基于视觉的碰撞风险评估在移动机器人关注目标选择中的初步研究

Masaaki Hayashi, Tamon Miyake, Mitsuhiro Kamezaki, J. Yamato, Kyosuke Saito, Taro Hamada, Eriko Sakurai, S. Sugano, J. Ohya
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引用次数: 1

摘要

对于与人共存的移动机器人,视觉在运动规划中起着重要的作用。由于用摄像机预测行人路径的方法在计算速度和精度之间存在权衡关系,因此这种路径预测方法不适合远距离同时检测多人。在本研究中,我们提出了一种基于视觉识别和预测人类动作状态转换的方法来评估碰撞风险,以选择回避目标。该系统基于对人体方向、人体带物行走模式、人脸方向的识别,以及对人体动作状态转换的预测,计算出风险评估分数。首先,我们研究了每个识别模型的有效性,我们证实了所提出的系统可以高精度地识别和预测3米前的人类行为。然后,我们将风险评估得分与视频访谈进行比较,询问移动机器人应该注意哪些人,我们发现所提出的系统可以从视觉上捕捉到人们在避免与他人碰撞时注意的人类状态特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary Investigation of Collision Risk Assessment with Vision for Selecting Targets Paid Attention to by Mobile Robot
Vision plays an important role in motion planning for mobile robots which coexist with humans. Because a method predicting a pedestrian path with a camera has a trade-off relationship between the calculation speed and accuracy, such a path prediction method is not good at instantaneously detecting multiple people at a distance. In this study, we thus present a method with visual recognition and prediction of transition of human action states to assess the risk of collision for selecting the avoidance target. The proposed system calculates the risk assessment score based on recognition of human body direction, human walking patterns with an object, and face orientation as well as prediction of transition of human action states. First, we investigated the validation of each recognition model, and we confirmed that the proposed system can recognize and predict human actions with high accuracy ahead of 3 m. Then, we compared the risk assessment score with video interviews to ask a human whom a mobile robot should pay attention to, and we found that the proposed system could capture the features of human states that people pay attention to when avoiding collision with other people from vision.
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