Research on Recognition and Classification Technology Based on Deep Convolutional Neural Network

Guoling Cui
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Abstract

Deep convolutional neural network is one of the most popular research topics in the field of computer vision. It has the function of extracting image feature information, has strong nonlinear classification ability, fast learning speed, and can be used for image recognition and classification. This paper makes use of its image recognition and classification function to carry on the research of its recognition and classification technology in oil painting schools. Through the ResNet network structure of a deep convolutional neural network, a data set is constructed by load data function, and then embedded into a SEBlock model, the accuracy and generalization ability of image recognition and classification of the deep convolutional neural network can be greatly improved. Among them, the SE model has strong effectiveness and generalization ability. For example, the accuracy of the SE-ResNet-34 is 1.73% higher than that of the ResNet-34, and the accuracy of the SE-ResNet-50 has reached that of the ResNet-101. The SE model is applied to the deep convolutional neural network to improve classification accuracy and reduce errors.
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基于深度卷积神经网络的识别分类技术研究
深度卷积神经网络是计算机视觉领域最热门的研究课题之一。它具有提取图像特征信息的功能,具有较强的非线性分类能力,学习速度快,可用于图像识别和分类。本文利用其图像识别分类功能,对其在油画流派中的识别分类技术进行研究。通过深度卷积神经网络的ResNet网络结构,通过加载数据函数构建数据集,然后嵌入到SEBlock模型中,可以大大提高深度卷积神经网络图像识别和分类的精度和泛化能力。其中,SE模型具有较强的有效性和泛化能力。例如,SE-ResNet-34的精度比ResNet-34高1.73%,SE-ResNet-50的精度已达到ResNet-101的精度。将SE模型应用于深度卷积神经网络,提高了分类精度,减少了错误。
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