Search

Advanced Materials

Biotechnology

Communications

Digital Technology

Microelectronics

Neuroscience

Ocean Science and Technology

Source Code

Aging and Healthcare

Artificial Intelligence, Autonomous Systems & Robotics

Energy and Sustainability

Wave Functional Materials

Unsupervised Portrait Shadow Removal via Generative Priors

This product is an open source software. If you would like to access the source code, please visit the below link. (You do not need to click "ADD TO CART" for this item)

<<To ACCESS Source Code: CLICK HERE>>

Authors: Yingqing He, Yazhou Xing, Tianjia Zhang, Qifeng Chen

Portrait images often suffer from undesirable shadows cast by casual objects or even the face itself. While existing methods for portrait shadow removal require training on a large-scale synthetic dataset, we propose the first unsupervised method for portrait shadow removal without any training data. Our key idea is to leverage the generative facial priors embedded in the off-the-shelf pretrained StyleGAN2. To achieve this, we formulate the shadow removal task as a layer decomposition problem: a shadowed portrait image is constructed by the blending of a shadow image and a shadow-free image. We propose an effective progressive optimization algorithm to learn the decomposition process. Our approach can also be extended to portrait tattoo removal and watermark removal. Qualitative and quantitative experiments on a real-world portrait shadow dataset demonstrate that our approach achieves comparable performance with supervised shadow removal methods.

 

Authors:

Department of Computer Science and Engineering Assistance Professor Prof. Qifeng Chen

 

Key Features:

We proposed the first unsupervised method for portrait shadow removal which needs only one input shadow portrait image. We have shown that the generative priors can be used in this unsupervised layer decomposition setting to handle unknown degradation processes which cannot be accomplished by existing GAN-inversion methods. Meanwhile, we designed progressive optimization techniques to guide the image decomposition and reconstruction process. Then, we achieved comparable performance with existing state-of-the-art supervised-based shadow removal methods, demonstrating the effectiveness of our unsupervised method. Finally, we have shown two extension applications (e.g., portrait tattoo removal and watermark removal) of our method to demonstrate that our method can serve as a unified framework for portrait image decomposition tasks.

 

Specification:

Please refer to the published paper for specification

 

Reference:

https://cqf.io/papers/Portrait_Shadow_Removal_ACMMM2021.pdf

 

Contact Us:

ttsamuel@ust.hk

 

Download (1)

Unsupervised Portrait Shadow Removal via Generative Priors
Portrait_Shadow_Removal_ACMMM2021.pdf*
size: 5646013 KB, type: application/pdf
 

You would be able to download the files marked with an asterisk '*' only after logging in to your account and completing the purchase of the product license.

TAP Category
Terms
(Not Applicable)
License Type
Open Source
Price Per Unit
(Not Applicable)
Thumbnail
Image
unsupervised_portrait_shadow_removal_via_generative_priors_okt.elp_.0013
License Terms

This is an open source software developed by The Hong Kong University of Science and Technology (HKUST).

Users shall be responsible for compliance with all the terms of the applicable licenses for the use of open source software including the terms as set forth by Github. Users shall be solely liable for any breaches of such terms and agree to hold harmless and fully indemnify HKUST and its subsidiary including Hong Kong University of Science and Technology R and D Corporation Limited (RDC) for any losses, claims, liabilities, damages, awards, penalties, or injuries (including reasonable attorney’s fees) against and cause to HKUKST and RDC arising from Users’ breach of such terms.

Please access the link to the open source code in Github for further license information.