no code implementations • 3 Feb 2025 • Yirui Zeng, Jun Fu, Hadi Amirpour, Huasheng Wang, Guanghui Yue, Hantao Liu, Ying Chen, Wei Zhou
Blind dehazed image quality assessment (BDQA), which aims to accurately predict the visual quality of dehazed images without any reference information, is essential for the evaluation, comparison, and optimization of image dehazing algorithms.
no code implementations • 20 Oct 2024 • Yi Ren, Hanzhi Zhang, Weibin Li, Jun Fu, Diandong Liu, Tianyi Zhang, Jie He, Licheng Jiao
In tests on 30 videos of facial paralysis patients, the system demonstrated a grading accuracy of 83. 3%. The second component is the generation of professional medical responses.
1 code implementation • 24 Jun 2024 • Jun Fu, Wei Zhou, Qiuping Jiang, Hantao Liu, Guangtao Zhai
This is not enough for adapting CLIP models to AI generated image quality assessment (AGIQA) since AGIs visually differ from natural images.
no code implementations • 20 Jun 2023 • Jun Fu, Xiaojuan Zhang, Shuang Li, Dali Chen
The proposed framework infers the latent factors that cause edges in the graph and disentangles the representation into multiple channels corresponding to unique latent factors, which contributes to improving the performance of link prediction.
no code implementations • 20 Jun 2023 • Xiaojuan Zhang, Jun Fu, Shuang Li
Inspired by the success of contrastive learning, we propose a novel framework for contrastive disentangled learning on graphs, employing a disentangled graph encoder and two carefully crafted self-supervision signals.
1 code implementation • 4 Jun 2023 • Jun Fu
In this paper, we reveal that the scale factor has a statistically significant impact on subjective quality scores of SR images, indicating that the scale information can be used to guide the task of blind SR IQA.
no code implementations • 13 Jul 2022 • Yiting Lu, Jun Fu, Xin Li, Wei Zhou, Sen Liu, Xinxin Zhang, Congfu Jia, Ying Liu, Zhibo Chen
Therefore, we propose a Progressive Reinforcement learning based Instance Discarding module (termed as PRID) to progressively remove quality-irrelevant/negative instances for CCTA VIQA.
no code implementations • 7 Jun 2022 • Zi'an Xu, Yin Dai, Fayu Liu, Siqi Li, Sheng Liu, Lifu Shi, Jun Fu
Preoperative tumor localization, differential diagnosis, and subsequent selection of appropriate treatment for parotid gland tumors are critical.
no code implementations • 24 Jan 2022 • Yin Dai, Yifan Gao, Fayu Liu, Jun Fu
Recent works on Multimodal 3D Computer-aided diagnosis have demonstrated that obtaining a competitive automatic diagnosis model when a 3D convolution neural network (CNN) brings more parameters and medical images are scarce remains nontrivial and challenging.
no code implementations • 9 Jan 2022 • Xin Miao, Jiayi Liu, Huayan Wang, Jun Fu
We present a new dataset with the goal of training models to understand the layout of the objects and the context of the image then to find the main subjects among them.
no code implementations • 25 Nov 2021 • Xin Li, Xin Jin, Jun Fu, Xiaoyuan Yu, Bei Tong, Zhibo Chen
Under this brand-new scenario, we propose Distortion Relation guided Transfer Learning (DRTL) for the few-shot RealSR by transferring the rich restoration knowledge from auxiliary distortions (i. e., synthetic distortions) to the target RealSR under the guidance of distortion relation.
no code implementations • 19 Oct 2021 • Xin Miao, Huayan Wang, Jun Fu, Jiayi Liu, Shen Wang, Zhenyu Liao
The style vectors are fed to the generator and discriminator to achieve fine-grained control.
no code implementations • 19 May 2021 • Jun Fu, Chen Hou, Wei Zhou, Jiahua Xu, Zhibo Chen
In the hypergraph construction, we build a location-based hyperedge and a content-based hyperedge for each viewport.
no code implementations • 1 Apr 2021 • Jun Fu, Wei Zhou, Zhibo Chen
Under this framework, the graph structure is viewed as a random realization from a parametric generative model, and its posterior is inferred using the observed topology of the road network and traffic data.
no code implementations • 10 Nov 2020 • Xiaoyu Mao, Jun Fu, Chen Chen, Yue Li, Heng Liu, Ming Gong, Hualing Zeng
With the saturated ferroelectric polarization of CIPS, electron-doped or hole-doped MoSe$_2$ is realized in a single device with a large carrier density tunability up to $5\times 10^{12}$cm$^{-2}$.
Materials Science
no code implementations • 15 Oct 2020 • Jun Fu, Wei Zhou, Zhibo Chen
The graph structure in our network is learned from the physical topology of the road network and traffic data in an end-to-end manner, which discovers a more accurate description of the relationship among traffic flows.
Ranked #2 on
Traffic Prediction
on SZ-Taxi
1 code implementation • TNNLS 2020 • Jun Fu, Jing Liu, Jie Jiang, Yong Li, Yongjun Bao, Hanqing Lu
We conduct extensive experiments to validate the effectiveness of our network and achieve new state-of-the-art segmentation performance on four challenging scene segmentation data sets, i. e., Cityscapes, ADE20K, PASCAL Context, and COCO Stuff data sets.
Ranked #9 on
Semantic Segmentation
on COCO-Stuff test
1 code implementation • 1 Jun 2020 • Jun Fu, Jianfeng Xu, Kazuyuki Tasaka, Zhibo Chen
Image deraining is an important image processing task as rain streaks not only severely degrade the visual quality of images but also significantly affect the performance of high-level vision tasks.
no code implementations • ICCV 2019 • Jun Fu, Jing Liu, Yuhang Wang, Yong Li, Yongjun Bao, Jinhui Tang, Hanqing Lu
Recent works attempt to improve scene parsing performance by exploring different levels of contexts, and typically train a well-designed convolutional network to exploit useful contexts across all pixels equally.
Ranked #77 on
Semantic Segmentation
on ADE20K val
12 code implementations • CVPR 2019 • Jun Fu, Jing Liu, Haijie Tian, Yong Li, Yongjun Bao, Zhiwei Fang, Hanqing Lu
Specifically, we append two types of attention modules on top of traditional dilated FCN, which model the semantic interdependencies in spatial and channel dimensions respectively.
Ranked #5 on
Semantic Segmentation
on BDD100K val
no code implementations • 16 Aug 2017 • Jun Fu, Jing Liu, Yuhang Wang, Hanqing Lu
In SDN, multiple shallow deconvolutional networks, which are called as SDN units, are stacked one by one to integrate contextual information and guarantee the fine recovery of localization information.
Ranked #4 on
Semantic Segmentation
on PASCAL VOC 2012 test