With the goal Board Game/New of addressing the challenges of small, densely packed targets in remote sensing images, we propose a high-resolution instance segmentation model named QuadTransPointRend Net (QTPR-Net).This model significantly enhances instance segmentation performance in remote sensing images.The model consists of two main modules: preliminary edge feature extraction (PEFE) and edge point feature refinement (EPFR).We also created a specific approach and strategy named TransQTA for edge uncertainty point selection and feature processing in high-resolution remote sensing images.
Multi-scale feature fusion and transformer technologies are used in QTPR-Net to refine rough masks and fine-grained features for selected edge uncertainty points while balancing model size and accuracy.Based on experiments performed on three public datasets: NWPU Cough VHR-10, SSDD, and iSAID, we demonstrate the superiority of QTPR-Net over existing approaches.