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arxiv: 2305.08191 · v1 · pith:WCBNEV3Snew · submitted 2023-05-14 · 💻 cs.CV · cs.LG

Is end-to-end learning enough for fitness activity recognition?

classification 💻 cs.CV cs.LG
keywords end-to-endlearningrecognitionpipelinesactionfitnessindividualstill
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End-to-end learning has taken hold of many computer vision tasks, in particular, related to still images, with task-specific optimization yielding very strong performance. Nevertheless, human-centric action recognition is still largely dominated by hand-crafted pipelines, and only individual components are replaced by neural networks that typically operate on individual frames. As a testbed to study the relevance of such pipelines, we present a new fully annotated video dataset of fitness activities. Any recognition capabilities in this domain are almost exclusively a function of human poses and their temporal dynamics, so pose-based solutions should perform well. We show that, with this labelled data, end-to-end learning on raw pixels can compete with state-of-the-art action recognition pipelines based on pose estimation. We also show that end-to-end learning can support temporally fine-grained tasks such as real-time repetition counting.

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