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Generation of sub-pixel-level maps for mixed pixels in hyperspectral image data

机译:超细图像数据中混合像素的子像素级映射的生成

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摘要

Hyperspectral data can find wide applications in classification and mapping of pure and mixed pixels in images of different land-cover types. Hyperspectral data of high spectral resolution enhance discrimination of target objects; but the low spatial resolution poses a challenge due to creation of mixed pixels. The cost of acquiring images at high resolution from sensors is high and rarely available. With images of coarser spatial resolution, it is difficult to identify the endmembers and their locations within the mixed pixel. This study utilizes the fractional abundance values of target endmembers obtained from linear spectral unmixing in locating the sub-pixels of a mixed pixel. The study illustrates the preparation of classified maps of finer spatial resolution by locating the sub-pixels through different mapping algorithms. A comparative analysis of these mapping algorithms, viz. attraction model-based sub-pixel mapping, simulated annealing, neighbourhood connectivity, cosine similarity-based mapping and Markov random field-based mapping has been made and an output generated. The algorithms have been implemented on standard hyperspectral datasets of Indian Pines having 200 spectral channels, Pavia University of 103 spectral channels and Jasper Ridge of 198 spectral channels. It has been observed that simulated annealing-based mapping produces higher accuracy rate than the other algorithms, whereas in terms of execution time, attraction model takes lesser time. The accuracy has been validated with the ground reference map of available standard hyperspectral datasets on which each algorithm has been tested and analysed.
机译:高光谱数据在不同土地覆盖类型图像中纯像素和混合像素的分类和制图中有着广泛的应用。高光谱分辨率的高光谱数据增强了目标物体的识别能力;但由于混合像素的产生,低空间分辨率带来了挑战。从传感器获取高分辨率图像的成本很高,而且很少可用。对于空间分辨率较粗的图像,很难在混合像素中识别端成员及其位置。本研究利用线性光谱分解得到的目标端元丰度分数值来定位混合像素的子像素。这项研究说明了通过不同的映射算法定位子像素来准备更高空间分辨率的分类地图。这些映射算法的比较分析,即。基于吸引模型的亚像素映射、模拟退火、邻域连通性、基于余弦相似性的映射和基于马尔可夫随机场的映射,并生成了输出。算法已经在印度松树的标准高光谱数据集上实现,它具有200个光谱通道,103个光谱通道的帕维亚大学和198个光谱通道的Jasper Ridge。据观察,基于模拟退火的映射比其他算法产生更高的准确率,而在执行时间方面,吸引模型花费的时间较少。精度已通过可用标准高光谱数据集的地面参考地图进行了验证,每种算法都已在该地图上进行了测试和分析。

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