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Hi folks! I've made a new technique for finding errors in semantic segmentation datasets, using new explainable AI techniques from my PhD. I was frankly pretty surprised to be able to find over 50 different error patterns , and 7% of total pixels labelled incorrectly, in MIT ADE20K (one of the most widely used segmentation datasets). In the corrected dataset, some of the less common classes are tripled in size.
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