Search Results for author: Yuanbiao Gou

Found 9 papers, 6 papers with code

Test-Time Degradation Adaption for Open-Set Image Restoration

no code implementations2 Dec 2023 Yuanbiao Gou, Haiyu Zhao, Boyun Li, Xinyan Xiao, Xi Peng

In contrast to close-set scenarios that restore images from a predefined set of degradations, open-set image restoration aims to handle the unknown degradations that were unforeseen during the pretraining phase, which is less-touched as far as we know.

Image Restoration Test-time Adaptation

Dual Contrastive Prediction for Incomplete Multi-view Representation Learning

1 code implementation IEEE Transactions on Pattern Analysis and Machine Intelligence 2023 Yijie Lin, Yuanbiao Gou, Xiaotian Liu, Jinfeng Bai, Jiancheng Lv, Xi Peng

In this article, we propose a unified framework to solve the following two challenging problems in incomplete multi-view representation learning: i) how to learn a consistent representation unifying different views, and ii) how to recover the missing views.

Action Recognition Contrastive Learning +3

Comprehensive and Delicate: An Efficient Transformer for Image Restoration

1 code implementation CVPR 2023 Haiyu Zhao, Yuanbiao Gou, Boyun Li, Dezhong Peng, Jiancheng Lv, Xi Peng

Vision Transformers have shown promising performance in image restoration, which usually conduct window- or channel-based attention to avoid intensive computations.

Image Restoration Superpixels

Rethinking Image Super Resolution From Long-Tailed Distribution Learning Perspective

no code implementations CVPR 2023 Yuanbiao Gou, Peng Hu, Jiancheng Lv, Hongyuan Zhu, Xi Peng

Existing studies have empirically observed that the resolution of the low-frequency region is easier to enhance than that of the high-frequency one.

Image Super-Resolution

Relationship Quantification of Image Degradations

no code implementations8 Dec 2022 Wenxin Wang, Boyun Li, Yuanbiao Gou, Peng Hu, WangMeng Zuo, Xi Peng

To tackle the first challenge, we proposed a Degradation Relationship Index (DRI) which is defined as the mean drop rate difference in the validation loss between two models which are respectively trained using the anchor degradation and the mixture of the anchor and the auxiliary degradations.

Denoising Image Dehazing +2

Multi-Scale Adaptive Network for Single Image Denoising

1 code implementation8 Mar 2022 Yuanbiao Gou, Peng Hu, Jiancheng Lv, Joey Tianyi Zhou, Xi Peng

AFuB devotes to adaptively sampling and transferring the features from one scale to another scale, which fuses the multi-scale features with varying characteristics from coarse to fine.

Image Denoising

COMPLETER: Incomplete Multi-view Clustering via Contrastive Prediction

2 code implementations CVPR 2021 Yijie Lin, Yuanbiao Gou, Zitao Liu, Boyun Li, Jiancheng Lv, Xi Peng

In this paper, we study two challenging problems in incomplete multi-view clustering analysis, namely, i) how to learn an informative and consistent representation among different views without the help of labels and ii) how to recover the missing views from data.

Clustering Contrastive Learning +2

CLEARER: Multi-Scale Neural Architecture Search for Image Restoration

1 code implementation NeurIPS 2020 Yuanbiao Gou, Boyun Li, Zitao Liu, Songfan Yang, Xi Peng

Different from the existing labor-intensive handcrafted architecture design paradigms, we present a novel method, termed as multi-sCaLe nEural ARchitecture sEarch for image Restoration (CLEARER), which is a specifically designed neural architecture search (NAS) for image restoration.

Image Denoising Image Restoration +2

You Only Look Yourself: Unsupervised and Untrained Single Image Dehazing Neural Network

1 code implementation30 Jun 2020 Boyun Li, Yuanbiao Gou, Shuhang Gu, Jerry Zitao Liu, Joey Tianyi Zhou, Xi Peng

In this paper, we study two challenging and less-touched problems in single image dehazing, namely, how to make deep learning achieve image dehazing without training on the ground-truth clean image (unsupervised) and a image collection (untrained).

Disentanglement Image Dehazing +1

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