Integrated Algorithm Based on Bidirectional Characteristics and Feature Selection for Fire Image Classification

Wang, Zuoxin and Zhao, Xiaohu and Tao, Yuning (2023) Integrated Algorithm Based on Bidirectional Characteristics and Feature Selection for Fire Image Classification. Electronics, 12 (22). p. 4566. ISSN 2079-9292

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Abstract

In some fire classification task samples, it is especially important to learn and select limited features. Therefore, enhancing shallow characteristic learning and accurately reserving deep characteristics play a decisive role in the final fire classification task. In this paper, we propose an integrated algorithm based on bidirectional characteristics and feature selection for fire image classification called BCFS-Net. This algorithm is integrated from two modules, a bidirectional characteristics module and feature selection module; hence, it is called an integrated algorithm. The main process of this algorithm is as follows: First, we construct a bidirectional convolution module to obtain multiple sets of bidirectional traditional convolutions and dilated convolutions for the feature mining and learning shallow features. Then, we improve the Inception V3 module. By utilizing the bidirectional attention mechanism and Euclidean distance, feature points with greater correlation between the feature maps generated by convolutions in the Inception V3 module are selected. Next, we comprehensively consider and integrate feature points with richer semantic information from multiple dimensions. Finally, we use convolution to further learn the deep features and complete the final fire classification task. We validated the feasibility of our proposed algorithm in three sets of public fire datasets, and the overall accuracy value in the BoWFire dataset reached 88.9%. The overall accuracy in the outdoor fire dataset reached 96.96%. The overall accuracy value in the Fire Smoke dataset reached 81.66%.

Item Type: Article
Subjects: T Technology > T Technology (General)
Depositing User: Unnamed user with email support@goforstm.com
Date Deposited: 09 Nov 2023 09:26
Last Modified: 09 Nov 2023 09:26
URI: http://archive.article4submit.com/id/eprint/2176

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