Estimation of human behaviors based on human actions using an ANN

M. Maierdan, Keigo Watanabe, S. Maeyama
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引用次数: 12

Abstract

An approach to human behavior recognition is presented in this paper. The system is separated into two parts: human action recognition and object recognition. The estimation result is composed of a simple action “Pointing” and a virtual assumed object, which has two attributes, one is “current status” and the other is “acceptable behavior”. Once the human action and object are recognized, then detect whether a vector calculated by human elbow intersected the object. If the vector is intersected, then estimate human behavior by combining the human action and the object attribute. The artificial neural network (ANN) is discussed as a main part of the current research. Whole ANN processing is simulated by Octave 3.8, the human actions are captured by Microsoft Kinect, and a human model is built by using human joint data.
基于人工神经网络的人类行为估计
本文提出了一种人类行为识别方法。该系统分为人体动作识别和物体识别两部分。估计结果由一个简单的动作“指向”和一个虚拟假设对象组成,虚拟假设对象有两个属性,一个是“当前状态”,另一个是“可接受行为”。一旦识别了人的动作和物体,然后检测由人的肘部计算的向量是否与物体相交。如果向量相交,则通过结合人的动作和对象属性来估计人的行为。人工神经网络(ANN)是当前研究的主要内容。利用Octave 3.8对整个人工神经网络处理过程进行仿真,利用Microsoft Kinect捕捉人体动作,利用人体关节数据建立人体模型。
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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