Junming Chen
Peking University
5 Papers
Junming Chen is an academic researcher from Peking University. The author has contributed to research in topics: Computer science & View synthesis. The author has an hindex of 2, co-authored 2 publications.
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Papers
Deep Image Spatial Transformation for Person Image Generation
Yurui Ren,Xiaoming Yu,Junming Chen,Thomas H. Li,Ge Li +4 more
- 14 Jun 2020
TL;DR: Ren et al. as discussed by the authors proposed a differentiable global-flow local-attention framework to reassemble the inputs at the feature level, which calculates the global correlations between sources and targets to predict flow fields and warp the source features using a content-aware sampling method with the obtained local attention coefficients.
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Deep Image Spatial Transformation for Person Image Generation
TL;DR: A differentiable global-flow local-attention framework to reassemble the inputs at the feature level to transform a source person image to a target pose and the results of both subjective and objective experiments demonstrate the superiority of this model.
138
Federated Domain Generalization for Image Recognition via Cross-Client Style Transfer
Junming Chen,Meirui Jiang,Qianming Dou,Qifeng Chen +3 more
- 03 Oct 2022
TL;DR: This paper proposes a novel domain generalization method for image recognition under federated learning through cross-client style transfer (CCST) without exchanging data samples that outperforms recent SOTA DG methods on two DG benchmarks and a large-scale medical image dataset in the FL setting.
19
Real-time Streaming Video Denoising with Bidirectional Buffers
Chenyang Qi,Junming Chen,Xin Yang,Qifeng Chen +3 more
- 14 Jul 2022
TL;DR: A novel Bidirectional Buffer Block is introduced as the core module of the BSVD, which makes it possible to achieve high-fidelity real-time denoising for streaming videos with both past and future temporal receptive fields and outperforms previous methods in terms of restoration fidelity and runtime.
Classification of Theoretical Extracellular Action Potentials Based on Unsupervised Machine-Learning
Junming Chen
- 13 Jan 2023
TL;DR: The results show that EAP measured is closer to classical theory prediction in the axon while more eccentric, even with a shape similar to an intracellular action potential in the dendrite.