Int J Performability Eng ›› 2025, Vol. 21 ›› Issue (10): 549-558.doi: 10.23940/ijpe.25.10.p2.549558

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Edge-Aware Possibilistic Clustering with Uncertainty-Weighted Ensemble Learning for Land Cover Mapping

Swati Vishnoi* and Meenakshi Pareek   

  1. Department of Computer Science, Banasthali Vidyapith, Rajasthan, India
  • Submitted on ; Revised on ; Accepted on
  • Contact: * E-mail address: pgphb23092_swati@banasthali.in

Abstract: Geographical areas are rapidly changing due to urban development and global change, which are creating difficulties in land cover classification affected by mixed pixels, noise, and spectral variability. To overcome this challenge, this study proposed a novel hybrid classification model that integrates Possibilistic C-Mean (PCM) clustering with learnable spatial filters and uncertainty aware ensemble learning to enhance the classification performance on remote sensing data. PCM is a soft classification method that is known for its robustness and outliers. For generation of land cover maps, PCM is used as a base classifier, and these generated soft classification maps are refined using learnable Gaussian (LGF) and learnable bilateral filters (LBF) whose parameters are optimized using Bayesian optimization to preserve edges and enhance spatial coherence. For improvement in accuracy, we added uncertainty weighted random forest (UW-RF) and uncertainty weighted XGBoost (UW-XGB) classifiers that incorporate pixel-wise uncertainty derived from the previous steps to weight the parameter's influence of each sample during training, where uncertainty is measured using Shannon entropy. The proposed hybrid models PCM+LGF+UW-RF, PCM+LGF+UW-XGB, PCM+LBF+UW-RF, PCM+LBF+UW-XGB are introduced and examined using Landsat 8 images of the Nainital region in India. Experimental results show the improvements in overall accuracy with 97.23% and kappa coefficient of 0.965 while compared to traditional methods. This study highlights the effectiveness of hybridizing the soft classification, adaptive spatial filtering and uncertainty modelling for robust land cover mapping in complex terrains.

Key words: Bayesian optimization, PCM, Shannon entropy, uncertainty, learnable spatial filters