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Hand-crafted and deep convolutional neural network features fusion and selection strategy: An application to intelligent human action recognition

机译:手工制作和深度卷积神经网络具有融合和选择策略:智能人类行动识别的应用

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Human action recognition (HAR) has gained much attention in the last few years due to its enormous applications including human activity monitoring, robotics, visual surveillance, to name but a few. Most of the previously proposed HAR systems have focused on using hand-crafted images features. However, these features cover limited aspects of the problem and show performance degradation on a large and complex datasets. Therefore, in this work, we propose a novel HAR system which is based on the fusion of conventional hand-crafted features using histogram of oriented gradients (HoG) and deep features. Initially, human silhouette is extracted with the help of saliency-based method - implemented in two phases. In the first phase, motion and geometric features are extracted from the selected channel, whilst, second phase calculates the Chi-square distance between the extracted and threshold-based minimum distance features. Afterwards, extracted deep CNN and hand-crafted features are fused to generate a resultant vector. Moreover, to cope with the curse of dimensionality, an entropy-based feature selection technique is also proposed to identify the most discriminant features for classification using multi-class support vector machine (M-SVM). All the simulations are performed on five publicly available benchmark datasets including Weizmann, UCF11 (YouTube), UCF Sports, IXMAS, and UT-Interaction. A comparative evaluation is also presented to show that our proposed model achieves superior performances in comparison to a few exiting methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:由于其巨大的应用,在过去几年中,人类行动识别(HAR)在包括人类活动监测,机器人,视觉监测的巨大应用程序中,对名称来说是巨大的。大多数先前提出的HAR系统都集中在使用手工制作的图像特征。但是,这些功能涵盖了问题的有限方面,并显示了大型和复杂数据集的性能下降。因此,在这项工作中,我们提出了一种新颖的HAR系统,该系统基于使用定向梯度(HOG)和深度的直方图的传统手工制作特征的融合。最初,利用基于显着的方法提取的人体轮廓 - 以两个阶段实现。在第一阶段,从所选信道中提取运动和几何特征,同时第二阶段计算所提取的基于阈值和阈值的最小距离特征之间的Chi-scane距离。然后,提取深度CNN和手工制作的特征被融合以产生所得载体。此外,为了应对维度的诅咒,还提出了一种基于熵的特征选择技术,以识别使用多级支持向量机(M-SVM)进行分类的最判别特征。所有模拟都是在包括Weizmann,UCF11(YouTube),UCF体育,IXMAS和UT互动的五个公开可用的基准数据集。还提出了一种比较评估,表明我们所提出的模型与几种退出方法相比,实现了优异的性能。 (c)2019年Elsevier B.V.保留所有权利。

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