首页> 外文会议>Automatic Target Recognition XVII; Proceedings of SPIE-The International Society for Optical Engineering; vol.6566 >Pattern Recognition in Hyperspectral Imagery Using One Dimensional Maximum Average Correlation Height Filter and Mahalanobis Distance
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Pattern Recognition in Hyperspectral Imagery Using One Dimensional Maximum Average Correlation Height Filter and Mahalanobis Distance

机译:使用一维最大平均相关高度滤波器和马氏距离,在高光谱图像中进行模式识别

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Pattern recognition in hyperspectral imagery is a challenging task as the objects occupy only a few pixels or less. The presence of noise can make detection more complicated as spectral signature of pixels can change due to noise. In this paper a technique is proposed for detection in hyperspectral imagery using one dimensional maximum average correlation height (MACH) filter. MACH filter is a type of matched spatial training filter which is widely used for spatial aperture radar (SAR), laser radar (LADAR), forward looking infrared (FLIR) and other class of two-dimensional imageries to train and detect objects. For hyperspectral case a modified one-dimensional MACH filter is proposed which uses likely variations of a given ideal spectral signature for training. Each pixel vector of the data cube is then compared with the detection filter using Mahalanobis distance. Based on Mahalanobis distance between the trained filter and the pixels of the imagery, two classes are formed called the background class which does not contain a desired object and the object class which does contain the desired object. By applying threshold boundary, a decision is then made whether a given pixel belongs to the background class or object class. The simulation results using real life hyperspectral imagery show that the proposed technique can detect and classify the desired objects with a higher rate of efficiency even for very small and scattered objects.
机译:高光谱图像中的模式识别是一项艰巨的任务,因为这些对象仅占几个像素或更少。噪声的存在会使检测更加复杂,因为像素的光谱特征会由于噪声而改变。在本文中,提出了一种使用一维最大平均相关高度(MACH)滤波器的高光谱图像检测技术。 MACH滤波器是一种匹配的空间训练滤波器,广泛用于空间孔径雷达(SAR),激光雷达(LADAR),前视红外(FLIR)和其他类别的二维图像来训练和检测物体。对于高光谱情况,提出了一种改进的一维MACH滤波器,该滤波器使用给定理想频谱特征的可能变化进行训练。然后,使用马氏距离将数据立方体的每个像素向量与检测滤波器进行比较。根据训练后的滤镜和图像像素之间的马氏距离,形成两个类别,称为不包含所需对象的背景类别和包含所需对象的对象类别。通过应用阈值边界,然后确定给定像素是属于背景类别还是对象类别。使用现实生活中的高光谱图像进行的仿真结果表明,即使对于非常小的和分散的对象,所提出的技术也可以以较高的效率对所需对象进行检测和分类。

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