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Invariant Attribute Profiles: A Spatial-Frequency Joint Feature Extractor for Hyperspectral Image Classification

机译:不变属性配置文件:空间频率接头特征提取器,用于高光谱图像分类

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摘要

So far, a large number of advanced techniques have been developed to enhance and extract the spatially semantic information in hyperspectral image processing and analysis. However, locally semantic change, such as scene composition, relative position between objects, spectral variability caused by illumination, atmospheric effects, and material mixture, has been less frequently investigated in modeling spatial information. Consequently, identifying the same materials from spatially different scenes or positions can be difficult. In this article, we propose a solution to address this issue by locally extracting invariant features from hyperspectral imagery (HSI) in both spatial and frequency domains, using a method called invariant attribute profiles (IAPs). IAPs extract the spatial invariant features by exploiting isotropic filter banks or convolutional kernels on HSI and spatial aggregation techniques (e.g., superpixel segmentation) in the Cartesian coordinate system. Furthermore, they model invariant behaviors (e.g., shift, rotation) by the means of a continuous histogram of oriented gradients constructed in a Fourier polar coordinate. This yields a combinatorial representation of spatial-frequency invariant features with application to HSI classification. Extensive experiments conducted on three promising hyperspectral data sets (Houston2013 and Houston2018) to demonstrate the superiority and effectiveness of the proposed IAP method in comparison with several state-of-the-art profile-related techniques. The codes will be available from the website: https://sites.google.com/view/danfeng-hong/data-code.
机译:到目前为止,已经开发了大量的先进技术来增强和提取高光谱图像处理和分析中的空间语义信息。然而,局部语义变化,例如场景组成,物体之间的相对位置,由照明引起的光谱可变性,在模拟空间信息中的频繁调查。因此,可以难以识别来自空间不同的场景或位置的相同材料。在本文中,我们使用称为不变属性配置文件(IAP)的方法,提出了通过在空间和频率域中的Hyperspectral Imagery(HSI)中的不变特征来解决此问题的解决方案。 IAP通过在笛卡尔坐标系中利用在HSI和空间聚集技术(例如,超顶缀分段)上利用各向同性的滤波器组或卷积核来提取空间不变特征。此外,它们通过在傅里叶极性坐标中构造的定向梯度的连续直方图模型(例如,换档,旋转)模型(例如,换档,旋转)。这产生了具有应用于HSI分类的空间频率不变特征的组合表示。在三个承诺的高光谱数据集(Houston2013和Houston2018)上进行了广泛的实验,以证明所提出的IAP方法的优越性和有效性与多种最先进的剖面相关技术相比。该代码将从网站提供: https://sites.google.com/view/danfeng-hong/data-code

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