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A Two-Dimensional Adaptive Target Detection Algorithm in the Compressive Domain

机译:压缩域中的二维自适应目标检测算法

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摘要

By applying compressive sensing to infrared imaging systems, the sampling and transmitting time can be remarkably reduced. Therefore, in order to meet the real-time requirements of infrared small target detection tasks in the remote sensing field, many approaches based on compressive sensing have been proposed. However, these approaches need to reconstruct the image from the compressive domain before detecting targets, which is inefficient due to the complex recovery algorithms. To overcome this drawback, in this paper, we propose a two-dimensional adaptive threshold algorithm based on compressive sensing for infrared small target detection. Instead of processing the reconstructed image, our algorithm focuses on directly detecting the target in the compressive domain, which reduces both the time and memory requirements for image recovery. First, we directly subtract the spatial background image in the compressive domain of the original image sampled by the two-dimensional measurement model. Then, we use the properties of the Gram matrix to decode the subtracted image for further processing. Finally, we detect the targets by employing the advanced adaptive threshold method to the decoded image. Experiments show that our algorithm can achieve an average 100% detection rate, with a false alarm rate lower than 0.4%, and the computational time is within 0.3 s, on average.
机译:通过将压缩感测应用于红外成像系统,可以显着减少采样和传输时间。因此,为了满足遥感领域对红外小目标检测任务的实时性要求,提出了许多基于压缩感知的方法。但是,这些方法需要在检测到目标之前从压缩域重建图像,这由于复杂的恢复算法而效率低下。为了克服这一缺陷,本文提出了一种基于压缩感知的二维自适应阈值算法,用于红外小目标检测。我们的算法不处理重建的图像,而是专注于直接在压缩域中检测目标,这减少了图像恢复所需的时间和内存。首先,我们直接在二维测量模型采样的原始图像的压缩域中减去空间背景图像。然后,我们使用Gram矩阵的属性解码减法后的图像以进行进一步处理。最后,我们通过对解码图像使用高级自适应阈值方法来检测目标。实验表明,该算法平均可以达到100%的检测率,误报率低于0.4%,平均计算时间在0.3 s以内。

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