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Unadversarial Examples: Designing Objects for Robust Vision

About

We study a class of realistic computer vision settings wherein one can influence the design of the objects being recognized. We develop a framework that leverages this capability to significantly improve vision models' performance and robustness. This framework exploits the sensitivity of modern machine learning algorithms to input perturbations in order to design "robust objects," i.e., objects that are explicitly optimized to be confidently detected or classified. We demonstrate the efficacy of the framework on a wide variety of vision-based tasks ranging from standard benchmarks, to (in-simulation) robotics, to real-world experiments. Our code can be found at https://git.io/unadversarial .

Hadi Salman, Andrew Ilyas, Logan Engstrom, Sai Vemprala, Aleksander Madry, Ashish Kapoor• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-10-C
Accuracy70.36
179
Image ClassificationCIFAR-10 Raw
Accuracy95.51
16
Image ClassificationCIFAR-10 AdvL
Accuracy88.87
16
Image ClassificationCIFAR-10 AdvP
Accuracy49.39
16
Traffic Sign ClassificationPhysical world traffic sign SL (test)
Accuracy (Raw)33.33
3
Traffic Sign ClassificationPhysical world traffic sign NE (test)
Accuracy (Raw)77.78
3
Traffic Sign ClassificationPhysical world traffic sign GSL (test)
Accuracy (Raw)44.44
3
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