Gandhimathi Alias Usha Subramanian, Kavitha Kaliappan
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Enhancing Change Detection Accuracy in Remote Sensing Images Through Feature Optimization and Game Theory Classifier
Satellite-based change detection involves comparing multi-temporal images to identify modifications in land cover features. This work investigates the application of a game theory classifier to enhance accuracy in medium-resolution multispectral remote sensing images. The proposed post-classification approach includes segmentation, feature extraction, classification, and image differencing to detect changes in multi-temporal images. To optimize multispectral images, land cover types are segmented using a proximal splitting algorithm. Boundary and texture features are then extracted using the Difference of Offset Gaussian Filter and Gray Level Co-occurrence Matrix. Principal Component Analysis is subsequently applied to reduce the dimensionality of the extracted features. Finally, the reduced features are classified using a game theory classifier, which effectively handles the uncertainty and variability inherent in non-smooth multispectral data. Experiments were conducted using Landsat datasets from the Hanoi and Balcoc regions, evaluating parameters such as misclassification rate, mean square error, color peak signal-to-noise ratio, and validity index. Quantitative analysis showed that the proposed approach achieved misclassification rates of 0.10 and 0.11 for dataset 1 and 2, respectively. Qualitatively, the results underscore the effectiveness of the extracted features in aiding the game theory classifier to discern subtle differences among feature classes.
期刊介绍:
The aims and scope of the Journal of the Indian Society of Remote Sensing are to help towards advancement, dissemination and application of the knowledge of Remote Sensing technology, which is deemed to include photo interpretation, photogrammetry, aerial photography, image processing, and other related technologies in the field of survey, planning and management of natural resources and other areas of application where the technology is considered to be appropriate, to promote interaction among all persons, bodies, institutions (private and/or state-owned) and industries interested in achieving advancement, dissemination and application of the technology, to encourage and undertake research in remote sensing and related technologies and to undertake and execute all acts which shall promote all or any of the aims and objectives of the Indian Society of Remote Sensing.