Sorry, you need to enable JavaScript to visit this website.

New stereo high dynamic range imaging method using generative adversarial networks

Citation Author(s):
Yeyao Chen, Mei Yu, Ken Chen, Gangyi Jiang, Yang Song, Zongju Peng, Fen Chen
Submitted by:
Yeyao Chen
Last updated:
15 September 2019 - 11:19pm
Document Type:
Poster
Document Year:
2019
Event:
 

Stereo high dynamic range (HDR) image/video can be generated by using a pair of stereo cameras with different exposure parameters. This paper proposes a new stereo HDR imaging method using generative adversarial networks (GAN) with a low dynamic range (LDR) stereo imaging system. It is assumed here that the left-view (LV) image is under-exposed and the right-view (RV) image is over-exposed. First, a view exposure transfer GAN (VET-GAN) is constructed to transfer exposure information of the RV image to the LV image to generate the multi-exposure LV images, and then an HDR fusion GAN is constructed to fuse the generated multi-exposure LV images into an LV HDR image. Similarly, an RV HDR image can be generated using the same way to form a stereo HDR image pair. The experimental results show that the proposed method can obtain stereo HDR images with high visual quality and effectively avoid the ghost artifacts caused by parallax

up
0 users have voted: