1 code implementation • 15 Apr 2024 • Xiao Wang, Shiao Wang, Yuhe Ding, Yuehang Li, Wentao Wu, Yao Rong, Weizhe Kong, Ju Huang, Shihao Li, Haoxiang Yang, Ziwen Wang, Bo Jiang, Chenglong Li, YaoWei Wang, Yonghong Tian, Jin Tang
In this paper, we give the first comprehensive review of these works and also provide experimental comparisons and analysis to better demonstrate the features and advantages of SSM.
no code implementations • 23 Feb 2024 • Yuhe Ding, Bo Jiang, Aijing Yu, Aihua Zheng, Jian Liang
In this survey, we present the first review of existing advances in this area and categorize them into two separate realms: source-free model transferability estimation and source-dependent model transferability estimation.
no code implementations • 4 Jan 2024 • Kuangpu Guo, Yuhe Ding, Jian Liang, Ran He, Zilei Wang, Tieniu Tan
Besides, there is still a gap in the accuracy of local models on minority classes compared to the global model.
no code implementations • 9 Oct 2023 • Yuhe Ding, Bo Jiang, Lijun Sheng, Aihua Zheng, Jian Liang
Transferability estimation aims to provide heuristics for quantifying how suitable a pre-trained model is for a specific downstream task, without fine-tuning them all.
1 code implementation • 17 Mar 2023 • Yuhe Ding, Jian Liang, Jie Cao, Aihua Zheng, Ran He
Briefly, MODIFY first trains a generative model in the target domain and then translates a source input to the target domain via the provided style model.
1 code implementation • 9 Feb 2023 • Yuhe Ding, Jian Liang, Bo Jiang, Aihua Zheng, Ran He
Existing cross-domain keypoint detection methods always require accessing the source data during adaptation, which may violate the data privacy law and pose serious security concerns.
2 code implementations • 29 May 2022 • Yuhe Ding, Lijun Sheng, Jian Liang, Aihua Zheng, Ran He
First of all, to avoid additional parameters and explore the information in the source model, ProxyMix defines the weights of the classifier as the class prototypes and then constructs a class-balanced proxy source domain by the nearest neighbors of the prototypes to bridge the unseen source domain and the target domain.
no code implementations • 10 Nov 2020 • Yuhe Ding, Xin Ma, Mandi Luo, Aihua Zheng, Ran He
Considering the intuitive artifacts in the existing methods, we propose a contrastive style loss for style rendering to enforce the similarity between the style of rendered photo and the caricature, and simultaneously enhance its discrepancy to the photos.