Fusion and Grouping Strategies in Deep Learning for Local Climate Zone Classification of Multimodal Remote Sensing Data
Ancymol Thomas, Jaya Sreevalsan-Nair

TL;DR
This paper evaluates various data fusion and grouping strategies in deep learning models for classifying Local Climate Zones using multimodal remote sensing data, demonstrating improved accuracy with hybrid fusion and grouping techniques.
Contribution
It provides a comprehensive analysis of fusion mechanisms and grouping strategies in deep learning architectures for multimodal LCZ classification, highlighting the most effective approaches.
Findings
FM1 hybrid fusion outperforms simple methods
Fusion with band grouping and label merging yields highest accuracy
Strategies improve prediction for underrepresented classes
Abstract
Local Climate Zones (LCZs) give a zoning map to study urban structures and land use and analyze the impact of urbanization on local climate. Multimodal remote sensing enables LCZ classification, for which data fusion is significant for improving accuracy owing to the data complexity. However, there is a gap in a comprehensive analysis of the fusion mechanisms used in their deep learning (DL) classifier architectures. This study analyzes different fusion strategies in the multi-class LCZ classification models for multimodal data and grouping strategies based on inherent data characteristics. The different models involving Convolutional Neural Networks (CNNs) include: (i) baseline hybrid fusion (FM1), (ii) with self- and cross-attention mechanisms (FM2), (iii) with the multi-scale Gaussian filtered images (FM3), and (iv) weighted decision-level fusion (FM4). Ablation experiments are…
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Taxonomy
TopicsRemote-Sensing Image Classification · Urban Heat Island Mitigation · Remote Sensing in Agriculture
