TL;DR
SARU is a unified framework that effectively detects and removes shadows in remote sensing images, introducing new benchmarks and achieving state-of-the-art performance without requiring paired training data.
Contribution
The paper presents a novel two-stage shadow detection and removal framework with new benchmarks, eliminating the need for paired training data and improving efficiency and accuracy.
Findings
SARU achieves state-of-the-art shadow detection performance.
The N$^2$SGSR algorithm is over 10 times faster than previous methods.
SARU maintains high shadow removal quality with SRI close to 0.9.
Abstract
Shadows are a prevalent problem in remote sensing imagery (RSI), degrading visual quality and severely limiting the performance of downstream tasks like object detection and semantic segmentation. Most prior works treat shadow detection and removal as separate, cascaded tasks, which can lead to cumbersome process and error accumulation. Furthermore, many deep learning methods rely on paired shadow and non-shadow images for training, which are often unavailable in practice. To address these challenges, we propose Shadow-Aware and Removal Unified (SARU) Framework , a cohesive two-stage framework. First, its dual-branch detection module (DBCSF-Net) fuses multi-color space and semantic features to generate high-fidelity shadow masks, effectively distinguishing shadows from dark objects. Then, leveraging these masks, a novel, training-free physical algorithm (NSGSR) restores illumination…
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