cs.AI updates on arXiv.org 10月01日 14:01
室内场景分类:ASGRA框架突破敏感内容分析
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本文提出ASGRA框架,通过将图像转化为场景图并应用图注意力网络进行推理,实现室内场景分类和敏感内容分析,具有可解释性和隐私保护优势。

arXiv:2509.26457v1 Announce Type: cross Abstract: Indoor scene classification is a critical task in computer vision, with wide-ranging applications that go from robotics to sensitive content analysis, such as child sexual abuse imagery (CSAI) classification. The problem is particularly challenging due to the intricate relationships between objects and complex spatial layouts. In this work, we propose the Attention over Scene Graphs for Sensitive Content Analysis (ASGRA), a novel framework that operates on structured graph representations instead of raw pixels. By first converting images into Scene Graphs and then employing a Graph Attention Network for inference, ASGRA directly models the interactions between a scene's components. This approach offers two key benefits: (i) inherent explainability via object and relationship identification, and (ii) privacy preservation, enabling model training without direct access to sensitive images. On Places8, we achieve 81.27% balanced accuracy, surpassing image-based methods. Real-world CSAI evaluation with law enforcement yields 74.27% balanced accuracy. Our results establish structured scene representations as a robust paradigm for indoor scene classification and CSAI classification. Code is publicly available at https://github.com/tutuzeraa/ASGRA.

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室内场景分类 敏感内容分析 场景图 图注意力网络 ASGRA
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