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面向对象的多尺度加权联合稀疏表示的高空间分辨率遥感影像分类
引用本文:洪亮,冯亚飞,彭双云,楚森森.面向对象的多尺度加权联合稀疏表示的高空间分辨率遥感影像分类[J].测绘学报,2022,51(2):224-237.
作者姓名:洪亮  冯亚飞  彭双云  楚森森
作者单位:1. 云南师范大学地理学部, 云南 昆明 650500;2. 西部资源环境地理信息技术教育部工程研究中心, 云南 昆明 650500;3. 云南省地理空间信息技术工程技术研究中心, 云南 昆明 650500;4. 昆明市信息中心, 云南 昆明 650506;5. 南京大学地理信息科学系, 江苏 南京 210023
基金项目:国家自然科学基金(41861048;41971369);;云南省中青年学术技术带头人后备人才项目(202105AC160059);
摘    要:针对高空间分辨率遥感影像中的地物具有多尺度特性,以及各个尺度的对象特征对地物分类精度的影响具有较强的尺度效性,并结合面向对象影像分析方法和多尺度联合稀疏表示方法在高空间分辨率遥感影像分类中的各自优点,提出了一种面向对象的多尺度加权稀疏表示的高空间分辨率遥感影像分类算法。首先,采用多尺度分割算法获得多尺度分割结果并提取对象的多尺度特征;然后,根据影像对象的多尺度分割质量测度计算各尺度的对象权重,构建面向对象的多尺度加权联合稀疏表示模型;最后,采用2个国产GF-2高空间分辨率遥感数据集和1个高光谱-高空间分辨率航空遥感数据集(WashingtonD.C.数据)验证该算法的有效性。试验结果表明,与SVM、像素级稀疏表示、单尺度和多尺度对象级稀疏表示和深度学习等算法相比较,本文算法获得了较高的OA和Kappa分类精度,提高了各个尺度地物的分类精度,有效抑止了地物分类结果中的椒盐噪声现象,同时保持大尺度地物的区域性和小尺度地物的细节信息。

关 键 词:高空间分辨率遥感影像  面向对象  多尺度分割  对象莫兰指数  加权联合稀疏表示  
收稿时间:2019-08-02
修稿时间:2021-09-30

Classification of high spatial resolution remote sensing imagery based on object-oriented multi-scale weighted sparse representation
HONG Liang,FENG Yafei,PENG Shuangyun,CHU Sensen.Classification of high spatial resolution remote sensing imagery based on object-oriented multi-scale weighted sparse representation[J].Acta Geodaetica et Cartographica Sinica,2022,51(2):224-237.
Authors:HONG Liang  FENG Yafei  PENG Shuangyun  CHU Sensen
Institution:1. Faculty of Geography, Yunnan Normal University, Kunming 650500, China;2. GIS Technology Research Center of Resource and Environment in Western China of Ministry of Education, Yunnan Normal University, Kunming 650500, China;3. Center for Geospatial Information Engineering and Technology of Yunnan Province, Kunming 650500, China;4. Kunming Information Center, Kunming 650506, China;5. Department of Geographic information Science, Nanjing University, Nanjing 210023, China
Abstract:In this paper,according to the multi-scale advantage for high spatial resolution remote sensing imagery and the influence difference among multi-scale objects for classification,the objected-oriented multi-scale weighted sparse representation classification algorithm is proposed by taking the advantages of object-based image analysis method and sparse representation classification algorithm.Firstly,the multi-scale segmentation results are obtained and the multi-scale features are extracted by the multi-scale segmentation algorithm;secondly,the object weights in each scale are computed according to multi-scale segmentation quality measure,and the objected-oriented multi-scale weighted sparse representation model is constructed;finally,the two domestic GF-2 high spatial resolution remote sensing images and one high-spatial and spectral resolution dataset(Washington D.C.data)were adopted to verify the proposed algorithm.The experiment results show that the proposed algorithm can obtain the highest classification accuracy with OA and Kappa,efficiently improve classification accuracy at each scale objects,reduce salt and pepper noise in the classification results,and respectively maintain the regional integrity in the large scale objects and the details in the small scale objects comparing with the traditional SVM,pixel sparse representation,single scale and multi-scale sparse representation and object-based deep learning methods.
Keywords:high spatial resolution remote sensing imagery  object-oriented  multi-scale segmentation  object-based Local Moran's I  weighted joined sparse representation
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