Abstract: In this paper, we present a novel approach to address the challenges of small object detection. The proposed method combines multi-scale distillation and bidirectional feature fusion to enhance the performance of small object detection models. By leveraging the knowledge of a teacher model, the student model captures both high-level and low-level features, leading to improved detection results. Then, bidirectional feature fusion aggregates multi-layer features within the student more effectively via a convolutional attention mechanism and pyramid pooling loss function. Extensive experiments demonstrate that the approach significantly improves small object detection performance over baselines, validating the use of multi-scale knowledge distillation and feature fusion techniques for this task.
External IDs:dblp:conf/icann/WangZSGL24
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