Kinect based calling gesture recognition for taking order service of elderly care robot

Xinshuang Zhao, A. Naguib, Sukhan Lee
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引用次数: 32

Abstract

This paper proposes a Kinect-based calling gesture recognition scenario for taking order service of an elderly care robot. The proposed scenarios are designed mainly for helping non expert users like elderly to call service robot for their service request. In order to facilitate elderly service, natural calling gestures are designed to interact with the robot. Our challenge here is how to make the natural calling gesture recognition work in a cluttered and randomly moving objects. In this approach, there are two modes of our calling gesture recognition: Skeleton based gesture recognition and Octree based gesture recognition. Individual people is segmented out from 3D point cloud acquired by Microsoft Kinect, skeleton is generated for each segment, face detection is applied to identify whether the segment is human or not, specific natural calling gestures are designed based on skeleton joints. For the case that user is sitting on a chair or sofa, correct skeleton cannot be generated, Octree based gesture recognition procedure is used to recognize the gesture, in which human segments with head and hand are identified by face detection as well as specific geometrical constrains and skin color evidence. The proposed method has been implemented and tested on “HomeMate”, a service robot developed for elderly care. The performance and results are given.
基于Kinect的呼叫手势识别的养老机器人点菜服务
提出了一种基于kinect的呼叫手势识别场景,用于老年护理机器人的点菜服务。所提出的场景主要是为了帮助老年人等非专家用户呼叫服务机器人进行服务请求。为了方便老年人服务,设计了自然的呼叫手势与机器人互动。我们在这里的挑战是如何使自然呼叫手势识别在杂乱和随机移动的物体中工作。在这种方法中,我们调用的手势识别有两种模式:基于骨架的手势识别和基于八叉树的手势识别。从微软Kinect获取的三维点云中分割出个体,为每个片段生成骨架,应用人脸检测来识别该片段是否为人类,并基于骨骼关节设计特定的自然呼叫手势。对于用户坐在椅子或沙发上无法生成正确的骨架的情况,采用基于八叉树的手势识别程序进行手势识别,其中通过人脸检测以及特定的几何约束和肤色证据来识别头部和手部的人体部分。该方法已在专为老年人护理而开发的服务机器人“家政”上实现并进行了测试。给出了性能和结果。
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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