论文标题
Genea Challenge 2022:对数据驱动的共同语音发电的大量评估
The GENEA Challenge 2022: A large evaluation of data-driven co-speech gesture generation
论文作者
论文摘要
本文向基准数据驱动的自动共鸣手势发起了第二个基因挑战。参与的团队使用相同的语音和运动数据集来构建手势产生系统。所有这些系统产生的运动使用标准化的可视化管道渲染到视频,并在几个大型众包用户研究中进行评估。与比较不同的研究论文时,结果的差异仅是由于方法之间的差异,从而实现了系统之间的直接比较。今年的数据集是基于18个小时的全身运动捕获,包括手指,参与二元对话的不同人。十个团队参加了两个层次的挑战:全身和上身手势。对于每个层,我们都评估了手势运动的人类风格及其对特定语音信号的适当性。我们的评估将人类的风格与手势适当性解脱出来,这是该领域的主要挑战。 评估结果是一场革命和启示。某些合成条件被评为比人类运动捕获更明显的人类样。据我们所知,这从未在高保真的头像上展示过。另一方面,发现所有合成运动比原始运动捕获记录要小得多。其他材料可通过项目网站https://youngwoo-yoon.github.io/geneachallenge2022/获得
This paper reports on the second GENEA Challenge to benchmark data-driven automatic co-speech gesture generation. Participating teams used the same speech and motion dataset to build gesture-generation systems. Motion generated by all these systems was rendered to video using a standardised visualisation pipeline and evaluated in several large, crowdsourced user studies. Unlike when comparing different research papers, differences in results are here only due to differences between methods, enabling direct comparison between systems. This year's dataset was based on 18 hours of full-body motion capture, including fingers, of different persons engaging in dyadic conversation. Ten teams participated in the challenge across two tiers: full-body and upper-body gesticulation. For each tier we evaluated both the human-likeness of the gesture motion and its appropriateness for the specific speech signal. Our evaluations decouple human-likeness from gesture appropriateness, which previously was a major challenge in the field. The evaluation results are a revolution, and a revelation. Some synthetic conditions are rated as significantly more human-like than human motion capture. To the best of our knowledge, this has never been shown before on a high-fidelity avatar. On the other hand, all synthetic motion is found to be vastly less appropriate for the speech than the original motion-capture recordings. Additional material is available via the project website at https://youngwoo-yoon.github.io/GENEAchallenge2022/