HyCal mitigates Domain Gravity in cross-discipline imbalanced few-shot class-incremental learning by calibrating prototypes with complementary directional and covariance-aware distances on frozen CLIP embeddings.
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cs.CV 2years
2026 2verdicts
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Inverse attention embeddings combined with standard visual features improve recall in video semantic search for crowded scenes without additional training.
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HyCal: A Training-Free Prototype Calibration Method for Cross-Discipline Few-Shot Class-Incremental Learning
HyCal mitigates Domain Gravity in cross-discipline imbalanced few-shot class-incremental learning by calibrating prototypes with complementary directional and covariance-aware distances on frozen CLIP embeddings.
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Look Beyond Saliency: Low-Attention Guided Dual Encoding for Video Semantic Search
Inverse attention embeddings combined with standard visual features improve recall in video semantic search for crowded scenes without additional training.