Revisiting Near/Remote Sensing with Geospatial Attention
About
This work addresses the task of overhead image segmentation when auxiliary ground-level images are available. Recent work has shown that performing joint inference over these two modalities, often called near/remote sensing, can yield significant accuracy improvements. Extending this line of work, we introduce the concept of geospatial attention, a geometry-aware attention mechanism that explicitly considers the geospatial relationship between the pixels in a ground-level image and a geographic location. We propose an approach for computing geospatial attention that incorporates geometric features and the appearance of the overhead and ground-level imagery. We introduce a novel architecture for near/remote sensing that is based on geospatial attention and demonstrate its use for five segmentation tasks. The results demonstrate that our method significantly outperforms the previous state-of-the-art methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Land Use Estimation | Brooklyn | mIoU74.59 | 8 | |
| Land Use Classification | Queens (test) | mIoU61.24 | 8 | |
| Age Classification | Queens (test) | mIoU12.88 | 4 | |
| Building Age Estimation | Brooklyn | mIoU0.517 | 4 | |
| Building Function Estimation | Brooklyn | mIoU27.4 | 4 | |
| Function Classification | Queens (test) | mIoU4.08 | 4 | |
| Height Estimation | Brooklyn | RMSE2.845 | 3 | |
| Height Estimation | Queens (test) | RMSE3.003 | 3 |