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Active Visual Exploration Based on Attention-Map Entropy

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arxiv 2303.06457 v3 pith:KDTUMO6G submitted 2023-03-11 cs.CV

Active Visual Exploration Based on Attention-Map Entropy

classification cs.CV
keywords activeattention-mapentropyexplorationobservationstrainingvisualactively
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Active visual exploration addresses the issue of limited sensor capabilities in real-world scenarios, where successive observations are actively chosen based on the environment. To tackle this problem, we introduce a new technique called Attention-Map Entropy (AME). It leverages the internal uncertainty of the transformer-based model to determine the most informative observations. In contrast to existing solutions, it does not require additional loss components, which simplifies the training. Through experiments, which also mimic retina-like sensors, we show that such simplified training significantly improves the performance of reconstruction, segmentation and classification on publicly available datasets.

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