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Feature Extraction and Identification of Military Aircraft Based on Remote Sensing Image

Published:17 March 2021Publication History

ABSTRACT

In military application, it is valuable to intelligently acquire target information aided in remote sensing image by computer. Based on the Internet information, a group of five categories of American military aircraft are constructed, and the target detection framework and algorithm of deep learning are carried out, and we made experiments on deep learning method to verify the effectiveness and feasibility of the characteristics extraction and fine particle size recognition by using neural network, and provided some references for the evolution of the future war style and the intelligent battle of the future.

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  • Published in

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    CSAI '20: Proceedings of the 2020 4th International Conference on Computer Science and Artificial Intelligence
    December 2020
    294 pages
    ISBN:9781450388436
    DOI:10.1145/3445815

    Copyright © 2020 ACM

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    Publication History

    • Published: 17 March 2021

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