Image Classification and Detection of Cigarette Combustion Cone Based on Inception Resnet V2

Guoqing Deng, Yangguang Zhao, Long Zhang, Zhigang Li, Yong Liu, Yi Zhang, Bin Li
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引用次数: 2

Abstract

In order to guide the production of cigarette products and improve the quality of cigarette products, this paper proposes a classification method for cigarette combustion cones based on deep convolutional neural network model. The method is optimized based on the Inception Resnet V2 model and is innovatively used in the detection of cigarette burning cones. The classification accuracy of combustion cone fallout is characterized by the overall classification accuracy (OA) and the Kappa coefficient (Kappa). The experimental results show that the overall classification accuracy is 97.22%, and the Kappa coefficient is 0.9583. The deep convolutional neural network has better classification effect. Based on the classification method of deep convolutional neural network, the cigarette burning cone can be accurately identified.
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基于Inception Resnet V2的卷烟燃烧锥图像分类与检测
为了指导卷烟产品的生产,提高卷烟产品的质量,本文提出了一种基于深度卷积神经网络模型的卷烟燃烧锥分类方法。该方法在Inception Resnet V2模型的基础上进行了优化,创新地应用于香烟燃烧锥的检测。燃烧锥沉降物的分类精度由总体分类精度(OA)和Kappa系数(Kappa)表征。实验结果表明,总体分类准确率为97.22%,Kappa系数为0.9583。深度卷积神经网络具有较好的分类效果。基于深度卷积神经网络的分类方法,可以准确地识别出香烟燃烧锥。
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