Page Not Found
Page not found. Your pixels are in another canvas.
A list of all the posts and pages found on the site. For you robots out there is an XML version available for digesting as well.
Page not found. Your pixels are in another canvas.
Personal Profile
This is a page not in th emain menu
Published:
This post will show up by default. To disable scheduling of future posts, edit config.yml
and set future: false
.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Published:
This is a sample blog post. Lorem ipsum I can’t remember the rest of lorem ipsum and don’t have an internet connection right now. Testing testing testing this blog post. Blog posts are cool.
Short description of portfolio item number 1
Short description of portfolio item number 2
Authors: Kaidong Zhang, Jingjing Fu, Dong Liu
Published in In the proceedings of Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2022
We show the benefit of explicit inertia prior for flow completion, which leads to more accurate flow-guided content propagation for video inpainting. We also first discuss the style incoherence caused by flow warping across different frames and propose the style fusion mechanism to refine the style in the warped regions under the guidance of the styles from valid regions.
Recommended citation: Kaidong Zhang, Jingjing Fu, Dong Liu, "Inertia-Guided Flow Completion and Style Fusion for Video Inpainting." In the proceedings of Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2022.
Authors: Kaidong Zhang, Jingjing Fu, Dong Liu
Published in In the proceedings of European Conference on Computer Vision (ECCV), 2022
We first integrate the philosophy of flow-guided method to transformer for video inpainting with reasonable structure and detailed texture simultaneously. We exploit the local correlation of motion fields and adopt the motion discrepancy in the completed flows to guide the transformer-based content synthesis. We also design elaborated window-partition and spatial-temporal decoupled transformer strategy for the balance between efficiency and performance.
Recommended citation: Kaidong Zhang, Jingjing Fu, Dong Liu, "Flow-Guided Transformer for Video Inpainting." In the proceedings of European Conference on Computer Vision (ECCV), 2022.
Authors: Kaidong Zhang, Dong Liu
Published in Arxiv preprint, 2023, 2023
We propose SAMed, which firstly adopt Segment Anything Model (SAM) in medical image semantic segmentation. In consideration of performance, deployment and storage overhead comprehensively, we adopt low rank approximation technology to customize a small fraction of parameters in image encoder of SAM. With the finetuning of mask decoder and the prompt encoder and a series training strategies, we achieve highly competitive performance on Synapse multi-organ segmentation dataset.
Recommended citation: Kaidong Zhang, Dong Liu, "Customized Segment Anything Model for Medical Image Segmentation." Arxiv preprint, 2023.
Authors: Kaidong Zhang, Jialun Peng, Jingjing Fu, Dong Liu
Published in IEEE TPAMI, 2023, 2024
This paper is a journal extension of FGT. In this paper, we reformulate the research motivation and propose more methods to exploit the guidance from completed optical flows to transformer-based video inpainting, including the flow-guided feature propagation module and the newly designed temporal deformable MHSA in temporal transformer block. Besides, we also explore the supervision from frequency domain in video inpainting. FGT++ achieves greatly improved compared with FGT and current existing video inpainting baselines.
Recommended citation: Kaidong Zhang, Jialun Peng, Jingjing Fu, Dong Liu, "Exploiting Optical Flow Guidance for Transformer-Based Video Inpainting." IEEE TPAMI, 2024.
Published:
This is a description of your talk, which is a markdown files that can be all markdown-ified like any other post. Yay markdown!
Published:
This is a description of your conference proceedings talk, note the different field in type. You can put anything in this field.
Undergraduate course, University 1, Department, 2014
This is a description of a teaching experience. You can use markdown like any other post.
Workshop, University 1, Department, 2015
This is a description of a teaching experience. You can use markdown like any other post.