陈杰

教授

入职时间:2011-10-28

所在单位:地球科学与信息物理学院

学历:博士研究生毕业

性别:男

学位:博士学位

在职信息:在职

毕业院校:中南大学

学科:测绘科学与技术

   
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Chen J, Deng M, Mei X, et al. Optimal segmentation of a high-resolution remote-sensing image guided by area and boundary[J]. International Journal of Remote Sensing, 2014, 35(19): 6914-6939.[DOI:10.1080/01431161.2014.960617]

发布时间:2021-06-18

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摘要:Image segmentation is the premise of object-based image analysis (OBIA), and obtaining an optimal segmentation result has been a desire for many researchers. This article proposes an optimal segmentation method for a high-resolution remote-sensing image that is guided by spatial features of area and boundary. This method achieves an optimal result through stepwise refinement on multi-scale segmentations. First, boundary strength is integrated into the choice for the optimal scale based on an improved unsupervised evaluation. Then, under-segmented objects (USOs) and over-segmented objects (OSOs) at the selected optimal scale are identified using a heterogeneity histogram and a slider-like threshold with the guidance of area and boundary. Finally, the corresponding objects, in a specific finer segmentation, are taken to replace the USOs at the optimal scale, and then the USOs and OSOs are refined by an effective merging mechanism. A heterogeneity-change-based merging criterion considering boundary, shape, spectral, and texture features is constructed for the merging of neighbouring objects. The proposed method is more effective than the unsupervised image segmentation evaluation and refinement (UISER) method as it uses spatial features to guide optimal choice of scale, and USO and OSO identification and refinement. Comparative experiments show that the spatial features used in the proposed method are effective for achieving an enhanced segmentation result.

论文类型:期刊论文

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收录刊物:SCI

上一条: 刘纯, 洪亮, 陈杰,等. 融合像素—多尺度区域特征的高分辨率遥感影像分类算法[J]. 遥感学报, 2015, 19(2).[DOI:10.11834/jrs.20154035]

下一条: Liu C, Hong L, Chu S, et al. A SVM ensemble approach combining pixel-based and object-based features for the classification of high resolution remotely sensed imagery[C]//2014 Third International Workshop on Earth Observation and Remote Sensing Applications (EORSA). IEEE, 2014: 140-144.