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arxiv 2307.08781 v1 pith:LUO7TT4Q submitted 2023-07-17 cs.CV

The FathomNet2023 Competition Dataset

classification cs.CV
keywords dataimageoceanvisualanimalscompetitiondatasetfathomnet2023
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Ocean scientists have been collecting visual data to study marine organisms for decades. These images and videos are extremely valuable both for basic science and environmental monitoring tasks. There are tools for automatically processing these data, but none that are capable of handling the extreme variability in sample populations, image quality, and habitat characteristics that are common in visual sampling of the ocean. Such distribution shifts can occur over very short physical distances and in narrow time windows. Creating models that are able to recognize when an image or video sequence contains a new organism, an unusual collection of animals, or is otherwise out-of-sample is critical to fully leverage visual data in the ocean. The FathomNet2023 competition dataset presents a realistic scenario where the set of animals in the target data differs from the training data. The challenge is both to identify the organisms in a target image and assess whether it is out-of-sample.

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