Efficient Dimensionality Reduction using Principal Component Analysis for Image Change Detection

Authors

Keywords:

Binary maps, Change detection, Image analysis, Principal Component Analysis (PCA), Remote Sensing, SPOT images

Abstract

Change detection in image processing is the process of identifying differences by comparing images taken at different times. There are several digital change detection techniques; nevertheless, there is no universally optimal change detection methodology: the choice is dependent upon the application. Change detection methods based on multispectral space transformations like Principal Component Analysis (PCA) show good solutions for remote sensing applications. One advantage of PCA is in reducing data redundancy between bands and emphasizing different information in derived components. This work focus on the PCA exploitation for the SPOT multispectral image change detection. Thresholds are applied to the transformed image (PC2) to isolate the pixels that have changed. Thresholding methods require a decision as to where to place threshold boundaries in order to separate areas of change from those of no change. The  accuracy  of  change detection maps that are derived with SPOT data is represented in terms of producer’s accuracy, user’s  accuracy,  and  overall  accuracy,  which  are calculated  from  an  error  matrix  (or  confusion  matrix).The obtained results have demonstrated solving efficiently the change detection problem.

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Author Biography

Estibaliz Martinez-Izquierdo

I am PhD in Chemical Sciences  from the Complutense University of Madrid, Spain. I am currently a Full Professor at the University of the Department of Architecture and Technology of Computer Systems of the Higher School of Computer Engineers of the Polytechnic University of Madrid (Spain). My teaching includes courses in Digital Design, Nanotechnology, Remote Sensing and Image Processing. My research interests are related to the Image Processing in Remote Sensing, including the use of neural networks, genetic algorithms, fuzzy logic for the analysis and interpretation of satellite images.

I have published more than 90 papers in journals and scientific meetings in this field of research.

Published

2019-11-02

How to Cite

Martinez-Izquierdo, E. (2019). Efficient Dimensionality Reduction using Principal Component Analysis for Image Change Detection. IEEE Latin America Transactions, 17(4), 540–547. Retrieved from https://latamt.ieeer9.org/index.php/transactions/article/view/1442