StableDelight
S
Stabledelight
Overview :
StableDelight is an advanced model focused on removing specular reflections from textured surfaces. It builds upon the success of StableNormal, which aims to enhance the stability of monocular normal estimation. StableDelight applies this concept to tackle the challenging task of reflection removal. The training data includes datasets from Hypersim, Lumos, and various specular highlight removal datasets from TSHRNet. Additionally, we integrated multi-scale SSIM loss and random conditional scaling techniques during the diffusion training process to enhance the clarity of single-step diffusion predictions.
Target Users :
Target audience includes image processing experts, computer vision researchers, and anyone needing to remove specular reflections from images, whether individuals or businesses. StableDelight enables them to enhance the accuracy of image analysis, improve visual effects, and provide clearer image data across various application scenarios.
Total Visits: 474.6M
Top Region: US(19.34%)
Website Views : 56.0K
Use Cases
In industrial inspection, remove specular reflections from product surfaces for more accurate defect detection.
During the digitization of artwork, eliminate specular reflections to preserve the original details of the piece.
In medical imaging, remove specular reflections to enhance the diagnostic value of images.
Features
Specular reflection removal: Extracts hidden texture details by eliminating specular reflections from textured surfaces.
Multi-scale SSIM loss: Utilized during diffusion training to improve prediction clarity.
Random conditional scaling techniques: Enhance the model's adaptability and prediction accuracy under varying conditions.
Based on StableNormal: Capitalizes on the stability advantages of StableNormal in monocular normal estimation.
Support for Torch Hub Loader: Facilitates easy loading and application of the model.
Provides Gradio interface: Enhances user interaction experience.
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase