会议专题

Segmentation of High Resolution Remote Sensing Image Based on Hierarchically Multiscale Object-oriented Markov Random Fields Model

A new segmentation method is proposed for high resolution remote sensing image. In the high-resolution remote sensing image, there is mass of data to be processed, and land objects exhibits strongly hierarchical and multiscale characters. In order to overcome the disadvantages of pixel-based hierarchical MRF model directly used on high-resolution remote sensed images, a hierarchically multiscale object-oriented MRF model (HMSOMRF) is proposed for image segmentation. The proposed method is made up of two blocks: (1)Mean-Shift algorithm is employed to obtain multiscale segmentation results, which can form the hierarchical structure according to the correspondence of different objects in different scale, and the hierarchically multiscale object adjacent tree (HMOAT) can be easily defined. (2)the calculation of the spectral, textural, and shape features of each node, the hierarchical MRF model can be easily defined on the HMOAT for the segmentation of highresolution remote sensed images. Finally, two high-resolution remote sensed image data sets, GeoEye and IKONOS, are used to testify the performance of MFOMRF. And the experimental results have shown the superiority of this method to the pixelbased hierarchical MRF segmentation method both on the effectively and accuracy, which implies it is suitable for the segmentation of high-resolution remote sensed images.

High resolution remote sensing image Markov random field Mean-Shift hierarchically multiscale object-oriented MRF model

Liang Hong Zhaozhong Gao Xianchun Pan Kun Yang

College of Tourism and Geography Science, Yunnam Normal University Kunming 650500,China Guangdong College of Industry and Commerce Guangzhou 510510,China

国际会议

2011 IEEE International Conference on Spatial Data Mining and Geographical Knowledge Services(第一届空间数据挖掘与地理知识服务国际学术会议 ICSDM 2011)

福州

英文

343-347

2011-06-29(万方平台首次上网日期,不代表论文的发表时间)