Generative adversarial network based on LSTM and convolutional block attention module for industrial smoke image recognition

IF 1.2 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Dahai Li, Rui Yang, Su Chen
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引用次数: 0

Abstract

The industrial smoke scene is complex and diverse, and the cost of labeling a large number of smoke data is too high. Under the existing conditions, it is very challenging to efficiently use a large number of existing scene annotation data and network models to complete the image classification and recognition task in the industrial smoke scene. Traditional deep learn-based networks can be directly and efficiently applied to normal scene classification, but there will be a large loss of accuracy in industrial smoke scene. Therefore, we propose a novel generative adversarial network based on LSTM and convolutional block attention module for industrial smoke image recognition. In this paper, a low-cost data enhancement method is used to effectively reduce the difference in the pixel field of the image. The smoke image is input into the LSTM in generator and encoded as a hidden layer vector. This hidden layer vector is then entered into the discriminator. Meanwhile, a convolutional block attention module is integrated into the discriminator to improve the feature self-extraction ability of the discriminator model, so as to improve the performance of the whole smoke image recognition network. Experiments are carried out on real diversified industrial smoke scene data, and the results show that the proposed method achieves better image classification and recognition effect. In particular, the F scores are all above 89%, which is the best among all the results.
基于LSTM和卷积分块注意模块的生成对抗网络工业烟雾图像识别
工业烟雾场景复杂多样,对大量烟雾数据进行标注的成本过高。在现有条件下,高效利用大量已有的场景标注数据和网络模型来完成工业烟雾场景中的图像分类识别任务是非常具有挑战性的。传统的基于深度学习的网络可以直接有效地应用于普通场景分类,但在工业烟雾场景中会有较大的准确率损失。因此,我们提出了一种基于LSTM和卷积分块注意模块的新型生成对抗网络用于工业烟雾图像识别。本文采用一种低成本的数据增强方法,有效地减小了图像像素场的差异。将烟雾图像输入到生成器的LSTM中,并编码为隐藏层向量。然后将该隐藏层向量输入鉴别器。同时,在鉴别器中加入卷积块关注模块,提高鉴别器模型的特征自提取能力,从而提高整个烟雾图像识别网络的性能。在真实的多种工业烟雾场景数据上进行了实验,结果表明该方法取得了较好的图像分类和识别效果。特别是F成绩都在89%以上,是所有成绩中最好的。
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来源期刊
Computer Science and Information Systems
Computer Science and Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
2.30
自引率
21.40%
发文量
76
审稿时长
7.5 months
期刊介绍: About the journal Home page Contact information Aims and scope Indexing information Editorial policies ComSIS consortium Journal boards Managing board For authors Information for contributors Paper submission Article submission through OJS Copyright transfer form Download section For readers Forthcoming articles Current issue Archive Subscription For reviewers View and review submissions News Journal''s Facebook page Call for special issue New issue notification Aims and scope Computer Science and Information Systems (ComSIS) is an international refereed journal, published in Serbia. The objective of ComSIS is to communicate important research and development results in the areas of computer science, software engineering, and information systems.
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