Title
Depth Structure Preserving Scene Image Generation.
Abstract
Key to automatically generate natural scene images is to properly arrange amongst various spatial elements, especially in the depth cue. To this end, we introduce a novel depth structure preserving scene image generation network (DSP-GAN), which favors a hierarchical architecture, for the purpose of depth structure preserving scene image generation. The main trunk of the proposed infrastructure is built upon a Hawkes point process that models high-order spatial dependency between different depth layers. Within each layer generative adversarial sub-networks are trained collaboratively to generate realistic scene components, conditioned on the layer information produced by the point process. We experiment our model on annotated natural scene images collected from SUN dataset and demonstrate that our models are capable of generating depth-realistic natural scene image.
Year
Venue
DocType
2018
ACM Multimedia
Conference
Volume
Citations 
PageRank 
abs/1706.00212
0
0.34
References 
Authors
34
5
Name
Order
Citations
PageRank
Wendong Zhang1151.85
Bingbing Ni2142182.90
Yichao Yan3906.70
Jingwei Xu4205.05
Xiaokang Yang53581238.09