Recognition Aggregation
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TraRA: Trajectory-level Recognition Aggregation for Video Text Spotting in Urban Surveillance
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Geometric Second-Order Feature Correlation Learning for Self-Supervised Speech Emotion Recognition
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GraphShed: a parameter-free Graph-based waterShed group finder
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Cryo-EM provides insight into how the Staphylococcus aureus IsdH receptor removes hemin from the hemoglobin:haptoglobin complex
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DisPlace: Discriminative Place Projections for Multi-Reference Visual Place Recognition
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Closing the Alignment-Maturity Gap in Federated Prototype Learning
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On the Illusion of Gender Bias in Face Recognition: Explaining the Fairness Issue Through Non-demographic Attributes
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ST-ColoNet: Spatio-Temporal Colon Segment Recognition via Hybrid Attention and Edge-Guided Feature Learning
arXiv:2605.28119v3 Announce Type: replace Abstract: Colo-segment recognition in colonoscopy videos is a key requirement for many downstream tasks, but existing automatic recognition methods only use colonoscopy images without fully exploiting the use of temporal information, leading to poor performance. Additionally, relevant public video-based datasets are in scarcity. To tackle this problem, we curate and release a labeled dataset specifically for the task of colo-segment recognition.
ST-ColoNet: Spatio-Temporal Colon Segment Recognition via Hybrid Attention and Edge-Guided Feature Learning
Announce Type: replace Abstract: Colo-segment recognition in colonoscopy videos is a key requirement for many downstream tasks, but existing automatic recognition methods only use colonoscopy images without fully exploiting the use of temporal information, leading to poor performance. Additionally, relevant public video-based datasets are in scarcity. To tackle this problem, we curate and release a labeled dataset specifically for the task of colo-segment recognition.