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Efficient automatic target recognition method for aircraft SAR image using supervised SOM clustering

机译:基于监督SOM聚类的飞机SAR图像有效目标自动识别方法

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Synthetic aperture radar (SAR) has significant advantages in providing high resolution target images, even in darkness or adverse weather. Nevertheless, human operators find target images difficult to recognize because SAR images are generated using complex-valued radio signals of around 1.0-m wavelength. To address this issue, various automatic target recognition (ATR) approaches have been developed, such as those based on neural network or SVM(Support Vector Machine). Moreover, we have already proposed the efficient ATR method using a supervised self-organizing map (SOM), where a binarized SAR image is accurately classified by exploiting the unified distance matrix (Umatrix) metric. Although this method significantly enhances the ATR performance even with heavily contaminated SAR images, it still has a significant problem requiring enormous calculational demands under expansions of scale and thus cannot handle the ATR issue using more training data. As a solution for this problem, this paper employs the A-star algorithm to accelerate the classification speed, and then newly introduces the constrained learning process in generating SOM, which enhances the robustness to the angular variation in targets. Experimental results validate the effectiveness of our proposed method.
机译:合成孔径雷达(SAR)在提供高分辨率目标图像方面具有显着优势,即使在黑暗或恶劣天气下也是如此。然而,由于SAR图像是使用约1.0 m波长的复数值无线电信号生成的,因此,操作人员会发现目标图像难以识别。为了解决这个问题,已经开发了各种自动目标识别(ATR)方法,例如基于神经网络或SVM(支持向量机)的方法。此外,我们已经提出了一种使用监督自组织图(SOM)的有效ATR方法,该方法通过利用统一距离矩阵(Umatrix)度量对二值化SAR图像进行准确分类。尽管该方法即使在严重污染的SAR图像下也能显着提高ATR性能,但它仍然存在一个重大问题,即在规模扩展下需要巨大的计算需求,因此无法使用更多的训练数据来处理ATR问题。为了解决这个问题,本文采用A-star算法来加快分类速度,然后在生成SOM时重新引入了受约束的学习过程,从而增强了目标角度变化的鲁棒性。实验结果验证了我们提出的方法的有效性。

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