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Efficient Active Sensing with Categorized Further Explorations for a Home Behavior-Monitoring Robot

机译:归类为家庭行为监控机器人的高效主动分类主动探索

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摘要

Mobile robotics is a potential solution to home behavior monitoring for the elderly. For a mobile robot in the real world, there are several types of uncertainties for its perceptions, such as the ambiguity between a target object and the surrounding objects and occlusions by furniture. The problem could be more serious for a home behavior-monitoring system, which aims to accurately recognize the activity of a target person, in spite of these uncertainties. It detects irregularities and categorizes situations requiring further explorations, which strategically maximize the information needed for activity recognition while minimizing the costs. Two schemes of active sensing, based on two irregularity detections, namely, heuristic-based and template-matching-based irregularity detections, were implemented and examined for body contour-based activity recognition. Their time cost and accuracy in activity recognition were evaluated through experiments in both a controlled scenario and a home living scenario. Experiment results showed that the categorized further explorations guided the robot system to sense the target person actively. As a result, with the proposed approach, the robot system has achieved higher accuracy of activity recognition.
机译:移动机器人技术是老年人居家行为监控的潜在解决方案。对于现实世界中的移动机器人,其感知有多种类型的不确定性,例如目标对象与周围对象之间的歧义以及家具的遮挡。尽管存在这些不确定性,但对于旨在准确识别目标人群活动的家庭行为监控系统而言,问题可能更为严重。它可以检测违规行为,并对需要进一步探索的情况进行分类,从而从战略上最大化活动识别所需的信息,同时将成本降至最低。实施了两种基于两种不规则检测的主动感应方案,即基于启发式和基于模板匹配的不规则检测,并针对基于人体轮廓的活动识别进行了检查。通过在控制场景和家庭生活场景中的实验,评估了他们的时间成本和活动识别的准确性。实验结果表明,进一步的分类探索指导了机器人系统主动感知目标人。结果,利用所提出的方法,机器人系统已经实现了较高的活动识别精度。

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