Detecting Changes Between Optical Images of Different Spatial and Spectral Resolutions: A Fusion-Based Approach

Change detection (CD) is one of the most challenging issues when analyzing remotely sensed images. Comparing several multidate images acquired through the same kind of sensor is the most common scenario. Conversely, designing robust, flexible, and scalable algorithms for CD becomes even more challen...

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Veröffentlicht in:IEEE transactions on geoscience and remote sensing 2018-03, Vol.56 (3), p.1566-1578
Hauptverfasser: Ferraris, Vinicius, Dobigeon, Nicolas, Wei, Qi, Chabert, Marie
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container_title IEEE transactions on geoscience and remote sensing
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creator Ferraris, Vinicius
Dobigeon, Nicolas
Wei, Qi
Chabert, Marie
description Change detection (CD) is one of the most challenging issues when analyzing remotely sensed images. Comparing several multidate images acquired through the same kind of sensor is the most common scenario. Conversely, designing robust, flexible, and scalable algorithms for CD becomes even more challenging when the images have been acquired by two different kinds of sensors. This situation arises in the case of emergency under critical constraints. This paper presents, to the best of our knowledge, the first strategy to deal with optical images characterized by dissimilar spatial and spectral resolutions. Typical considered scenarios include CD between panchromatic, multispectral, and hyperspectral images. The proposed strategy consists of a three-step procedure: 1) inferring a high spatial and spectral resolution image by fusion of the two observed images characterized one by a low spatial resolution and the other by a low spectral resolution; 2) predicting two images with, respectively, the same spatial and spectral resolutions as the observed images by the degradation of the fused one; and 3) implementing a decision rule to each pair of observed and predicted images characterized by the same spatial and spectral resolutions to identify changes. To quantitatively assess the performance of the method, an experimental protocol is specifically designed, relying on synthetic yet physically plausible change rules applied to real images. The accuracy of the proposed framework is finally illustrated on real images.
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Comparing several multidate images acquired through the same kind of sensor is the most common scenario. Conversely, designing robust, flexible, and scalable algorithms for CD becomes even more challenging when the images have been acquired by two different kinds of sensors. This situation arises in the case of emergency under critical constraints. This paper presents, to the best of our knowledge, the first strategy to deal with optical images characterized by dissimilar spatial and spectral resolutions. Typical considered scenarios include CD between panchromatic, multispectral, and hyperspectral images. The proposed strategy consists of a three-step procedure: 1) inferring a high spatial and spectral resolution image by fusion of the two observed images characterized one by a low spatial resolution and the other by a low spectral resolution; 2) predicting two images with, respectively, the same spatial and spectral resolutions as the observed images by the degradation of the fused one; and 3) implementing a decision rule to each pair of observed and predicted images characterized by the same spatial and spectral resolutions to identify changes. To quantitatively assess the performance of the method, an experimental protocol is specifically designed, relying on synthetic yet physically plausible change rules applied to real images. 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subjects Change detection
Change detection (CD)
Computer Science
Detection
different resolution
Frameworks
hyperspectral (HS) imagery
Hyperspectral imaging
Image acquisition
Image detection
image fusion
Image sensors
multispectral (MS) imagery
Optical imaging
Optical sensors
Performance assessment
Remote sensing
Resolution
Sensor phenomena and characterization
Signal and Image Processing
Spatial discrimination
Spatial resolution
Spectra
Spectral resolution
title Detecting Changes Between Optical Images of Different Spatial and Spectral Resolutions: A Fusion-Based Approach
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