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Image Enhancement for Automatic Target Detection

机译:用于自动目标检测的图像增强

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摘要

Typically when one tackles an Automatic Target Detection (ATD) problem in image data, an assumption is made that the sample of target pixels is statistically different from the sample of background pixels in an immediate neighborhood of the target. Algorithms are then devised to recognize groups (or individual) outlier pixels as indicating a possible target to be further processed by an Automatic Target Recognition (ATR) algorithm. In this paper, we present a novel approach for image enhancement that raises the intensity of outlier pixels while suppressing background pixels. Thus, simple thresholding of the enhanced image becomes a powerful ATD algorithm. The approach is not a pixel-level algorithm as it is derived and implemented in the frequency domain. This also implies that, since the algorithm is not specifically intensity-based, low SNR targets can be significantly enhanced if the target frequency domain characteristics are outliers compared to the background frequency domain characteristics. Full performance statistics over a large and clutter rich IR dataset will be presented and compared to other ATD algorithms.
机译:通常,当解决图像数据中的自动目标检测(ATD)问题时,将假定目标像素的样本在统计上不同于目标紧邻区域的背景像素的样本。然后设计算法以识别组(或单个)离群像素,以指示可能的目标,以通过自动目标识别(ATR)算法进一步处理。在本文中,我们提出了一种新颖的图像增强方法,该方法在抑制背景像素的同时提高了异常像素的强度。因此,增强图像的简单阈值化成为强大的ATD算法。该方法不是像素级算法,因为它是在频域中导出和实现的。这也意味着,由于该算法不是专门基于强度的,因此,如果目标频域特性与背景频域特性相比离群,则可以显着增强低SNR目标。将提供一个庞大且杂乱的IR数据集的全部性能统计数据,并将其与其他ATD算法进行比较。

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