Abstract

Simulated data were used to investigate the relationships between image properties and change detection accuracy in a systematic manner. The image properties examined were class separability, radiometric normalization and image spectral band-to-band correlation. The change detection methods evaluated were post-classification comparison, direct classification of multidate imagery, image differencing, principal component analysis, and change vector analysis. The simulated data experiments showed that the relative accuracy of the change detection methods varied with changes in image properties, thus confirming the hypothesis that caution should be used in generalizing from studies that use only a single image pair. In most cases, direct classification and post-classification comparison were the least sensitive to changes in the image properties of class separability, radiometric normalization error and band correlation. Furthermore, these methods generally produced the highest accuracy, or were amongst those with a high accuracy. PCA accuracy was highly variable; the use of four principal components consistently resulted in substantial decreased classification accuracy relative to using six components, or classification using the original six bands. The accuracy of image differencing also varied greatly in the experiments. Of the three methods that require radiometric normalization, image differencing was the method most affected by radiometric error, relative to change vector and classification methods, for classes that have moderate and low separability. For classes that are highly separable, image differencing was relatively unaffected by radiometric normalization error. CVA was found to be the most accurate method for classes with low separability and all but the largest radiometric errors. CVA accuracy tended to be the least affected by changes in the degree of band correlation in situations where the class means were moderately dispersed, or clustered near the diagonal. For all change detection methods, the classification accuracy increased as simulated band correlation increased, and direct classification methods consistently had the highest accuracy, while PCA generally had the lowest accuracy.

Highlights

  • The monitoring and evaluation of environmental change is one of the major applications of remote sensing

  • It is our hypothesis that, because the different change detection methods involve different image processing methods, differences in the images used in the case studies may at least in part explain the apparently contradictory results regarding the relative merits of the different methods [2]

  • The first experiment was an analysis of the effect of spectral separability on change detection analysis accuracy, using images with four bands and four classes

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Summary

Introduction

The monitoring and evaluation of environmental change is one of the major applications of remote sensing. A large and growing literature has focused on change detection methods [1], resulting in a proliferation of proposed approaches. Despite this focus on change detection analysis, a consensus regarding the relative benefit of even the main change detection methods has not emerged. This is because many of the studies that have compared change detection methods have reached different conclusions. In this paper we seek to evaluate whether image properties affect the relative change detection classification accuracy for five commonly used change detection methods. We are able to test the different methods with great consistency over a wide range of image properties

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