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Video Human Motion Recognition Using Knowledge-Based Hybrid Method

机译:基于知识的混合方法的视频人体运动识别

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Human motion recognition in video data has several interesting applications in fields such as gaming, senior/assisted living environments, and surveillance. In these scenarios, we might have to consider adding new motion classes (i.e. new types of human motions to be recognized) as well as new training data (say, for handling different type of subjects). Hence, both accuracy of classification and training time for the machine learning algorithms become important performance parameters in these cases. In this paper, we propose a Knowledge Based Hybrid (KBH) method that can compute the probabilities for Hidden Markov Models (HMMs) associated with different human motion classes. This computation is facilitated by appropriately mixing features from two different media types (3D motion capture and 2D video). We conducted a variety of experiments comparing the proposed KBH for HMMs and the traditional Baum-Welch algorithms. With the advantage of computing the HMMs parameters in a non-iterative manner, the KBH method outperforms the Baum-Welch algorithm both in terms of accuracy as well as reduced training time.
机译:视频数据中的人体运动识别在游戏,高级/辅助生活环境和监视等领域具有多种有趣的应用。在这些情况下,我们可能必须考虑添加新的运动类别(即要识别的新型人类运动)以及新的训练数据(例如,用于处理不同类型的对象)。因此,在这些情况下,机器学习算法的分类精度和训练时间都成为重要的性能参数。在本文中,我们提出了一种基于知识的混合(KBH)方法,该方法可以计算与不同人类运动类别相关联的隐马尔可夫模型(HMM)的概率。通过适当地混合来自两种不同媒体类型(3D运动捕获和2D视频)的特征,可以简化此计算。我们进行了各种实验,比较了针对HMM的建议KBH和传统的Baum-Welch算法。凭借以非迭代方式计算HMM参数的优势,KBH方法在准确性和减少训练时间方面均优于Baum-Welch算法。

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