A New Google AI Research Study Discovers Anomalous Data Using Self Supervised Learning

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  • fashion-mnist

    A MNIST-like fashion product database. Benchmark :point_down:

  • New Google AI research introduces a 2-stage framework that uses recent progress on self-supervised representation learning and classic one-class algorithms. This framework is simple to train and shows SOTA performance on various benchmarks, including CIFAR, f-MNIST, Cat vs. Dog, and CelebA. Following that, they offer a novel representation learning approach for a practical industrial defect detection problem using the same architecture. On the MVTec benchmark, the framework achieves a new state-of-the-art.

  • 5 Min Read | Paper | Code | Google Blog

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