基于DCGAN的msi过程异常燃烧状态图像生成方法

Haitao Guo, Jian Tang, Hao Zhang, Dandan Wang
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引用次数: 0

摘要

本文旨在为城市生活垃圾焚烧过程的机器视觉研究提供合格的异常燃烧状态图像。由于异常燃烧状态图像的稀缺性和标记成本高,难以获得足够的异常燃烧状态图像。针对这一问题,提出了一种基于深度卷积生成对抗网络(DCGAN)的异常燃烧状态图像生成方法。首先,对异常燃烧状态的真实图像数据进行预处理。其次,异常燃烧状态图像生成生成虚假燃烧图像。第三步,将真实图像和生成的图像送入识别网络。损失值用于训练识别和生成。最后,根据误差和历元决定是否更新生成和判别网络的参数。满足历元设定后,得到了生成的合格的异常燃烧状态图像。基于fr起始距离(FID)对生成图像质量的评价结果表明,DCGAN能够实现异常燃烧状态图像的生成。
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A method for generating images of abnormal combustion state in MSWI process based on DCGAN
This article is to provide qualified images of abnormal combustion state for the research of machine vision in municipal solid waste incineration (MSWI) process. Owing to the scarcity of the images of abnormal combustion state and the high cost of labeling, it is difficult to obtain sufficient images of abnormal combustion state. Aim at the problem, this paper proposes a method for generating images of abnormal combustion state based on a deep convolutional generative adversarial network (DCGAN). First, the real image data of abnormal combustion state is preprocessed. Second, the abnormal combustion state image generation generates false combustion images. Third, the real images and the generated images are fed into the discrimination network. The loss values are used to train the discrimination and generation. Finally, whether to update the parameters of the generation and discrimination network is determined by the error and epoch. The qualified generated abnormal combustion state images are obtained after the epoch setting met. The evaluation result of the generated image quality based on the Fréchet Inception Distance (FID) shows that DCGAN can realize the generation of abnormal combustion state images.
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