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A Multi-label Scene Categorization Model Based on Deep Convolutional Neural Network

机译:基于深度卷积神经网络的多标签场景分类模型

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Being one of the most fundamental embranchments of deep learning theory, scene categorization technology has been extensively researched because of its great value in engineering application, especially in the field of remote monitoring and intelligent fault detection. To bridge the gap between theoretical accuracy and practical performance of relevant classification models which is mainly caused by nonstandard labeling information, this paper builds a normative dataset composed of 10,000 high-quality manual labeled images from the power sector, and proposes a high-performance multi-label classification model utilizing deep convolutional neural network (CNN) inspired by lnception-v4 [1] on this basis. Experiments demonstrate that the model proposed achieves an accuracy of 94.125% on the test set and thus can be deployed into practical intelligent surveillance scenarios.
机译:作为深度学习理论的最基本分支之一,场景分类技术因其在工程应用中,特别是在远程监控和智能故障检测领域中的巨大价值,已经得到了广泛的研究。为了弥合主要由非标准标签信息引起的相关分类模型的理论准确性和实际性能之间的差距,本文构建了一个由10,000个来自电力部门的高质量手动标签图像组成的规范数据集,并提出了一种高性能的在此基础上,采用受Inception-v4 [1]启发的利用深度卷积神经网络(CNN)进行标签分类的模型。实验表明,所提出的模型在测试集上的准确度达到94.125%,因此可以部署到实际的智能监视场景中。

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