过滤器大小和过滤器数量对CNN分类精度的影响

Wafaa Ahmed, A. Karim
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引用次数: 30

摘要

卷积神经网络(cnn)由于其直接从数据分类特征中学习的能力而受到了广泛的关注。cnn用于人体运动分类,其中使用预定义和固定的卷积滤波器大小。本文将不同大小和数量的滤波器与CNN一起使用,以确定它们对人体运动分类精度的影响。这项工作是通过一系列的实验完成的;在每个实验中,使用了不同尺寸和数量的滤波器。使用4个卷积层和2个池化层时获得了最好的性能,而使用大尺寸的上卷积层过滤器,随着每层过滤器尺寸的减小和过滤器数量的增加,分类准确率的最大值为98.98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Filter Size and Number of Filters on Classification Accuracy in CNN
Convolution Neural Networks (CNNs) have received considerable attention due to their ability to learn directly from data classification features. CNNs used for human motion classification, where predefined and fixed convolutional filter size used. In this paper, different sizes and numbers of filters were used with CNN to determine their effect on accuracy of human motion classification. This work has been done through series of experiments; in each experiment, different filter size and number of filters have been applied. The best performance has been obtained when using 4 convolution layers and 2 pooling layers, whereas has been used the large filter size with upper convolution layer and with each layer the size of filter decreased and number of filters increased, so that, the maximum value of the accuracy classification was 98.98%.
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