Deep Learning and Machine Learning Approaches for Satellite-Based Environmental Monitoring: A Comprehensive Survey
Abstract
The proliferation of satellite imagery and environmental monitoring systems has generated unprecedented volumes
of geospatial data, necessitating advanced computational methods for effective analysis and interpretation. This comprehensive review examines recent developments in machine learning techniques applied to satellite image analysis, with particular emphasis
on three critical domains: deep learning approaches for cloud detection and segmentation, spatial clustering methodologies for
geospatial data analysis, and time series forecasting models for environmental prediction. Through systematic analysis of twelve
recent research contributions, this paper identifies key technologicaladvances, methodological innovations, and emerging
trends in each domain. Deep learning segmentation approaches, particularly U-Net variants enhanced with attention mechanisms
and ensemble methods, demonstrate superior performance in cloud detection tasks with accuracy rates exceeding 95%. Spatial
clustering techniques incorporating DBSCAN algorithms and hierarchical mixture models show significant improvements in
urban delineation and environmental pattern recognition. Time series forecasting models, especially transformer-based architectures
and fuzzy-enhanced LSTM networks, achieve remarkable accuracy in long-term environmental prediction with reduced
computational overhead. The integration of these methodologies presents substantial opportunities for advancing automated environmental monitoring, climate research, and disaster management systems.
Keywords:
Deep learning, satellite imagery, time series forecasting, environmental monitoring, U-Net, transformer modelsPublished
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