Command Palette
Search for a command to run...
Revisiting Shadow Detection: A New Benchmark Dataset for Complex World
Xiaowei Hu Tianyu Wang Chi-Wing Fu Yitong Jiang Qiong Wang Pheng-Ann Heng

Abstract
Shadow detection in general photos is a nontrivial problem, due to the complexity of the real world. Though recent shadow detectors have already achieved remarkable performance on various benchmark data, their performance is still limited for general real-world situations. In this work, we collected shadow images for multiple scenarios and compiled a new dataset of 10,500 shadow images, each with labeled ground-truth mask, for supporting shadow detection in the complex world. Our dataset covers a rich variety of scene categories, with diverse shadow sizes, locations, contrasts, and types. Further, we comprehensively analyze the complexity of the dataset, present a fast shadow detection network with a detail enhancement module to harvest shadow details, and demonstrate the effectiveness of our method to detect shadows in general situations.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| shadow-detection-on-cuhk-shadow | FSDNet (TIP 2021) (512x512) | BER: 8.84 |
| shadow-detection-on-cuhk-shadow | FSDNet (TIP 2021) (256x256) | BER: 9.93 |
| shadow-detection-on-sbu | FSDNet (TIP 2021) (512x512) | BER: 6.8 |
| shadow-detection-on-sbu | FSDNet (TIP 2021) (256x256) | BER: 7.16 |
Build AI with AI
From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.