稀疏集合识别的卷积Radon变换方法

Bowen Cheng, Dan Wang, Jiaxiang Niu, Xiaoda Li, Shenshen Luan
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引用次数: 0

摘要

基于遥感图像的机载处理技术已成为当前研究领域的热点,受到了广泛的关注。随着机载数据量的不断增加,如何从海量数据中提取有效信息变得越来越重要。本文提出了一种新的稀疏集体编队识别方法,用于水面舰艇编队的检测和分析。首先,训练一个移动网络来检测航母和单个舰船,形成一个二进制编码的地图,然后用DBSCAN方法对其进行分割,提取可疑的编队。利用卷积radon变换对二值编码映射进行处理,并与三种地层的标准机密数据集(SCD)进行比较。最后通过与SCD的均方根误差(RMSE)最小的比较结果,给出了水面舰艇编队的类型、保密概率和方向。实验结果表明,该方法能在60%以上的保密概率下识别不同偏移量的“Y”、“T”、“I”型水面舰艇编队,具有显著的可行性和鲁棒性。
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Convolutional Radon Transformation Method for Sparse Collective Recognizing
The onboard processing technology based on remote sensing images has become the focus of current research area and received widespread attention. With the increasing amount of onboard data, how to extract effective information from massive data becomes increasingly important. In this paper, a novel sparse collective formation recognizing method is proposed to detect and analyze the formation of the surface ship formation. Firstly, a mobilenet is trained to detect the carrier and single ships to form a binary encoded map, which will be segmented by the DBSCAN method to extract the suspected formation. Then the binary encoded map is processed by the convolutional radon transformation and the result is compared with the standard confidential dataset (SCD) of three formations. Finally the formation type, confidential probability, direction of the surface ship formation was given by the comparison result which has the minimum root-mean-square-error (RMSE) with the SCD. The experimental results show that the proposed method can recognize the ‘Y’, ‘T’ and ‘I’ type surface ship formations with different offsets under more than 60% confidential probability and has a significant feasibility and robustness.
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