Human Activity Recognition in a Realistic and Multiview Environment Based on Two-Dimensional Convolutional Neural Network

Ashish Khare, A. Kushwaha, O. Prakash
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Abstract

Recognition of human activity based on convolutional neural network has received the interest of researchers in recent years due to its significant improvement in accuracy. A large number of algorithms based on the deep learning approach have been proposed for activity recognition purpose. However, with the increasing advancements in technologies having limited computational resources, it needs to design an efficient deep learning-based approaches with improved utilization of computational resources. This paper presents a simple and efficient 2-Dimensional convolutional neural network (2-D CNN) architecture with very small size convolutional kernel for human activity recognition. The merit of the proposed CNN architecture over standard deep learning architectures is fewer trainable parameters and lesser memory requirement which enables it to train the proposed CNN architecture on low GPU memory-based devices and also works well with smaller as well as larger size datasets. The proposed approach consists of mainly four stages: namely (1) creation of dataset and data augmentation, (2) designing 2-D convolutional neural network (CNN) architecture, (3) the proposed 2-D CNN architecture trained from scratch up to optimum stage, and (4) evaluation of the trained 2-D CNN architecture. To illustrate the effectiveness of the proposed architecture several extensive experiments are conducted on three publicly available datasets, namely IXMAS, YouTube, and UCF101 dataset. The results of the proposed method and its comparison with other state-of-the-art methods [8-12,14,18-26,29-33] demonstrate the usefulness of the proposed method.
基于二维卷积神经网络的真实多视图环境下的人类活动识别
近年来,基于卷积神经网络的人类活动识别因其在准确率上的显著提高而受到了研究人员的关注。在深度学习方法的基础上,已经提出了大量用于活动识别的算法。然而,随着技术的不断进步,计算资源有限,需要设计一种高效的基于深度学习的方法,提高计算资源的利用率。本文提出了一种简单高效的具有极小卷积核的二维卷积神经网络(2-D CNN)结构,用于人体活动识别。与标准深度学习架构相比,所提出的CNN架构的优点是可训练参数更少,内存需求更少,这使得它能够在基于低GPU内存的设备上训练所提出的CNN架构,并且在更小和更大的数据集上也能很好地工作。该方法主要包括四个阶段:(1)数据集创建和数据增强;(2)设计2- d卷积神经网络(CNN)架构;(3)提出的2- d卷积神经网络架构从零开始训练到最优阶段;(4)对训练好的2- d CNN架构进行评估。为了说明所提出的架构的有效性,在三个公开可用的数据集(即IXMAS, YouTube和UCF101数据集)上进行了几个广泛的实验。所提出方法的结果及其与其他最先进方法的比较[8-12,14,18-26,29-33]证明了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.70
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