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EFFC-Net: lightweight fully convolutional neural networks in remote sensing disaster images

Jianye Yuan, Xin Ma, Zhentong Zhang, Qiang Xu, Ge Han, Song Li, Wei Gong, Fangyuan Liu, Xin Cai

2023Geo-spatial Information Science15 citationsDOIOpen Access PDF

Abstract

Continuous development of remote sensing technology can rapidly and accurately extract secondary disaster information, such as the area of various disasters. However, in the extraction process, some disasters should be initially classified and identified. In view of this concept, a lightweight fully Convolutional Neural Network (CNN) model Earthquake – Flood–Fire – Cyclone (EFFC)-Net is proposed. Two modules, EFFC_Block and EFFC_Tran_Block, which are used for feature extraction and feature transformation, respectively, are introduced. The EFFC-Net network model is reconstructed through the EFFC_Block and EFFC_Tran_Block modules. Subsequently, EFFC-Net is compared with CNN and transformer models. Results show that the EFFC-Net network model performs effectively in precision, recall, F1_score, and parameters, outperforming the more advanced CNN and transformer models. Moreover, the test time of the Cifar_10 and Cifar_100 datasets was compared, and the results indicate that the EFFC-Net algorithm has the shortest running time and achieves the lightweight goal. Therefore, the EFFC-Net lightweight fully CNN has high disaster classification application value and good portability.

Topics & Concepts

Computer scienceConvolutional neural networkBlock (permutation group theory)Artificial intelligenceSoftware portabilityNet (polyhedron)Artificial neural networkFeature extractionPattern recognition (psychology)Data miningReal-time computingMathematicsGeometryProgramming languageAnomaly Detection Techniques and ApplicationsSeismology and Earthquake StudiesEarthquake Detection and Analysis
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