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A novel approach to cloth classification through deep neural networks

机译:深层神经网络布料分类的新方法

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The recent development of the field of artificial intelligence makes the traditional technical recognition more accurate. An important area is commodity identification which helps to classify commodity and provide information for data-ming and commercial decision. This paper considers cloth classification by means of deep neural networks. We summarize the existing methods: the effect improvement of network can be divided into two kinds, by modifying network structure according to their priorities, i.e., increase the depth of network and enhance the performance of convolution unit. In order to further improve the performance of network model, we redesign the network structure based on AlexNet, and put forward the deep convolution neural network model. Experiments are performed on the data sets including ImageNet-1000 and cloth data sets ACS and CAPB. The results show that the proposed deep convolutional neural network is superior to the original AlexNet on these three data sets in terms of accuracy.
机译:最近的人工智能领域的发展使得传统的技术认可更加准确。重要地区是商品识别,有助于对商品进行分类,并为数据明和商业决策提供信息。本文通过深神经网络考虑布分类。我们总结了现有方法:通过根据其优先级修改网络结构,即增加网络的效果改善,网络结构可以分为两种,提高卷积单元的性能。为了进一步提高网络模型的性能,我们重新设计了基于AlexNet的网络结构,并提出了深度卷积神经网络模型。在包括ImageNet-1000和布数据集ACS和CAPB的数据集上执行实验。结果表明,在准确性方面,所提出的深度卷积神经网络优于这三个数据集上的原始亚历尼网。

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