多视反合成孔径雷达(ISAR)图像的数据级融合

Zhixi Li, R. Narayanan
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引用次数: 15

摘要

虽然单面雷达成像的分辨率增强技术近年来取得了快速进展,但这并不一定意味着这种增强的图像将提高目标识别或识别。然而,当从不同角度获得同一目标的多个外观时,可用知识库增加,从而可以提取更多有用的目标信息。通过处理从多个ISAR传感器收集的原始数据,可以开发基于物理的图像融合技术,即使这些单独的图像具有不同的分辨率。我们推导出合适的数据融合规则,以生成包含更多目标形状特征的合成图像,从而提高目标识别。该规则将具有不同系统参数的多部雷达收集的多个数据集映射到同一空间-频率空间。复合图像可以通过对分离的多个积分区域进行二维傅里叶反变换来重建。一种叫做矩阵傅里叶变换的算法被创造出来来实现这种复杂的积分。该算法可以看作是一种精确的插值,不存在由于数据融合而造成的信息丢失。在进行融合之前,需要仔细选择旋转中心,以便正确地配准多幅图像。融合图像和空间平均图像之间的IAR(图像属性评级)曲线的比较量化了检测到的目标特征的改进。与简单的空间平均算法相比,该技术有了很大的改进,从而提高了目标识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Level Fusion of Multilook Inverse Synthetic Aperture Radar (ISAR) Images
Although techniques for resolution enhancement in single-aspect radar imaging have made rapid progress in recent years, it does not necessarily imply that such enhanced images will improve target identification or recognition. However, when multiple looks of the same target from different aspects are obtained, the available knowledge base increases allowing more useful target information to be extracted. Physics based image fusion techniques can be developed by processing the raw data collected from multiple ISAR sensors, even if these individual images are at different resolutions. We derive an appropriate data fusion rule in order to generate a composite image containing increased target shape characteristics for improved target recognition. The rule maps multiple data sets collected by multiple radars with different system parameters on to the same spatial-frequency space. The composite image can be reconstructed using the inverse 2-D Fourier transform over the separated multiple integration areas. An algorithm called the matrix Fourier transform is created to realize such a complicated integral. This algorithm can be regarded as an exact interpolation, such that there is no information loss caused by data fusion. The rotation centers need to be carefully selected in order to properly register the multiple images before performing the fusion. A comparison of the IAR (Image Attribute Rating) curve between the fused image and the spatial-averaged images quantifies the improvement in the detected target features. The technique shows considerable improvement over a simple spatial averaging algorithm and thereby enhances target recognition.
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