DENG Fuliang, TANG Ping, LIU Yuan, et al. Automated hierarchical segmentation of high- resolution remote sensing imagery with introduced relaxation factors[J]. Journal of Remote Sensing, 2013, 17(6): 1492-1507. DOI: 10.11834/jrs.20133031.
This paper proposes a new automated hierarchical segmentation method with introduced relaxation factors for processing high-resolution remote sensing imagery
which aims to provide a theoretical framework in setting the scale parameters and r educing the influence of human factors.The first relaxation factor is used to adjust the heterogeneity between the image-objects to be merged
thus improving the speed of the entire segmentation by controlling the number of image-objects in each recursive m erging.With the mean of the heterogeneity between image-objects taken as the cardinality
the second relaxation factor is introduced to control the scaling parameter of the levels exported in the process of segmentation
automatically producing multi-scale hierarchical segmentation results.The experimental results show that this method produces segmentation with higher quality
which meets the accuracy requirements of further image analysis and geographic object extraction.Other theoretical and practical contributions of this method include reducing the influence of human factors and improving the level of automation in segmentation.F urther investigation is still required with respect to processing the boundaries of geographic objects with complex image
and i ncreasing the compactness and smoothness of image-objects.