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Image Based Robust Target Classification for Passive ISAR

机译:基于图像的被动ISAR鲁棒目标分类

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摘要

This paper presents an automatic and robust, image feature-based target extraction, and classification method for multistatic passive inverse synthetic aperture radar range/cross-range images. The method can be used as a standalone solution or for augmenting classical signal processing approaches. By extracting textural, directional, and edge information as low-level features, a fused saliency map is calculated for the images and used for target detection. The proposed method uses the contour and the size of the detected targets for classification, is lightweight, fast, and easy to extend. The performance of the approach is compared with machine learning methods and extensively evaluated on real target images.
机译:本文为多静态无源逆合成孔径雷达测距/跨距图像提出了一种基于图像特征的自动,鲁棒的目标提取和分类方法。该方法可以用作独立解决方案或用于增强经典信号处理方法。通过提取纹理,方向和边缘信息作为低级特征,可为图像计算融合的显着性图并将其用于目标检测。所提出的方法利用检测目标的轮廓和大小进行分类,重量轻,速度快,易于扩展。该方法的性能与机器学习方法进行了比较,并在实际目标图像上进行了广泛的评估。

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