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Research on classification of architectural style image based on convolution neural network

机译:基于卷积神经网络的建筑风格图像分类研究

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Deep learning is a new field in machine learning research. Convolution neural network is the most important factor in image recognition. This paper mainly focuses on the network design and parameter optimization of convolution neural network. This paper is first based on the traditional handwritten digital classification framework LeNet-5 to improve, and implements the test on the ten and twenty-five architectural style data set, and then based on ImageNet-k model design ideas to design a deep convolution neural network structure. The experimental results show that the deeper the network level, the more comprehensive the feature of the image, the better the training effect. In this paper, we study the network design and parameters optimization of convolution neural network, and summarize some practical rules of depth classification on image classification, which is very instructive to solve practical problems.
机译:深度学习是机器学习研究的新领域。卷积神经网络是图像识别中最重要的因素。本文主要研究卷积神经网络的网络设计和参数优化。本文首先对传统的手写数字分类框架LeNet-5进行了改进,并对10到25种建筑风格数据集进行了测试,然后基于ImageNet-k模型设计思想设计了深度卷积神经网络。网络结构。实验结果表明,网络层次越深,图像特征越全面,训练效果越好。本文研究了卷积神经网络的网络设计和参数优化,总结了深度分类在图像分类中的一些实用规则,对解决实际问题具有指导意义。

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