TY - JOUR
T1 - What Helps to Detect What? Explainable AI and Multisensor Fusion for Semantic Segmentation of Simultaneous Crop and Land Cover Land Use Delineation
AU - Ebrahimi, Saman
AU - Kumar, Saurav
N1 - Publisher Copyright:
© 2008-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - This study introduces two novel explainable AI frameworks, Interclass-Grad-CAM and Spectral-Grad-CAM, designed to enhance the interpretability of semantic segmentation models for Crop and Land Cover Land Use (CLCLU) mapping. Interclass-Grad-CAM provides insights into interactions between land cover classes, revealing complex spatial arrangements, while Spectral-Grad-CAM quantifies the contributions of individual spectral bands to model predictions, optimizing spectral data use. These XAI methods significantly advance understanding of model behavior, particularly in heterogeneous landscapes, and ensure enhanced transparency in CLCLU mapping. To demonstrate the effectiveness of these innovations, we developed a framework that addresses data asymmetry between the United States and Mexico in the transboundary Middle Rio Grande region. Our approach integrates pixel-level multisensor fusion, combining dual-month moderate-resolution optical imagery (July and December 2023), synthetic aperture radar (SAR), and digital elevation model (DEM) data, processed using a Multi-Attention Network with a modified Mix Vision Transformer encoder to process multiple spectral inputs. Results indicate a uniform improvement in class-specific Intersection over Union by approximately 1% with multisensor integration compared to optical imagery alone. Optical bands proved most effective for crop classification, while SAR and DEM data enhanced predictions for nonagricultural types. This framework not only improves CLCLU mapping accuracy, but also offers a robust tool for broader environmental monitoring and resource management applications.
AB - This study introduces two novel explainable AI frameworks, Interclass-Grad-CAM and Spectral-Grad-CAM, designed to enhance the interpretability of semantic segmentation models for Crop and Land Cover Land Use (CLCLU) mapping. Interclass-Grad-CAM provides insights into interactions between land cover classes, revealing complex spatial arrangements, while Spectral-Grad-CAM quantifies the contributions of individual spectral bands to model predictions, optimizing spectral data use. These XAI methods significantly advance understanding of model behavior, particularly in heterogeneous landscapes, and ensure enhanced transparency in CLCLU mapping. To demonstrate the effectiveness of these innovations, we developed a framework that addresses data asymmetry between the United States and Mexico in the transboundary Middle Rio Grande region. Our approach integrates pixel-level multisensor fusion, combining dual-month moderate-resolution optical imagery (July and December 2023), synthetic aperture radar (SAR), and digital elevation model (DEM) data, processed using a Multi-Attention Network with a modified Mix Vision Transformer encoder to process multiple spectral inputs. Results indicate a uniform improvement in class-specific Intersection over Union by approximately 1% with multisensor integration compared to optical imagery alone. Optical bands proved most effective for crop classification, while SAR and DEM data enhanced predictions for nonagricultural types. This framework not only improves CLCLU mapping accuracy, but also offers a robust tool for broader environmental monitoring and resource management applications.
KW - Deep learning
KW - image/signal analysis (e.g., classification, segmentation, object detection)
KW - optical data
KW - others
KW - urban
KW - vegetation
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U2 - 10.1109/JSTARS.2025.3532829
DO - 10.1109/JSTARS.2025.3532829
M3 - Article
AN - SCOPUS:85216110390
SN - 1939-1404
VL - 18
SP - 5423
EP - 5444
JO - IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
JF - IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
ER -