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Building Attribute Domain of Arm Motions for the Representation of Gestural Information

机译:构建臂动作的属性域,了解格术信息的表示

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Hand gesture recognition is one of the common sections in human motion analysis. It using camera to track hand movement and interpret into gesture database using image processing. High recognition performance requires every single coordinate projection is properly analyzed to obtain the trajectory of hand gesture. This research aim is to develop a hand gesture recognition system by using ontological approach. Ontology is the framework structure for organizing interconnected complex data model mainly function for information retrieval. In this research, ontology design is divided into three domains which are knowledge domain, attribute domain and process domain. Knowledge domain contains resampled and normalized raw gestural data from motion capture. The attribute domain is the stage where all the features of raw data was presented. However, the current challenge is to expand the variety of attribute in order to obtain higher recognition results where the raw gestural data only consists of$x$and$y$coordinate points. This paper has proposed the method to increase the number of attribute by converting the normalized position data into velocity, acceleration, and combination of them. Based on the plotted attribute elements as presented in results, it is practical and applicable to be used in the design of arm gesture recognition systems.
机译:手势识别是人类运动分析中的常见部分之一。它使用相机跟踪手动移动并使用图像处理将手势数据库解释为手势数据库。高识别性能需要每个单个坐标投影被正确分析以获得手势的轨迹。该研究目的是通过使用本体论方法开发手势识别系统。本体是组织互联复杂数据模型的框架结构,主要是用于信息检索的功能。在本研究中,本体设计分为三个域,它是知识域,属性域和过程域。知识域包含来自运动捕获的重新采样和标准化的原始格术数据。属性域是所呈现原始数据的所有功能的阶段。然而,目前的挑战是扩展各种属性,以获得更高的识别结果,其中原始的手势数据仅由此组成 $ x $ $ y $ 坐标点。本文提出了通过将归一化位置数据转换为速度,加速度和它们的组合来增加属性数量的方法。基于绘制的属性元素,如结果所示,实用且适用于用于臂手势识别系统的设计。

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