Visible to the public Biblio

Filters: Author is Liu, Hao  [Clear All Filters]
2019-05-01
Zhao, Bo, Wu, Xiao, Cheng, Zhi-Qi, Liu, Hao, Jie, Zequn, Feng, Jiashi.  2018.  Multi-View Image Generation from a Single-View. Proceedings of the 26th ACM International Conference on Multimedia. :383-391.

How to generate multi-view images with realistic-looking appearance from only a single view input is a challenging problem. In this paper, we attack this problem by proposing a novel image generation model termed VariGANs, which combines the merits of the variational inference and the Generative Adversarial Networks (GANs). It generates the target image in a coarse-to-fine manner instead of a single pass which suffers from severe artifacts. It first performs variational inference to model global appearance of the object (e.g., shape and color) and produces coarse images of different views. Conditioned on the generated coarse images, it then performs adversarial learning to fill details consistent with the input and generate the fine images. Extensive experiments conducted on two clothing datasets, MVC and DeepFashion, have demonstrated that the generated images with the proposed VariGANs are more plausible than those generated by existing approaches, which provide more consistent global appearance as well as richer and sharper details.

2017-03-07
Li, Jianshu, Zhao, Jian, Zhao, Fang, Liu, Hao, Li, Jing, Shen, Shengmei, Feng, Jiashi, Sim, Terence.  2016.  Robust Face Recognition with Deep Multi-View Representation Learning. Proceedings of the 2016 ACM on Multimedia Conference. :1068–1072.

This paper describes our proposed method targeting at the MSR Image Recognition Challenge MS-Celeb-1M. The challenge is to recognize one million celebrities from their face images captured in the real world. The challenge provides a large scale dataset crawled from the Web, which contains a large number of celebrities with many images for each subject. Given a new testing image, the challenge requires an identify for the image and the corresponding confidence score. To complete the challenge, we propose a two-stage approach consisting of data cleaning and multi-view deep representation learning. The data cleaning can effectively reduce the noise level of training data and thus improves the performance of deep learning based face recognition models. The multi-view representation learning enables the learned face representations to be more specific and discriminative. Thus the difficulties of recognizing faces out of a huge number of subjects are substantially relieved. Our proposed method achieves a coverage of 46.1% at 95% precision on the random set and a coverage of 33.0% at 95% precision on the hard set of this challenge.