Yaoxin LiKeyuan QianTao HuangJingkun Zhou
Depth estimation has achieved considerable success with the development of the depth sensor devices and deep learning method. However, depth estimation from monocular RGB-based image will increase ambiguity and is prone to error. In this paper, we present a novel approach to produce dense depth map from a single image coupled with coarse point-cloud samples. Our approach learns to fit the distribution of the depth map from source data using conditional adversarial networks and convert the sparse point clouds to dense maps. Our experiments show that the use of the conditional adversarial networks can add full image information to the predicted depth maps and the effectiveness of our approach to predict depth in NYU-Depth-v2 indoor dataset.
Xiaofeng ZhangShuo ChenQingyang XuXiaoxue Zhang
Tien-Ying KuoYi-Chung LoYun-Yang Lai
Yasir SalihAamir Saeed MalikZazilah May
Wenhui ZhouEnci ZhouGaomin LiuLili LinAndrew Lumsdaine