Laser Journal, Volume. 45, Issue 8, 98(2024)

Target detection method in laser remote sensing images based on residual dense blocks

LI Xue1...2, LIU Yue1,2,*, and WANG Qingzheng23 |Show fewer author(s)
Author Affiliations
  • 1College of Information Engineering, Kaifeng University, Kaifeng Henan 475000, China
  • 2Kaifeng Public Security Information Engineering Center, Kaifeng Henan 475000, China
  • 3College of Information Engineering, North China University of Water Conservancy and Electric Power, Zhengzhou 450046, China
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    In order to improve the effectiveness of object detection, a method for object detection in laser remote sensing images based on residual dense blocks is proposed. Firstly, design a convolutional neural network based on residual dense blocks. After designing the ReLU activation function and completing network training, based on the preliminary feature extraction results of noisy laser remote sensing images, use a single convolution to unfold the convolutional mapping process and extract potentially clean images. Then, through clustering processing, the saliency map of vehicle targets in the laser remote sensing image is obtained, and then the target information is detected using the established feature proportion relationship using the general law. The experimental results show that the application of this method effectively filters out noise in laser remote sensing images and accurately detects vehicle targets in laser remote sensing images. Compared to the three traditional methods, the minimum value of the mean error of the detection results of this method is only 0.015 6, indicating that this method effectively achieves the design expectations.

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    LI Xue, LIU Yue, WANG Qingzheng. Target detection method in laser remote sensing images based on residual dense blocks[J]. Laser Journal, 2024, 45(8): 98

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    Paper Information

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    Received: Dec. 22, 2023

    Accepted: Dec. 20, 2024

    Published Online: Dec. 20, 2024

    The Author Email:

    DOI:10.14016/j.cnki.jgzz.2024.08.098

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