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Adaptive Weighting Based on Subimage Sparse Model for SAR Occluded Target Recognition

机译:基于子图像稀疏模型的自适应加权SAR遮挡目标识别

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Partially occluded target recognition is a problem that is rarely studied but must be faced in the field of synthetic aperture radar target recognition. The difficulty of this problem is finding out the location of the occluded area and eliminating the effects of occlusion. In this paper, an adaptive weighting method based on subimage sparse model is proposed to recognize the partially occluded targets. This method divides the test image (query) and the dictionary into subimages and subdictionaries by the same gridding method. Then, the sparse reconstruction error of each subimage is calculated to design weighting coefficients for the subimage. By multiplying the subimages and subdictionaries by the corresponding weighting coefficients, the weighted query and the weighted dictionary are obtained. Finally, the sparse representation recognition method is utilized to classify the weighted query. The core idea of the proposed method is that the sparse reconstruction error of the image is defined as the sum of the sparse reconstruction error of all the image pixels, and the difference of the sparse reconstruction error of the subimage between unoccluded condition and occluded condition is obvious. So the sparse reconstruction error of the subimage can be easily extracted and used as an indicator for determining the occluded area. By setting small weighting coefficients in the occluded area, the influence of occlusion is reduced and the recognition performance of partially occluded target is improved. Experimental results demonstrate that the proposed method leads to better recognition result in comparison to some state-of-the-art methods under the occlusion condition.
机译:部分遮挡的目标识别是一个很少研究的问题,但在合成孔径雷达目标识别领域必须面对。该问题的困难在于找出被遮挡区域的位置并消除遮挡的影响。提出了一种基于子图像稀疏模型的自适应加权方法来识别部分被遮挡的目标。此方法通过相同的网格化方法将测试图像(查询)和字典分为子图像和子词典。然后,计算每个子图像的稀疏重建误差以设计子图像的加权系数。通过将子图像和子词典乘以相应的加权系数,可以得到加权查询和加权字典。最后,利用稀疏表示识别方法对加权查询进行分类。该方法的核心思想是将图像的稀疏重建误差定义为所有图像像素的稀疏重建误差的总和,子图像的稀疏重建误差在不遮挡条件和遮挡条件之间的差为明显。因此,可以容易地提取子图像的稀疏重建误差并将其用作确定遮挡区域的指标。通过在遮挡区域中设置较小的加权系数,可以减小遮挡的影响,并提高部分遮挡目标的识别性能。实验结果表明,与某些最新的遮挡条件下的方法相比,该方法具有更好的识别效果。

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