings in Deep Residual Networks

2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition(2018)

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摘要
A family of super deep networks, referred to as residual networks or ResNet, achieved record-beating performance in various visual tasks such as image recognition, object detection, and semantic segmentation. The ability to train very deep networks naturally pushed the researchers to use enormous resources to achieve the best performance. Consequently, in many applications super deep residual networks were employed for just a marginal improvement in performance. In this paper, we propose epsilon-ResNet that allows us to automatically discard redundant layers, which produces responses that are smaller than a threshold epsilon, with a marginal or no loss in performance. The epsilon-ResNet architecture can be achieved using a few additional rectified linear units in the original ResNet. Our method does not use any additional variables nor numerous trials like other hyper-parameter optimization techniques. The layer selection is achieved using a single training process and the evaluation is performed on CIFAR-10, CIFAR-100, SVHN, and ImageNet datasets. In some instances, we achieve about 80 parameters.
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关键词
strict identity mappings,super deep networks,visual tasks,image recognition,object detection,semantic segmentation,ε-ResNet architecture,ResNet,rectified linear units,super deep residual networks,CIFAR-10 dataset,CIFAR-100 dataset,SVHN dataset,ImageNet dataset
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