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Accuracy Enhancement of Action Recognition Using Parallel Processing

机译:使用并行处理提高动作识别的精度

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Implementation of action recognition for embedded applications is one of the prime research areas in the fields of both computer vision and embedded systems. In this paper, we propose a novel algorithm to improve the accuracy of human action recognition by implementing parallel processing and incorporating multiple neural networks working in coherence for action classification and recognition. A feature set known as Eigen joints is used to model the actions in the database. The algorithm proposes an efficient method to reduce the feature set required to recognize an action accurately based on the concept of accumulated motion energy. The paper talks about the use of Robot Operating System and its advantages for implementing parallel processing. The paper also presents a comparative study in the accuracies of action recognition between support vector machine (SVM) and Gaussian Naive Bayes (GNB) classifiers for recognizing the actions for which the networks are trained. In this paper, we also talk about how multiple supervised learning neural networks working in coherence can detect an action whose model is not present in the database.
机译:针对嵌入式应用程序实现动作识别是计算机视觉和嵌入式系统领域的主要研究领域之一。在本文中,我们提出了一种新颖的算法,该算法可通过执行并行处理并结合多个协同工作的神经网络来进行动作分类和识别,从而提高人类动作识别的准确性。使用称为“本征关节”(Eigen joints)的功能集对数据库中的动作进行建模。该算法基于累积的运动能量的概念,提出了一种有效的方法来减少准确识别动作所需的特征集。本文讨论了机器人操作系统的使用及其在实现并行处理方面的优势。本文还对支持向量机(SVM)和高斯朴素贝叶斯(GNB)分类器之间的动作识别精度进行了比较研究,用于识别训练网络的动作。在本文中,我们还讨论了多个协同工作的监督学习神经网络如何能够检测其模型不在数据库中的动作。

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