基于最近邻特征空间的GPU高光谱图像分类方法

Yang-Lang Chang, Hsien-Tang Chao, Min-Yu Huang, Lena Chang, Jyh-Perng Fang, Tung-Ju Hsieh
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引用次数: 2

摘要

本文提出了一种基于最近邻特征空间(NFS)的有监督高光谱图像分类新技术——基于中心的最近邻特征空间(INFS)。由于类可分离性和邻域结构,传统的NFS可以很好地用于遥感图像的分类。然而,在某些情况下,尽管NFS在正常情况下具有很高的分类准确率,但重叠的训练样本可能会导致分类错误。针对这一问题,本文提出了一种信息系统。INFS方法利用一个三角形的三个边相切的圆,形成一个INFS。此外,同一类的三个训练样本可以有效地计算出一个中心。此外,为了加快计算速度,本文提出了一种并行计算版本的INFS,即并行INFS (PINFS)。它采用现代图形处理单元(GPU)架构和NVIDIA的计算统一设备架构(CUDA)技术来提高INFS的计算速度。实验结果表明,该方法适用于地球遥感土地覆盖分类。当类样本分布重叠时,它比NFS分类器具有更好的性能。通过CUDA对GPU的计算,我们也可以获得更好的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incenter-based nearest feature space method for hyperspectral image classification using GPU
In this paper a novel technique based on nearest feature space (NFS), known as incenter-based nearest feature space (INFS), is proposed for supervised hyperspectral image classification. Due to the class separability and neighborhood structure, the traditional NFS can perform well for classification of remote sensing images. However, in some instances, the overlapping training samples might cause classification errors in spite of the high classification accuracy of NFS for normal cases. In response, the INFS is proposed to overcome this problem in this paper. INFS method makes use of the incircle of a triangle which is tangent to its three sides and form a INFS. In addition, an incenter can be calculated by three training samples of the same class efficiently. Furthermore, in order to speed up the computation performance, this paper proposes a parallel computing version of INFS, namely parallel INFS (PINFS). It uses a modern graphics processing unit (GPU) architecture with NVIDIA's compute unified device architecture (CUDA) technology to improve the computational speed of INFS. Experimental results demonstrate the proposed INFS approach is suitable for land cover classification in earth remote sensing. It can achieve the better performance than NFS classifier when the class sample distribution overlaps. Through the computation of GPU by CUDA, we can also gain better speedup.
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