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Hyperspectral remote sensing image retrieval based on spectral similarity measure

机译:基于光谱相似度量的高光谱遥感图像检索

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Spectral similarity measure plays important roles in hyperspectral Remote Sensing (RS) information processing, and it can be used to content-based hyperspectral RSimage retrieval effectively too. The applications of spectral features to Remote Sensing (RS) image retrieval are discussed by taking hyperspectral RS image as examples oriented to the demands of massive information management. It is proposed that spectral features-based image retrieval includes two modes: retrieval based on point template and facial template. Point template is used usually, for example, a spectral curve, or a pixel vector in hyperspectral RS image. One or more regions (or blocks with area shape) are given as examples in image retrieval based on facial template. The most important issues in image retrieval are spectral features extraction and spectral similarity measure. Spectral vector can be used to retrieval directly, and spectral angle and spectral information divergence (SID) are more effective than Euclidean distance and correlation coefficient in similarity measure and image retrieval. Both point and pure area template can be transformed into spectral vector and used to spectral similarity measure. In addition, the local maximum and minimum in reflection spectral curve, corresponding to reflection peak and absorption valley, can be used to retrieval also. The width, height, symmetry and power of each peak or valley can be used to encode spectral features. By comparison to three approaches for spectral absorption and reflection features matching and similarity measures, it is found that spectral absorption and reflection features are not very effective in hyperspectral RS image retrieval. Finally, a prototype system is designed, and it proves that the hyperspectral RS image retrieval based on spectral similarity measure proposed in this paper is effective and some similarity measure index including spectral angle, SID and encoding measure are suitable for image retrieval in practice.
机译:光谱相似度测量在高光谱遥感(RS)信息处理中起着重要角色,并且它也可以用来有效地用于基于内容的超光谱rsimage检索。通过将高光谱RS图像作为面向大规模信息管理所需的示例,讨论了频谱特征对遥感(RS)图像检索的应用。提出基于光谱特征的图像检索包括两种模式:基于点模板和面部模板检索。指向模板通常使用例如频谱曲线,或高光谱RS图像中的像素向量。基于面部模板,给出一个或多个区域(或带区域形状的块)作为图像检索中的示例给出。图像检索中最重要的问题是光谱特征提取和光谱相似度测量。光谱矢量可用于直接检索,并且光谱角和光谱信息发散(SID)比相似度测量和图像检索中的欧几里德距离和相关系数更有效。两点和纯区域模板都可以转换为光谱矢量并用于光谱相似度测量。另外,反射光谱曲线中的局部最大和最小值,对应于反射峰和吸收谷,也可用于检索。每个峰或谷的宽度,高度,对称性和功率可用于编码光谱特征。通过比较三种用于光谱吸收和反射特征匹配和相似性测量的方法,发现光谱吸收和反射特征在高光谱RS图像检索中不是非常有效的。最后,设计了一种原型系统,证明了基于本文提出的基于光谱相似度量的高光谱RS图像检索是有效的,并且一些相似度测量指数包括光谱角,SID和编码度量的索引适用于实践中的图像检索。

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