cs.AI updates on arXiv.org 10月03日
VL-KnG:视觉场景理解系统提升机器人导航
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本文提出一种名为VL-KnG的视觉场景理解系统,通过时空知识图谱构建和高效查询处理来克服视觉语言模型在机器人导航中的局限性,并建立了一个新的基准WalkieKnowledge,以实现实时应用。

arXiv:2510.01483v1 Announce Type: cross Abstract: Vision-language models (VLMs) have shown potential for robot navigation but encounter fundamental limitations: they lack persistent scene memory, offer limited spatial reasoning, and do not scale effectively with video duration for real-time application. We present VL-KnG, a Visual Scene Understanding system that tackles these challenges using spatiotemporal knowledge graph construction and computationally efficient query processing for navigation goal identification. Our approach processes video sequences in chunks utilizing modern VLMs, creates persistent knowledge graphs that maintain object identity over time, and enables explainable spatial reasoning through queryable graph structures. We also introduce WalkieKnowledge, a new benchmark with about 200 manually annotated questions across 8 diverse trajectories spanning approximately 100 minutes of video data, enabling fair comparison between structured approaches and general-purpose VLMs. Real-world deployment on a differential drive robot demonstrates practical applicability, with our method achieving 77.27% success rate and 76.92% answer accuracy, matching Gemini 2.5 Pro performance while providing explainable reasoning supported by the knowledge graph, computational efficiency for real-time deployment across different tasks, such as localization, navigation and planning. Code and dataset will be released after acceptance.

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视觉语言模型 机器人导航 时空知识图谱 实时应用
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