cs.AI updates on arXiv.org 09月15日
跨模态融合技术提升隐藏物体检测
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本文提出一种融合RGB、热成像和深度数据的跨模态检测框架HiddenObject,通过Mamba机制融合模态信息,提高隐藏或伪装物体检测的准确率。实验表明,该方法在多个基准数据集上取得优于现有技术的性能。

arXiv:2508.21135v2 Announce Type: replace-cross Abstract: Detecting hidden or partially concealed objects remains a fundamental challenge in multimodal environments, where factors like occlusion, camouflage, and lighting variations significantly hinder performance. Traditional RGB-based detection methods often fail under such adverse conditions, motivating the need for more robust, modality-agnostic approaches. In this work, we present HiddenObject, a fusion framework that integrates RGB, thermal, and depth data using a Mamba-based fusion mechanism. Our method captures complementary signals across modalities, enabling enhanced detection of obscured or camouflaged targets. Specifically, the proposed approach identifies modality-specific features and fuses them in a unified representation that generalizes well across challenging scenarios. We validate HiddenObject across multiple benchmark datasets, demonstrating state-of-the-art or competitive performance compared to existing methods. These results highlight the efficacy of our fusion design and expose key limitations in current unimodal and na\"ive fusion strategies. More broadly, our findings suggest that Mamba-based fusion architectures can significantly advance the field of multimodal object detection, especially under visually degraded or complex conditions.

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跨模态融合 隐藏物体检测 Mamba机制 深度学习
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