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Selective Output Smoothing Regularization: Regularize Neural Networks by Softening Output Distributions

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arxiv 2103.15383 v2 pith:YDUXOHGH submitted 2021-03-29 cs.CV

Selective Output Smoothing Regularization: Regularize Neural Networks by Softening Output Distributions

classification cs.CV
keywords regularizationoutputimagenetmethodselectivesmoothingmodeldetection
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we propose Selective Output Smoothing Regularization, a novel regularization method for training the Convolutional Neural Networks (CNNs). Inspired by the diverse effects on training from different samples, Selective Output Smoothing Regularization improves the performance by encouraging the model to produce equal logits on incorrect classes when dealing with samples that the model classifies correctly and over-confidently. This plug-and-play regularization method can be conveniently incorporated into almost any CNN-based project without extra hassle. Extensive experiments have shown that Selective Output Smoothing Regularization consistently achieves significant improvement in image classification benchmarks, such as CIFAR-100, Tiny ImageNet, ImageNet, and CUB-200-2011. Particularly, our method obtains 77.30% accuracy on ImageNet with ResNet-50, which gains 1.1% than baseline (76.2%). We also empirically demonstrate the ability of our method to make further improvements when combining with other widely used regularization techniques. On Pascal detection, using the SOSR-trained ImageNet classifier as the pretrained model leads to better detection performances.

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