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arxiv 1912.04138 v2 pith:QX4K65FH submitted 2019-12-09 cs.LG stat.ML

A Weak Supervision Approach to Detecting Visual Anomalies for Automated Testing of Graphics Units

classification cs.LG stat.ML
keywords corruptionsdetectinggraphicslearningmethodsnovelsupervisionsystem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a deep learning system for testing graphics units by detecting novel visual corruptions in videos. Unlike previous work in which manual tagging was required to collect labeled training data, our weak supervision method is fully automatic and needs no human labelling. This is achieved by reproducing driver bugs that increase the probability of generating corruptions, and by making use of ideas and methods from the Multiple Instance Learning (MIL) setting. In our experiments, we significantly outperform unsupervised methods such as GAN-based models and discover novel corruptions undetected by baselines, while adhering to strict requirements on accuracy and efficiency of our real-time system.

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