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arxiv: 2507.07994 · v3 · pith:PNNM577L · submitted 2025-07-10 · cs.CV

Doodle Your Keypoints: Sketch-Based Few-Shot Keypoint Detection

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classification cs.CV
keywords few-shotchallengesdetectionkeypointkeypointsprototypicalacrossadaptation
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Keypoint detection, integral to modern machine perception, faces challenges in few-shot learning, particularly when source data from the same distribution as the query is unavailable. This gap is addressed by leveraging sketches, a popular form of human expression, providing a source-free alternative. However, challenges arise in mastering cross-modal embeddings and handling user-specific sketch styles. Our proposed framework overcomes these hurdles with a prototypical setup, combined with a grid-based locator and prototypical domain adaptation. We also demonstrate success in few-shot convergence across novel keypoints and classes through extensive experiments.

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