Detecting occluded people for robotic guidance

E. Martinson
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引用次数: 9

Abstract

Often overlooked in human-robot interaction is the challenge of people detection. For natural interaction, a robot must detect people without waiting for them to face the camera, get far enough away to be fully present, or center themselves fully within the field of view. Furthermore, it must happen without requiring immense amounts of processing that are not practical for real systems. In this work we focus on person detection in a guidance scenario, where occlusion is particularly prevalent. Using a layered approach with depth images, we can substantially improve detection rates under high levels of occlusion, and enable a robot to detect a target that is moving into and out of the field of view.
探测被遮挡的人,为机器人提供指导
在人机交互中经常被忽视的是人员检测的挑战。为了实现自然的互动,机器人必须在人们没有面对摄像头的情况下就能探测到他们,也不需要离得足够远就能完全出现,或者完全处于视野的中心。此外,它必须在不需要大量处理的情况下发生,这对实际系统来说是不切实际的。在这项工作中,我们专注于在导航场景中的人员检测,其中遮挡特别普遍。使用深度图像的分层方法,我们可以大大提高高水平遮挡下的检测率,并使机器人能够检测到进入和退出视野的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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