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Three-Dimensional Surface Feature for Hyperspectral Imagery Classification

机译:高光谱图像分类的三维表面特征

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Gabor surface feature (GSF) uses the first order and second order derivatives of Gabor magnitude pictures (GMPs) to jointly represent image. However, GSF can not excavate the contextual information that hides in the spectral-spatial structure of three-dimensional hyperspectral imagery since GSF can only deal with spatial relationships. Meanwhile, GSF runs on GMPs with multi-scale and multi-orientation, which leads to dimensional explosion problem. Aiming at these two problems, three-dimensional surface feature (3DSF) approach is proposed for hyperspectral imagery in this paper. 3DSF directly deals with the raw hyperspectral imagery data and utilizes its first order derivative magnitude to jointly represent hyperspectral imagery. Experiments on three real hyperspectral datasets, including Pavia University, Houston University and Indian Pines, verify the effectiveness of the proposed 3DSF approach.
机译:Gabor曲面特征(GSF)使用Gabor幅度图片(GMP)的第一阶和二阶导数来共同代表图像。然而,由于GSF只能处理空间关系,GSF不能挖掘在三维高光谱图像的光谱空间结构中隐藏的上下文信息。同时,GSF以多尺度和多向的GMP运行,导致维度爆炸问题。针对这两个问题,在本文中提出了三维表面特征(3DSF)方法进行高光谱图像。 3DSF直接处理原始超光图象数据,并利用其第一阶衍生幅度来共同代表高光谱图像。三个真正高光谱数据集的实验,包括Pavia University,休斯顿大学和印度松树,验证了提出的3DSF方法的有效性。

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