Temporal Consistent Video Manipulation : Facial Expression Transfer video to video
Abstract
Facial expression transfer is an important problem in computer vision community due to its applicability in human computer interaction, facial animation, etc. Most of the existing approaches mainly deal with images. However, expression transfer to videos yet to be explored. The extension of existing image based approaches to videos often leads to flickering artifacts in the result. This is due to the temporal inconsistency that may have been produced due to the independent processing of frames. In this paper, we address this problem by proposing a combination of loss functions in associated with a deep learning based method. Image reconstruction loss takes care of spatial domain consistency. The flow and warp losses address the temporal consistency. By maintaining consistency spatially as well as temporally, our method produce visually plausible results. The efficacy of our method is further explored in different problems like video dehazing, and video colorization method.
Collections
- M Tech Dissertations [923]
Related items
Showing items related by title, author, creator and subject.
-
Development of difference detection algorithm for surveillance video compression
Marvaniya, Hitul D. (Dhirubhai Ambani Institute of Information and Communication Technology, 2011)Video surveillance is widely used tool in today’s era for improving public and residential safety. Here the size of the video data is much higher due to large number of surveillance cameras scattered over large area and ... -
Video compression using color transfer based on motion estimation
Reddy, Pandu Ranga M. (Dhirubhai Ambani Institute of Information and Communication Technology, 2008)Many compression techniques were developed in last decade and are being used in many applications like HDTV, Videoconferencing, Videophone, multimedia work stations and mobile image communications. It is also certain that ... -
Object-background segmentation from video
Domadiya, Prashant (Dhirubhai Ambani Institute of Information and Communication Technology, 2015)Fast and accurate algorithms for background-foreground separation are an essential part of <p/>any video surveillance system. GMM (Gaussian Mixture Models) based object segmentation <p/>methods give accurate results for ...