基于点云数据的人机安全系统人体位置检测

Nehal Amer, J. Humphries, Nitin Nandeshwar
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引用次数: 0

摘要

人工智能算法在实时识别人类方面已经变得非常快。然而,随着工业越来越倾向于与机器人和机器协同工作,人类的身份识别是不够的。为了建立安全的协作环境,需要了解人类运动的确切位置和轨迹。这项研究提出了一种可以用来识别人类并提取他们在空间中的位置的建筑。该系统使用Mask R-CNN实例分割模型进行人体识别。在捕获的图像中识别属于每个人的像素。然后,将提取的像素映射到Azure Kinect摄像头获得的深度和点云图像中,提取每个人在空间中的位置数据。这篇研究论文的影响在于,我们提出了一种解决方案,可以捕获空间中人类的XYZ坐标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Position Detection Using Point Cloud Data for Human-Robot Safety Systems
Artificial Intelligence algorithms have become extremely fast at identifying humans in real time. However, as Industry moves more towards collaborative working with robots and machines, the identification of humans is not sufficient. Knowledge of the exact location, and trajectory of the human movement is needed so that safe collaborative environments are built. This study presents an architecture that can be used to identify humans and extract their position in the space. The proposed system uses the Mask R-CNN instance segmentation model for identification of humans. The pixels which belong to each human in the image captured are identified. Then, the extracted pixels are mapped to the depth and point cloud images obtained from Azure Kinect camera to extract the positional data for each human in space. The impact of this research paper is that we propose a solution that captures XYZ co-ordinates of humans in a space.
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