cs.AI updates on arXiv.org 08月15日
The SET Perceptual Factors Framework: Towards Assured Perception for Autonomous Systems
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本文提出SET感知因素框架,用于分析环境因素对机器人感知的影响,旨在提高自主系统的安全性和可信度,促进公众对自主系统的理解与信任。

arXiv:2508.10798v1 Announce Type: cross Abstract: Future autonomous systems promise significant societal benefits, yet their deployment raises concerns about safety and trustworthiness. A key concern is assuring the reliability of robot perception, as perception seeds safe decision-making. Failures in perception are often due to complex yet common environmental factors and can lead to accidents that erode public trust. To address this concern, we introduce the SET (Self, Environment, and Target) Perceptual Factors Framework. We designed the framework to systematically analyze how factors such as weather, occlusion, or sensor limitations negatively impact perception. To achieve this, the framework employs SET State Trees to categorize where such factors originate and SET Factor Trees to model how these sources and factors impact perceptual tasks like object detection or pose estimation. Next, we develop Perceptual Factor Models using both trees to quantify the uncertainty for a given task. Our framework aims to promote rigorous safety assurances and cultivate greater public understanding and trust in autonomous systems by offering a transparent and standardized method for identifying, modeling, and communicating perceptual risks.

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机器人感知 安全可靠性 SET框架 环境因素 自主系统
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