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Dynamic classification for video stream using support vector machine

机译:使用支持向量机的视频流动态分类

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摘要

A dynamic classification using the support vector machine (SVM) technique is presented in this paper as a new 'incremental' framework for multiple-classifying video stream data. The contribution of this study is the derivation of a unique, fast and simple to implement technique that allows multi-classification of behavioral motions based on an adaptation of the least-square SVM (LS-SVM) formulation. This dynamic approach leads to an extension of SVM beyond its current static image-based learning capabilities. The proposed incremental multi-classification method is applied to video stream data, which consists of an articulated humanoid model monitored by a surveillance camera. The initial supervised off-line learning phase is followed by a visual behavior data acquisition and then an incremental learning phase. The resulting error rate and the confidence level for the proposed technique demonstrate its validity and merits in articulated motion learning. Furthermore, the enabled online learning allows an adaptive domain knowledge insertion and provides the advantage of reducing both the model training time and the information storage requirements of the overall system which are both essential for dynamic soft computing applications.
机译:本文提出了一种使用支持​​向量机(SVM)技术进行的动态分类,作为对视频流数据进行多分类的新“增量”框架。这项研究的贡献是一种独特,快速且易于实施的技术的衍生,该技术允许根据最小二乘SVM(LS-SVM)公式的调整对行为运动进行多分类。这种动态方法导致SVM的扩展超出了其当前基于静态图像的学习能力。所提出的增量式多分类方法应用于视频流数据,该方法由监视摄像机监视的关节型人形模型组成。最初的有监督离线学习阶段之后是视觉行为数据获取,然后是增量学习阶段。所提出的技术所产生的错误率和置信度证明了其在关节运动学习中的有效性和优点。此外,启用的在线学习允许自适应域知识的插入,并提供减少模型训练时间和整个系统的信息存储要求的优点,而这对于动态软计算应用程序都是必不可少的。

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