TY - JOUR
T1 - SAM-Based Efficient Feature Integration Network for Remote Sensing Change Detection
T2 - A Case Study on Macao Sea Reclamation
AU - Huang, Junqing
AU - Bao, Junqi
AU - Xia, Min
AU - Yuan, Xiaochen
N1 - Publisher Copyright:
© 2008-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - Sea reclamation expands land resources along coastal areas and supports sustainable urban growth. Sea reclamation monitoring is a significant application of remote sensing change detection (RSCD). Segment anything model (SAM) supports zero-shot image segmentation, but lacks general features of remote sensing images (RSIs), making it difficult to directly apply to RSCD. To utilize the visual recognition capabilities of SAM for improving RSCD, we propose an SAM-based efficient feature integration network (EFI-SAM). Random fourier features adaptor (RFFA) is utilized to enhance Mobile SAM’s capability for extracting general features from complex RSIs, resulting in adaptive Mobile SAM, which serves as the feature extractor of EFI-SAM. To effectively integrate remote sensing difference features, long-range spatial features integration module (LSFI) is designed to fuse the long-range spatial correlation of bi-temporal semantic features. Cross-dimensional contextual information aggregation decoder (CCIA) is then designed to effectively aggregate the multidimensional change information. Furthermore, we collected Macao RSIs through GEE to create a dataset, named Macao Land Change Detection (MLCD) dataset, which contains 10 000 images of size 256×256. Experiments indicate that EFI-SAM achieves the highest metrics, with F1 of 80.75%, 75.86%, 82.86%, and 64.74% in MLCD, CLCD, SYSU-CD, and S2Looking, respectively. In addition to its high accuracy, it is noteworthy that EFI-SAM is a lightweight network with only 5.83 M parameter.
AB - Sea reclamation expands land resources along coastal areas and supports sustainable urban growth. Sea reclamation monitoring is a significant application of remote sensing change detection (RSCD). Segment anything model (SAM) supports zero-shot image segmentation, but lacks general features of remote sensing images (RSIs), making it difficult to directly apply to RSCD. To utilize the visual recognition capabilities of SAM for improving RSCD, we propose an SAM-based efficient feature integration network (EFI-SAM). Random fourier features adaptor (RFFA) is utilized to enhance Mobile SAM’s capability for extracting general features from complex RSIs, resulting in adaptive Mobile SAM, which serves as the feature extractor of EFI-SAM. To effectively integrate remote sensing difference features, long-range spatial features integration module (LSFI) is designed to fuse the long-range spatial correlation of bi-temporal semantic features. Cross-dimensional contextual information aggregation decoder (CCIA) is then designed to effectively aggregate the multidimensional change information. Furthermore, we collected Macao RSIs through GEE to create a dataset, named Macao Land Change Detection (MLCD) dataset, which contains 10 000 images of size 256×256. Experiments indicate that EFI-SAM achieves the highest metrics, with F1 of 80.75%, 75.86%, 82.86%, and 64.74% in MLCD, CLCD, SYSU-CD, and S2Looking, respectively. In addition to its high accuracy, it is noteworthy that EFI-SAM is a lightweight network with only 5.83 M parameter.
KW - Random Fourier features
KW - remote sensing change detection (RSCD)
KW - sea reclamation
KW - segment anything model (SAM)
UR - https://www.scopus.com/pages/publications/105009748260
U2 - 10.1109/JSTARS.2025.3584145
DO - 10.1109/JSTARS.2025.3584145
M3 - Article
AN - SCOPUS:105009748260
SN - 1939-1404
VL - 18
SP - 16916
EP - 16928
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 -