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Silhouette Pose Feature-Based Human Action Classification Using Capsule Network

机译:使用胶囊网络的剪影基于特征的人类行动分类

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摘要

Recent years have seen a rise in the use of various machine learning techniques in computer vision, particularly in posing feature-based human action recognition which includes convolutional neural networks (CNN) and recurrent neural network (RNN). CNN-based methods are useful in recognizing human actions for combined motions (i.e., standing up, hand shaking, walking). However, in case of uncertainty of camera motion, occlusion, and multiple people, CNN suppresses important feature information and is not efficient enough to recognize variations for human action. Besides, RNN with long short-term memory (LSTM) requires more computational power to retain memories to classify human actions. This research proposes an extended framework based on capsule network using silhouette pose features to recognize human actions. Proposed extended framework achieved high accuracy of 95.64% which is higher than previous research methodology. Extensive experimental validation of the proposed extended framework reveals efficiency which is expected to contribute significantly in action recognition research.
机译:近年来,在计算机视觉中使用各种机器学习技术的兴起,特别是在构成基于特征的人体动作识别中,包括卷积神经网络(CNN)和经常性神经网络(RNN)。基于CNN的方法可用于识别组合动作的人类动作(即,站立,手摇动,行走)。然而,在相机运动,闭塞和多人不确定的情况下,CNN抑制了重要的特征信息,并且不足以识别人类行动的变化。此外,短期内存(LSTM)的RNN需要更多的计算能力来保持存储器以对人类的行为进行分类。本研究提出了一种基于胶囊网络的扩展框架,使用轮廓姿势特征来识别人类的行为。提出的扩展框架实现了95.64%的高精度,高于先前的研究方法。拟议的扩展框架的广泛实验验证揭示了预期在行动识别研究中显着贡献的效率。

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