基于H-ELM身体部位和全身探测器的人机交互人体姿态检测

M. Ramanathan, W. Yau, E. Teoh
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引用次数: 2

摘要

为了实现可靠的人机交互,机器人必须知道人的动作,以便计划适当的方式与人交互或协助人。作为动作识别预处理阶段的一部分,机器人还需要识别人的各个身体部位和姿势。但是,由于人体的关节特性和巨大的班级内差异,对姿势和身体部位的估计是具有挑战性的。为了解决这一挑战,我们提出了两种使用层次elm (H-ELM)检测直立或非直立姿势的方案。在第一种方案中,我们采用全身检测器方法,其中H-ELM分类器在几个全身姿势上进行训练。在第二种方案中,我们采用身体部位检测方法,其中为每个身体部位检测单独的H-ELM分类器。利用检测到的身体部位,对人的姿势做出最终决定。我们进行了几个实验来比较两种方法在不同场景下的性能,如视角变化,遮挡等。实验结果表明,即使在遮挡的情况下,基于H-ELM的身体部位姿态检测效果也优于其他提出的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Posture Detection using H-ELM Body Part and Whole Person Detectors for Human-Robot Interaction
For reliable human-robot interaction, the robot must know the person's action in order to plan the appropriate way to interact or assist the person. As part of the pre-processing stage of action recognition, the robot also needs to recognize the various body parts and posture of the person. But estimation of posture and body parts is challenging due to the articulated nature of the human body and the huge intra-class variations. To address this challenge, we propose two schemes using Hierarchical-ELM (H-ELM) for posture detection into either upright or non-upright posture. In the first scheme, we follow a whole body detector approach, where a H-ELM classifier is trained on several whole body postures. In the second scheme, we follow a body part detection approach, where separate H-ELM classifiers are detected for each body part. Using the detected body parts a final decision is made on the posture of the person. We have conducted several experiments to compare the performance of both approaches under different scenarios like view angle changes, occlusion etc. Our experimental results show that body part H-ELM based posture detection works better than other proposed framework even in the presence of occlusion.
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