Taojiannan Yang
12 Papers
3 Citations
Taojiannan Yang is an academic researcher. The author has contributed to research in topics: Computer science & Upsampling. The author has an hindex of 3, co-authored 9 publications.
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Papers
Real-World Blind Super-Resolution via Feature Matching with Implicit High-Resolution Priors
Chaofeng Chen,Xinyu Shi,Yipeng Qin,Xiaoming Li,Xiaoguang Han,Taojiannan Yang,Shihui Guo +6 more
- 26 Feb 2022
TL;DR: This work proposes Feature Matching SR (FeMaSR), which restores realistic HR images in a much more compact feature space by matching distorted LR image features to their distortion-free HR counterparts in the authors' pretrained HR priors, and decoding the matched features to obtain realisticHR images.
ControlNet++: Improving Conditional Controls with Efficient Consistency Feedback
Ming Hui Li,Taojiannan Yang,Huafeng Kuang,Jie Wu,Zhaoning Wang,Xuefeng Xiao,Chen Chen +6 more
TL;DR: ControlNet++ improves controllability of text-to-image diffusion models by explicitly optimizing pixel-level cycle consistency between generated images and conditional controls.
16
Exploring Parameter-Efficient Fine-tuning for Improving Communication Efficiency in Federated Learning
TL;DR: FL learning has as a promising paradigm for enabling the collaborative training of models without on devices and by sharing a portion of reductions in can be achieved while maintaining in a of providing for and effective federated.
13
A Large-scale Study of Spatiotemporal Representation Learning with a New Benchmark on Action Recognition
TL;DR: BEAR as mentioned in this paper is a collection of 18 video datasets grouped into five categories (anomaly, gesture, daily, sports, and instructional), which covers a diverse set of real-world applications.
8
Conquering the Communication Constraints to Enable Large Pre-Trained Models in Federated Learning
Guangyu Sun,Matias Mendieta,Taojiannan Yang,Chen Chen +3 more
- 04 Oct 2022
TL;DR: In this paper , the authors investigate the use of parameter-efficient tuning in federated learning and thus introduce a new framework, FedPEFT, to enable strong and readily available pre-trained models to achieve excellent performance while simultaneously reducing the communication burden.