多光谱图像
融合
人工智能
对象(语法)
计算机科学
计算机视觉
语言学
哲学
作者
Xue Zhang,Si-Yuan Cao,Fang Wang,Runmin Zhang,Zhe Wu,Xiaohan Zhang,Xiaokai Bai,Hui‐Liang Shen
标识
DOI:10.1109/tiv.2024.3462488
摘要
Most recent multispectral object detectors employ a two-branch structure to extract features from RGB and thermal images. While the two-branch structure achieves better performance than a single-branch structure, it overlooks inference efficiency. This conflict is increasingly aggressive, as recent works solely pursue higher performance rather than both performance and efficiency. In this paper, we address this issue by improving the performance of efficient single-branch structures. We revisit the reasons causing the performance gap between these structures. For the first time, we reveal the information interference problem in the naive early-fusion strategy adopted by previous single-branch structures. Besides, we find that the domain gap between multispectral images, and weak feature representation of the single-branch structure are also key obstacles for performance. Focusing on these three problems, we propose corresponding solutions, including a novel shape-priority early-fusion strategy, a weakly supervised learning method, and a core knowledge distillation technique. Experiments demonstrate that single-branch networks equipped with these three contributions achieve significant performance enhancements while retaining high efficiency.
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