Mask Frozen DETR
Mask-based techniques are transforming various computer vision and natural language processing tasks by selectively utilizing or modifying input data. Current research focuses on leveraging masks for efficient model training (e.g., masked autoencoders, Mask Frozen-DETR), improving robustness to occlusions (e.g., in face recognition and medical image analysis), and enhancing data efficiency in semi-supervised and continual learning scenarios. These advancements offer significant potential for reducing computational costs, improving model generalization, and addressing challenges posed by incomplete or noisy data in diverse applications.
Papers
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