一种改进的高光谱图像小目标检测方法

O. Ozdil, Yunus Emre Esin, Safak Ozturk
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引用次数: 0

摘要

由于高光谱相机的空间分辨率较低,小目标检测成为一项具有挑战性的任务。本文提出了一种具有高性能值的小目标检测新方法。对于目标检测算法来说,准确提取图像的统计信息是非常重要的。准确的背景信息对于广义似然比检验(GLRT)尤为重要。为了正确地提取这些统计数据,图像的像素数不应该太多或太少。因此,高光谱图像通过预处理步骤,根据待检测的目标尺寸将图像分成小块。目标检测算法分别在每个tile组件上执行。这样,提取图像背景信息的像素数量是有限的。然后,将小块目标检测结果进行组合,得到总体结果图。在3个不同的目标上进行了2个不同的图像测试。在对结果进行评估时,我们发现在整个图像上,采用本文方法获得的检测性能值要高于采用GLRT算法获得的检测性能值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Approach for Small Object Detection in Hyperspectral Images
Due to the fact hyperspectral cameras have low spatial resolution values, small target detection becomes a challenging task. In this study, a new method was proposed to detect small targets with high performance values. For target detection algorithms, it is very important to extract the accurate statistical informations of the image. In particular, accurate background information is very important for the Generalized Likelihood Ratio Test (GLRT). In order to extract these statistics correctly, the number of pixels of the image should not be too many or too few. For this reason, the hyperspectral image passed through the preprocessing steps and the image is divided into small tiles depending on the target dimensions to be detected. The target detection algorithm is performed separately on each of the tile components. In this way, the number of pixels from which the background information of the image is extracted is limited. Then, the target detection results obtained from the small pieces are combined and a general result map is obtained. The tests were performed on 3 different targets in 2 different images. When the results were evaluated, it was observed that the detection performance values obtained using the proposed method were higher than the detection performance values obtained using the GLRT algorithm on the whole image.
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