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Support tensor machine with local pixel neighborhood for hyperspectral image classification

机译:支持张量机与局部像素邻域进行高光谱图像分类

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A multiclass support tensor machine (STM) for the classification of remotely-sensed imagery is investigated in this study aiming at simultaneously exploiting the spectral and spatial information for accurate image interpretation. Spatial relationship of neighboring pixels has been taken into consideration by a local pixel neighborhood (LPN), which processes the local imagery patch as a cube, and is capable of separating land classes in both spectral and spatial domains. To deal with the tensor data and keep the data structure in high-order feature space, support vector machine has been extended to support tensor machine by the multilinear algebra. Experiments conducted on AVIRIS hyperspectral image revealed that the STM achieved much better results than the standard SVM classifier.
机译:在本研究中研究了用于分类远程感测图像的多碳铜机(STM),其目的是同时利用用于准确图像解释的光谱和空间信息。通过局部像素邻域(LPN)考虑了相邻像素的空间关系,该局部像素邻域(LPN)将本地图像贴片处理为立方体,并且能够在光谱和空间域中分离陆类。要处理张量数据并保持高阶特征空间中的数据结构,还扩展了支持向量机以支持多线性代数的张量机器。在Aviris Hyperspectral图像上进行的实验表明,STM达到了比标准SVM分类器更好的结果。

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