Search Results for author: Guangzhen Liu

Found 4 papers, 2 papers with code

ECSAS: Exploring Critical Scenarios from Action Sequence in Autonomous Driving

no code implementations21 Sep 2022 Shuting Kang, Heng Guo, Lijun Zhang, Guangzhen Liu, Yunzhi Xue, Yanjun Wu

How to model action sequences so that one can further consider the effects of different action parameters in the scenario is the bottleneck of the problem.

Autonomous Driving reinforcement-learning +1

L2M-GAN: Learning To Manipulate Latent Space Semantics for Facial Attribute Editing

2 code implementations CVPR 2021 Guoxing Yang, Nanyi Fei, Mingyu Ding, Guangzhen Liu, Zhiwu Lu, Tao Xiang

To overcome these limitations, we propose a novel latent space factorization model, called L2M-GAN, which is learned end-to-end and effective for editing both local and global attributes.

Attribute Disentanglement

Contrastive Prototype Learning with Augmented Embeddings for Few-Shot Learning

no code implementations23 Jan 2021 Yizhao Gao, Nanyi Fei, Guangzhen Liu, Zhiwu Lu, Tao Xiang, Songfang Huang

First, data augmentations are introduced to both the support and query sets with each sample now being represented as an augmented embedding (AE) composed of concatenated embeddings of both the original and augmented versions.

Few-Shot Learning

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