Abstract

Traditionally, image registration of multi-modal and multi-temporal images is performed satisfactorily before land cover mapping. However, since multi-modal and multi-temporal images are likely to be obtained from different satellite platforms and/or acquired at different times, perfect alignment is very difficult to achieve. As a result, a proper land cover mapping algorithm must be able to correct registration errors as well as perform an accurate classification. In this paper, we propose a joint classification and registration technique based on a Markov random field (MRF) model to simultaneously align two or more images and obtain a land cover map (LCM) of the scene. The expectation maximization (EM) algorithm is employed to solve the joint image classification and registration problem by iteratively estimating the map parameters and approximate posterior probabilities. Then, the maximum a posteriori (MAP) criterion is used to produce an optimum land cover map. We conducted experiments on a set of four simulated images and one pair of remotely sensed images to investigate the effectiveness and robustness of the proposed algorithm. Our results show that, with proper selection of a critical MRF parameter, the resulting LCMs derived from an unregistered image pair can achieve an accuracy that is as high as when images are perfectly aligned. Furthermore, the registration error can be greatly reduced.

Highlights

  • Sensed images captured from satellites have been widely used for land cover mapping applications because of their capability to allow classification of different land cover types without having to physically assess the area of interest

  • The classifier based on the maximum a posteriori (MAP) criteria selects the most likely land cover map (LCM) given the observed data and the map parameters since the resulting probability of error is minimum among all other classifiers [30,31]

  • We propose a joint image registration and land cover mapping algorithm based on a Markov random field model

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Summary

Introduction

Sensed images captured from satellites have been widely used for land cover mapping applications because of their capability to allow classification of different land cover types without having to physically assess the area of interest. The multi-resolution graph-cut approach was employed in order to achieve sub-pixel registration accuracy Their results produced remarkable performance for the elastic image registration, this algorithm is not suitable for other type of image registration problems where one set of the registration parameters govern the remapping process of an entire image. For a given iteration of the EM algorithm, our method computes the expected value of the logarithm of the probability of the observed images and land cover map given the map parameters, based on the a posteriori probability of the LCM given observed remote sensing images and the current estimated map parameters.

Problem Statement
Optimum Image Registration and Land Cover Mapping Criteria
Optimum Image Registration
Optimum Land Cover Map
Joint Image Registration and Land Cover Mapping Algorithm
Experiments
Experiment 1
Experiment 2
Conclusion
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