Online Learning Based Face Distortion Recovery for Conversational Video Coding

Xi Wang, Li Su, Qingming Huang, Guorong Li, H. Qi
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引用次数: 2

Abstract

In a video conversation, the participants usually remain the same. As the conversation continues, similar facial expressions of the same person would occur intermittently. However, the correlation of similar face features has not been fully used since the conventional methods only focus on independent frames. We set up a face feature database and updated it online to include new facial expressions during the whole conversation. At the receiver side, the database is used to recover the face distortion and thus improve the visual quality. Additionally, the proposed method brings small burden to update the database and is generic to various CODEC.
会话视频编码中基于在线学习的人脸失真恢复
在视频对话中,参与者通常保持不变。随着谈话的进行,同一个人类似的面部表情会断断续续地出现。然而,由于传统的方法只关注独立的帧,因此没有充分利用相似人脸特征之间的相关性。我们建立了一个面部特征数据库,并在线更新它,以包括整个对话过程中的新面部表情。在接收端,使用数据库恢复人脸畸变,从而提高视觉质量。此外,该方法对数据库更新负担小,对各种编解码器具有通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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