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Papers/AugMix: A Simple Data Processing Method to Improve Robustn...

AugMix: A Simple Data Processing Method to Improve Robustness and Uncertainty

Dan Hendrycks, Norman Mu, Ekin D. Cubuk, Barret Zoph, Justin Gilmer, Balaji Lakshminarayanan

2019-12-05ICLR 2020 1Image ClassificationDomain GeneralizationRobust Object DetectionOut-of-Distribution Generalization
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Abstract

Modern deep neural networks can achieve high accuracy when the training distribution and test distribution are identically distributed, but this assumption is frequently violated in practice. When the train and test distributions are mismatched, accuracy can plummet. Currently there are few techniques that improve robustness to unforeseen data shifts encountered during deployment. In this work, we propose a technique to improve the robustness and uncertainty estimates of image classifiers. We propose AugMix, a data processing technique that is simple to implement, adds limited computational overhead, and helps models withstand unforeseen corruptions. AugMix significantly improves robustness and uncertainty measures on challenging image classification benchmarks, closing the gap between previous methods and the best possible performance in some cases by more than half.

Results

TaskDatasetMetricValueModel
Domain AdaptationImageNet-RTop-1 Error Rate58.9AugMix (ResNet-50)
Domain AdaptationImageNet-Cmean Corruption Error (mCE)65.3AugMix (ResNet-50)
Domain AdaptationVizWiz-ClassificationAccuracy - All Images42.2ResNet-50 (augmix)
Domain AdaptationVizWiz-ClassificationAccuracy - Clean Images46.4ResNet-50 (augmix)
Domain AdaptationVizWiz-ClassificationAccuracy - Corrupted Images35.9ResNet-50 (augmix)
Object DetectionCityscapesmPC [AP]18.1AugMix
3DCityscapesmPC [AP]18.1AugMix
2D ClassificationCityscapesmPC [AP]18.1AugMix
2D Object DetectionCityscapesmPC [AP]18.1AugMix
Domain GeneralizationImageNet-RTop-1 Error Rate58.9AugMix (ResNet-50)
Domain GeneralizationImageNet-Cmean Corruption Error (mCE)65.3AugMix (ResNet-50)
Domain GeneralizationVizWiz-ClassificationAccuracy - All Images42.2ResNet-50 (augmix)
Domain GeneralizationVizWiz-ClassificationAccuracy - Clean Images46.4ResNet-50 (augmix)
Domain GeneralizationVizWiz-ClassificationAccuracy - Corrupted Images35.9ResNet-50 (augmix)
16kCityscapesmPC [AP]18.1AugMix

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