TASAM: Terrain-and-Aware Segment Anything Model for Temporal-Scale Remote Sensing Segmentation
By: Tianyang Wang , Xi Xiao , Gaofei Chen and more
Potential Business Impact:
Helps computers see changes in Earth from above.
Segment Anything Model (SAM) has demonstrated impressive zero-shot segmentation capabilities across natural image domains, but it struggles to generalize to the unique challenges of remote sensing data, such as complex terrain, multi-scale objects, and temporal dynamics. In this paper, we introduce TASAM, a terrain and temporally-aware extension of SAM designed specifically for high-resolution remote sensing image segmentation. TASAM integrates three lightweight yet effective modules: a terrain-aware adapter that injects elevation priors, a temporal prompt generator that captures land-cover changes over time, and a multi-scale fusion strategy that enhances fine-grained object delineation. Without retraining the SAM backbone, our approach achieves substantial performance gains across three remote sensing benchmarks-LoveDA, iSAID, and WHU-CD-outperforming both zero-shot SAM and task-specific models with minimal computational overhead. Our results highlight the value of domain-adaptive augmentation for foundation models and offer a scalable path toward more robust geospatial segmentation.
Similar Papers
SAM-aware Test-time Adaptation for Universal Medical Image Segmentation
CV and Pattern Recognition
Helps doctors see inside bodies better.
Zero-Shot Tree Detection and Segmentation from Aerial Forest Imagery
CV and Pattern Recognition
Finds every single tree from sky pictures.
SegEarth-OV3: Exploring SAM 3 for Open-Vocabulary Semantic Segmentation in Remote Sensing Images
CV and Pattern Recognition
Lets computers find any object in satellite pictures.