Abstract

This paper develops a novel classification optimization approach integrating class adaptive Markov Random Field (MRF) and fuzzy local information (CAMRF-FLI) for high spatial resolution multispectral imagery (HSRMI). Firstly, the raw classification results, including initial fuzzy memberships and class labels of every pixel, are achieved by a pixel-wise classification method for a given image. Secondly, the class adaptive MRF-based data energy function is developed to integrate class spatial dependency information. Thirdly, a novel spatial energy function integrating fuzzy local information is constructed. Finally, based on the total of data and spatial energies, the raw classification map is regularized by a global minimization of the energy function using its iterated conditional modes (ICM). The effectiveness of CAMRF-FLI is performed by two data sets. The results indicate it can refine the classification map in homogeneous areas, meanwhile, reduce most of the edge blurring artifact, and improve the classification accuracy compared with some conventional approaches.

Highlights

  • A Novel Classification Optimization ApproachYuejin Zhou 1, * , Hua Zhang 2 , Xiaoding Xu 1 , Mingpeng Li 1 , Lihui Zheng 1 and Yakun Zhu 1

  • Land cover information extracting from high spatial resolution multispectral imagery (HSRMI), such as WorldView, QuickBird, IKONOS image, etc., is an important remote sensing application.HSRMI can provide more detailed ground cover information

  • Considering the class spatial dependency information, by introducing the local similarity measurement described in Equation (8), in the CAMRF-FLI method, the spatial energy term is defined as Uspatial ( xi ) = − ln( ∑ uk ( x j ) × wij (k))

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Summary

A Novel Classification Optimization Approach

Yuejin Zhou 1, * , Hua Zhang 2 , Xiaoding Xu 1 , Mingpeng Li 1 , Lihui Zheng 1 and Yakun Zhu 1. State Key Laboratory for Geomechanics & Deep Underground Engineering, China University of Mining &. Received: August 2018; Accepted: September 2018; Published: 1 October 2018

Introduction
Methodology
Class Adaptive MRF
A Novel Local Similarity Measure
Proposed Method
Results and Discussion
Experiment on Data Set 1
Experiment
Conclusions
Full Text
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