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1.西安工业大学 光电工程学院, 陕西 西安 710021
2.中国科学院 光谱成像技术重点实验室, 陕西 西安 710029
[ "吴银花(1984-), 女, 吉林延吉人, 博士, 讲师, 2012年于中国科学院研究生院获得博士学位, 主要从事高光谱成像与数据处理方面的研究。E-mail:yinhuawoo@163.com" ]
[ "王鹏冲(1984-), 男, 山西大同人, 博士, 助理研究员, 2017年于哈尔滨工业大学获得博士学位, 主要从事高光谱成像技术方面的研究。E-mail:wangpengchong@opt.ac.cn" ]
收稿日期:2020-03-26,
修回日期:2020-04-24,
录用日期:2020-4-24,
纸质出版日期:2020-09-05
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吴银花, 王鹏冲, 吴慎将, 等. 针对高光谱端元提取的空谱联合预处理方法[J]. 液晶与显示, 2020,35(9):955-964.
Yin-hua WU, Peng-chong WANG, Shen-jiang WU, et al. Spatial-spectral combined preprocessing method for hyperspectral endmember extraction[J]. Chinese journal of liquid crystals and displays, 2020, 35(9): 955-964.
吴银花, 王鹏冲, 吴慎将, 等. 针对高光谱端元提取的空谱联合预处理方法[J]. 液晶与显示, 2020,35(9):955-964. DOI: 10.37188/YJYXS20203509.0955.
Yin-hua WU, Peng-chong WANG, Shen-jiang WU, et al. Spatial-spectral combined preprocessing method for hyperspectral endmember extraction[J]. Chinese journal of liquid crystals and displays, 2020, 35(9): 955-964. DOI: 10.37188/YJYXS20203509.0955.
混合像元的存在是制约高光谱遥感应用精度的主要原因,因此必须进行高光谱解混合。端元提取作为高光谱解混合的关键,往往易受噪声和异常点的干扰。为了提高端元提取精度,针对高光谱端元提取提出了一种空谱联合的预处理方法。首先,定义了新概念光谱纯度指数,主要用于预估高光谱图像中每个像元的光谱纯度;其次,给出了基于光谱纯度指数的空间去冗余方法,利用真实地物的空间分布连续性,判断和移除高光谱图像中冗余像元,最终形成精简的候选端元集。实验结果表明:采用提出的预处理方法后,对于模拟高光谱图像,提取的端元与原始端元之间夹角平均减少了9.022 3°,候选端元数量少于原始像元数量的10%。该预处理方法不仅有效消除了噪声和异常点的干扰,提高了端元提取精度,且大幅降低了时间复杂度。
The existence of mixed pixels is the main reason that restricts the application accuracy of hyperspectral remote sensing
so hyperspectral unmixing is necessary. As the key of hyperspectral unmixing
the endmember extraction is often susceptible to noise and outliers. In order to improve the accuracy of endmember extraction
a spatial-spectral combined preprocessing method for hyperspectral endmember extraction is proposed in this paper. Firstly
a new concept of spectral purity index (SPI) is defined
which is used to estimate the spectral purity of each pixel in hyperspectral image. Secondly
a spatial de-redundancy method based on SPI is provided
utilizing the continuity of spatial distribution of real objects in the image to judge and eliminate redundant pixels in hyperspectral image
and finally a fine set of candidate endmembers is formed. Experimental results show that after using the proposed preprocessing method
for the simulated hyperspectral image
the angle between the extracted endmembers and the original endmembers is reduced by 9.022 3° on average
and the number of candidate endmembers is less than 10% of the number of original pixels. The proposed preprocessing method not only eliminates the interference of noise and outliers effectively and improves the accuracy of endmember extraction
but also reduces the time complexity greatly.
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Y C HUANG , A C WANG . Hyperspectral compressed perceptual reconstruction based on space spectrum combination and band classification . Chinese Journal of Liquid Crystals and Displays , 2018 . 33 ( 4 ): 291 - 298 . http://cjlcd.lightpublishing.cn/thesisDetails?columnId=1377924&Fpath=&index=-1&l=zh http://cjlcd.lightpublishing.cn/thesisDetails?columnId=1377924&Fpath=&index=-1&l=zh .
李 冠东 , 张 春菊 , 高 飞 , 等 . 双卷积池化结构的3D-CNN高光谱遥感影像分类方法 . 中国图象图形学报 , 2019 . 24 ( 4 ): 639 - 654 .
G D LI , C J ZHANG , F GAO , 等 . Doubleconvpool-structured 3D-CNN for hyperspectral remote sensing image classification . Journal of Image and Graphics , 2019 . 24 ( 4 ): 639 - 654 .
谭 翠媚 , 许 廷发 , 马 旭 , 等 . 图-谱结合的压缩感知高光谱视频图像复原 . 中国光学 , 2018 . 11 ( 6 ): 949 - 957 .
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G YAN , T F XU , X MA , 等 . Hyperspectral image compression sensing based on dynamic measurement . Chinese Optics , 2018 . 11 ( 4 ): 550 - 559 .
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X P DU , M LIU , L R XIA , 等 . Anomaly detection algorithm for hyperspectral imagery based on summation of spectral angles . Chinese Optics , 2013 . 6 ( 3 ): 325 - 331 .
方 帅 , 祝 凤娟 , 董 张玉 , 等 . 样本优化选择的高光谱图像分类 . 中国图象图形学报 , 2019 . 24 ( 1 ): 135 - 148 .
S FANG , F J ZHU , Z Y DONG , 等 . Sample optimized selection of hyperspectral image classification . Journal of Image and Graphics , 2019 . 24 ( 1 ): 135 - 148 .
冉 琼 , 于 浩洋 , 高 连如 , 等 . 结合超像元和子空间投影支持向量机的高光谱图像分类 . 中国图象图形学报 , 2018 . 23 ( 1 ): 95 - 105 .
Q RAN , H Y YU , LI R GAO , 等 . Superpixel and subspace projection-based support vector machines for hyperspectral image classification . Journal of Image and Graphics , 2018 . 23 ( 1 ): 95 - 105 .
K WU , X X FENG , H G XU , 等 . A novel endmember extraction method using sparse component analysis for hyperspectral remote sensing imagery . IEEE Access , 2018 . 6 75206 - 75215 . DOI: 10.1109/ACCESS.2018.2882187 http://doi.org/10.1109/ACCESS.2018.2882187 .
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