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PGNet
Pyramid Grafting Network for One-Stage High Resolution Saliency Detection. CVPR 2022TDRG
Transformer-based Dual Relation Graph for Multi-label Image Recognition. ICCV 2021CTDNet
Code for ACM MM2021 paper "Complementary Trilateral Decoder for Fast and Accurate Salient Object Detection"DASNet
Is Depth Really Necessary for Salient Object Detection? ACM MM 2020PART
Code for Part-Guided Relational Transformers for Fine-Grained Visual Recognition, appeared in TIP 2021DehazeFlow
DehazeFlow: Multi-scale Conditional Flow Network for Single Image Dehazing. ACM Conference on Multimedia (ACM MM), 2021HRCN
Heterogeneous Relational Complement for Vehicle Re-identification, ICCV 2021Pirt
Pose-guided Inter- and Intra-part Relational Transformer for Occluded Person Re-Identification ACM MM 2021PFSNet
Dara
Dual Adaptive Representation Alignment for Cross-domain Few-shot Learning TPAMI 2023Gard
Code for Graph-based High-Order Relation Discovery for Fine-grained Recognition in CVPR 2021M3TR
M3TR: Multi-modal Multi-label Recognition with Transformer. ACM MM 2021DanceIt
Code for DanceIt: Music-inspired Dancing Video Synthesis. IEEE Transactions on Image Processing (TIP) 2021BBRF-TIP
Boosting Broader Receptive Fields for Salient Object Detection. TIP-2022SL-PeDG
Revisiting Stochastic Learning for Generalizable Person Re-identification in ACM MM 2022LETGAN
How to Learn a Domain Adaptive Event Simulator? ACM MM, 2021ODI-SOD
A 360Β° omnidirectional image-based salient object detection (SOD) dataset referred to as ODI-SOD with object-level pixel-wise annotation on equirectangular projection (ERP).UTA
RGB-D Salient Object Detection with Ubiquitous Target Awareness. IEEE Transactions on Image Processing (TIP) 2021CBMNet
Cooperative Bi-path Metric for Few-shot Learning. ACM Conference on Multimedia (ACM MM), 2020Scob
Implementation of Semantic Contrastive Bootstrapping for Single-positive Multi-label Recognition, IJCV 2023G-FSCIL
Code for SCIENTIA SINICA Informationis paper "Generalized representation of local relationships for few-shot incremental learning", ε±ι¨ε ³η³»ζ³ε葨εΎηε°ζ ·ζ¬ε’ιε¦δΉInCo
Code for Invariant and consistent: Unsupervised representation learning for few-shot visual recognition. Neurocomputing 2023iCVTEAM.github.io
IPSM
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