首页> 外文OA文献 >Anomaly based target detection in hyperspectral images via graph cuts [Çizge Kesit Yöntemi ile Hiperspektral Görüntülerde Anomali Tabanli Hedef Tespiti]
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Anomaly based target detection in hyperspectral images via graph cuts [Çizge Kesit Yöntemi ile Hiperspektral Görüntülerde Anomali Tabanli Hedef Tespiti]

机译:通过图割在高光谱图像中基于异常的目标检测[通过图截面法在高光谱图像中基于异常的目标检测]

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摘要

The studies on hyperspectral target detection until now, has been treated in two approaches. Anomaly detection can be considered as the first approach, which analyses the hyperspectral image with respect to the difference between target and the rest of the hyperspectral image. The second approach compares the previously obtained spectral signature of the target with the pixels of the hyperspectral image in order to localize the target. A distinctive disadvantage of the aforementioned approaches is to treat each pixel of the hyperspectral image individually, without considering the neighbourhood relations between the pixels. In this paper, we propose a target detection algorithm which combines the anomaly detection and signature based hyperspectral target detection approaches in a graph based framework by utilizing the neighbourhood relations between the pixels. Assuming that the target signature is available and the target sizes are in the range of anomaly sizes, a novel derivative based matched filter is first proposed to model the foreground. Second, a new anomaly detection method which models the background as a Gaussian mixture is developed. The developed model estimates the optimal number of components forming the Gaussian mixture by means of utilizing sparsity information. Finally, the similarity of the neighbouring hyperspectral pixels is measured with the spectral angle mapper. The overall proposed graph based method has successfully combined the foreground, background and neighbouring information and improved the detection performance by locating the target as a whole object free from noises. © 2015 IEEE.
机译:迄今为止,关于高光谱目标检测的研究已通过两种方法进行了处理。可以将异常检测视为第一种方法,该方法针对目标和其余高光谱图像之间的差异分析高光谱图像。第二种方法将先前获得的目标光谱特征与高光谱图像的像素进行比较,以定位目标。前述方法的显着缺点是单独处理高光谱图像的每个像素,而不考虑像素之间的邻域关系。在本文中,我们提出了一种目标检测算法,该算法利用像素之间的邻域关系,在基于图的框架中结合了基于异常检测和基于签名的高光谱目标检测方法。假设目标签名可用并且目标大小在异常大小的范围内,则首先提出一种新颖的基于导数的匹配滤波器来对前景进行建模。其次,开发了一种新的异常检测方法,该方法将背景建模为高斯混合。开发的模型通过利用稀疏性信息来估计形成高斯混合物的最佳组分数量。最后,使用光谱角度映射器测量相邻高光谱像素的相似度。总体上提出的基于图的方法已经成功地组合了前景,背景和邻近信息,并且通过将目标作为没有噪声的整个对象进行定位而提高了检测性能。 ©2015 IEEE。

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