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A Vehicle Target Recognition Algorithm for Wide-Angle SAR Based on Joint Feature Set Matching

机译:基于联合功能集匹配的广角SAR的车辆目标识别算法

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摘要

Target recognition is an important area in Synthetic Aperture Radar (SAR) research. Wide-angle Synthetic Aperture Radar (WSAR) has obvious advantages in target imaging resolution. This paper presents a vehicle target recognition algorithm for wide-angle SAR, which is based on joint feature set matching (JFSM). In this algorithm, firstly, the modulus stretch step is added in the imaging process of wide-angle SAR to obtain the thinned image of vehicle contour. Secondly, the gravitational-based speckle reduction algorithm is used to obtain a clearer contour image. Thirdly, the image is rotated to obtain a standard orientation image. Subsequently, the image and projection feature sets are extracted. Finally, the JFSM algorithm, which combines the image and projection sets, is used to identify the vehicle model. Experiments show that the recognition accuracy of the proposed algorithm is up to 85%. The proposed algorithm is demonstrated on the Gotcha WSAR dataset.
机译:目标识别是合成孔径雷达(SAR)研究中的重要领域。广角合成孔径雷达(WSAR)在目标成像分辨率中具有明显的优势。本文介绍了广角SAR的车辆目标识别算法,基于联合特征集匹配(JFSM)。在该算法中,首先,在广角SAR的成像过程中添加模量拉伸步骤,得到车辆轮廓的变薄图像。其次,基于引力的散斑缩放算法用于获得更清晰的轮廓图像。第三,旋转图像以获得标准方向图像。随后,提取图像和投影特征集。最后,组合图像和投影集的JFSM算法用于识别车辆模型。实验表明,所提出的算法的识别准确性高达85%。在GOTCHA WSAR数据集上演示了所提出的算法。

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