Abstract

The urban green cover in high-spatial resolution (HR) remote sensing images have obvious multiscale characteristics, it is thus not possible to properly segment all features using a single segmentation scale because over-segmentation or under-segmentation often occurs. In this study, an unsupervised cross-scale optimization method specifically for urban green cover segmentation is proposed. A global optimal segmentation is first selected from multiscale segmentation results by using an optimization indicator. The regions in the global optimal segmentation are then isolated into under- and fine-segmentation parts. The under-segmentation regions are further locally refined by using the same indicator as that in global optimization. Finally, the fine-segmentation part and the refined under-segmentation part are combined to obtain the final cross-scale optimized result. The green cover objects can be segmented at their specific optimal segmentation scales in the optimized segmentation result to reduce both under- and over-segmentation errors. Experimental results on two test HR datasets verify the effectiveness of the proposed method.

Highlights

  • Urban green cover can be defined as the layer of leaves, branches, and stems of trees and shrubs and the leaves of grasses that cover the urban ground when viewed from above [1]

  • The contribution of this study is to propose a new cross-scale optimization method for urban green cover to achieve the optimal segmentation scale for each green cover object

  • The global optimal segmentation result is first selected from the hierarchical multiscale segmentation results by using the optimization indicator global LP

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Summary

Introduction

Urban green cover can be defined as the layer of leaves, branches, and stems of trees and shrubs and the leaves of grasses that cover the urban ground when viewed from above [1]. (2) For the supervised indicator, multiscale segmentation optimization has been achieved by using the single-scale evaluation measure based on different sets of reference objects [28]. An unsupervised cross-scale optimization method for urban green cover segmentation is proposed. To find the scale in which the green cover segments are closest to the real objects, we propose indicator CR to represent the change rate of SD and indicator LP to represent the local peak of CR. They are defined respectively as below: CR. The step is to optimize the under-segmentation part of the global optimal segmentation result for green cover objects

Isolating Under-Segmented Regions
Refining Under-Segmented Regions
Accuracy Assessment
Conclusions

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