基于二维卷积神经网络的人类活动识别

Marjan Gholamrezaii, Seyed Mohammad Taghi Almodarresi
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引用次数: 14

摘要

活动识别是将来自不同传感器类型的数据分类到预定义的活动类中的一种。卷积神经网络(Convolutional neural network, CNN)作为一种较好的深度学习方法,近年来引起了人们对活动识别问题的广泛关注,大多数用于识别任务的卷积神经网络都是由卷积层和池化层组成,然后是少量的全连接层。在本文中,我们提出了一种基于仅由卷积层组成的二维卷积神经网络的新架构,并发现通过去除池化层而增加卷积层的步长,计算时间将显著减少,而模型性能不会改变,在某些情况下甚至会提高。并将其性能与其他基于手工特征的方法进行了比较。本文将讨论的第三点是在训练学习算法之前对输入应用快速傅里叶变换的影响。结果表明,这种预处理可以提高模型的性能。在基准数据集上的实验表明,所提出的二维CNN模型在没有池化层的情况下具有很高的性能,在测试集上的总体准确率达到95.69%。
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Human Activity Recognition Using 2D Convolutional Neural Networks
Activity recognition represents the task of classifying data derived from different sensor types into one of predefined activity classes. Convolutional neural networks (CNN) as one of the best deep learning methods has recently attracted much attention to the problem of activity recognition, Most convolutional neural networks used for recognition task are built using convolution and pooling layers followed by a few number of fully connected layers. In this paper, we propose a new architecture based on 2D convolutional neural network that consists solely of convolutional layers and find that with removing the pooling layers and instead adding strides to convolution layers, the computation time will decrease notably while the model performance will not change or in some cases will even improve. Also its performance will be compared with some other handcrafted feature based methods. The third point that will be discussed in this paper is the impact of applying fast fourier transform to inputs before training learning algorithm. It will be shown that this preprocessing will enhance the model performance. Experiments on benchmark dataset demonstrate the high performance of proposed 2D CNN model with no pooling layers, achieving an overall accuracy of 95.69% on the test set.
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