Abstract

Region merging is the most effective method for the segmentation of remote sensing data. The quality and the size of the resulted image objects is controlled by a global heterogeneity threshold, termed as the scale parameter. However, the multidimensional nature of the visible features in a scene defies the use of an even optimum single global scale parameter. In this study, a novel region merging segmentation method is proposed, where a local scale parameter is defined for each image object by its internal and external heterogeneity measures (i.e., local variance and Moran’s I). This method allows image objects with low internal and external heterogeneity to be further merged with higher scale parameter values, since they are more likely to be a part of an adjacent object, than objects with high internal and external heterogeneity. The proposed method was applied in spectral and elevation data and its results were evaluated visually and with supervised and unsupervised evaluation methods. The comparison with multi-resolution segmentation (MRS) showed that the proposed region merging method can produce improved segmentation results in terms of maximizing intra-object homogeneity and inter-object heterogeneity as well as in the delimitation of specific target objects, present in spectral and elevation data. The unsupervised evaluation results of the (1) Côte d’Azur, (2) Manchester, and (3) Szada images from the SZTAKI-INRIA building detection dataset showed that the proposed method (overall goodness, OGf (1): 0.7375, (2): 0.7923, (3): 0.7967) performs better than MRS (OGf (1): 0.7224, (2): 0.7648, (3): 0.7823). The higher values of OGf indicate their ability to produce segmentation results with reduced over-segmentation effects and without the need of presegmented input data, in contrast to the objective heterogeneity and relative homogeneity (OHRH) hybrid segmentation method (OGf (1): 0.5864, (2): 0.5151, (3): 0.6983).

Highlights

  • Object-based image analysis (OBIA) has been gaining prominence as an alternative solution to traditional pixel-based methods

  • This method allows image objects with low internal and external heterogeneity to be further merged with higher scale parameter values, since they are more likely to be a part of an adjacent object, than objects with high internal and external heterogeneity

  • This study describes a novel region merging method that employs local scale parameter (SP) values defined by both the internal and external heterogeneity of each object

Read more

Summary

Introduction

Object-based image analysis (OBIA) has been gaining prominence as an alternative solution to traditional pixel-based methods. Blaschke et al [1] confirmed that OBIA is the new paradigm shift in the analysis of high spatial resolution remote sensing images. They discussed the limitations of pixel-based methods and defined the core concepts and advantages of OBIA. The basic processing units of OBIA are spatially continuous, disjoint, and homogeneous (in one or more dimensions of a feature space) regions, called segments or image objects. The use of image objects as the basic analysis unit can improve the classification of remote sensing data by incorporating semantics (i.e., integration of expert knowledge) and hierarchical networks. The ability of OBIA to reduce the spectral variance within image objects can moderate the ‘salt and pepper’ noise compared with pixel-based methods and produce more visually consistent results [1]

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.