Sign language is the window for people differently-abled to express their feelings as well as emotions. However, it remains challenging for people to learn sign language in a short time. To address this real-world challenge, in this work, we study the motion transfer system, which can transfer the user photo to the sign language video of specific words. In particular, the appearance content of the output video comes from the provided user image, while the motion of the video is extracted from the specified tutorial video. We observe two primary limitations in adopting the state-of-the-art motion transfer methods to sign language generation:(1) Existing motion transfer works ignore the prior geometrical knowledge of the human body. (2) The previous image animation methods only take image pairs as input in the training stage, which could not fully exploit the temporal information within videos. In an attempt to address the above-mentioned limitations, we propose Structure-aware Temporal Consistency Network (STCNet) to jointly optimize the prior structure of human with the temporal consistency for sign language video generation. There are two main contributions in this paper. (1) We harness a fine-grained skeleton detector to provide prior knowledge of the body keypoints. In this way, we ensure the keypoint movement in a valid range and make the model become more explainable and robust. (2) We introduce two cycle-consistency losses, i.e., short-term cycle loss and long-term cycle loss, which are conducted to assure the continuity of the generated video. We optimize the two losses and keypoint detector network in an end-to-end manner.
翻译:手势语言是人们表达情感和情感的不同窗口。然而,对于人们来说,手势感知和情绪不同者来说,手势语言仍然是一个窗口。然而,对于人们来说,在短时间内学习手势语言仍然是一项挑战。为了应对现实世界的挑战,我们研究运动传输系统,这个系统可以将用户照片传输到特定单词的手势语言视频中。特别是,输出视频的外观内容来自所提供的用户图像,而视频的动作是从指定的辅导视频中提取的。在采用最先进的动作传输方法生成手势语言时,我们观察到两个主要限制:(1) 现有的运动传输工作忽视了人类身体先前的几何学知识。(2) 以前的图像动画法方法仅将成对配对作为培训阶段的投入,而培训阶段不能充分利用视频中的时间信息。为了解决上述局限性,我们建议结构-觉悟调调调网络的动作从特定视频中提取出。我们发现,在签署语言视频生成时,先行的一致性有两个主要贡献。 (1) 我们利用精细的骨架感测的机势感测和机程的周期性循环中,我们用到一个正确的周期性周期性损失。我们进入了周期的周期中的一种关键周期。