一种时间对齐和量化的协同语音手势合成GRU-Transformer

Hendric Voß, Stefan Kopp
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引用次数: 1

摘要

在多模态人工智能体的创建中,生成逼真且与上下文相关的同语音手势是一项具有挑战性但日益重要的任务。先前的方法侧重于学习共同语音手势表征和产生的动作之间的直接对应关系,这些动作在人类评估过程中产生了看似自然但往往不令人信服的手势。我们提出了一种使用带有量化管道的生成对抗网络对部分手势序列进行预训练的方法。生成的码本向量在我们的框架中作为输入和输出,形成手势生成和重建的基础。通过学习潜在空间表示的映射,而不是直接将其映射到向量表示,该框架有助于生成高度逼真和富有表现力的手势,这些手势紧密地复制了人类的运动和行为,同时避免了生成过程中的伪影。我们通过将我们的方法与生成共同语音手势的既定方法以及现有的人类行为数据集进行比较来评估我们的方法。我们还进行了消融研究来评估我们的发现。结果表明,我们的方法明显优于当前的技术水平,并且在一定程度上与人类手势无法区分。我们让数据管道和生成框架公开可用。
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AQ-GT: a Temporally Aligned and Quantized GRU-Transformer for Co-Speech Gesture Synthesis
The generation of realistic and contextually relevant co-speech gestures is a challenging yet increasingly important task in the creation of multimodal artificial agents. Prior methods focused on learning a direct correspondence between co-speech gesture representations and produced motions, which created seemingly natural but often unconvincing gestures during human assessment. We present an approach to pre-train partial gesture sequences using a generative adversarial network with a quantization pipeline. The resulting codebook vectors serve as both input and output in our framework, forming the basis for the generation and reconstruction of gestures. By learning the mapping of a latent space representation as opposed to directly mapping it to a vector representation, this framework facilitates the generation of highly realistic and expressive gestures that closely replicate human movement and behavior, while simultaneously avoiding artifacts in the generation process. We evaluate our approach by comparing it with established methods for generating co-speech gestures as well as with existing datasets of human behavior. We also perform an ablation study to assess our findings. The results show that our approach outperforms the current state of the art by a clear margin and is partially indistinguishable from human gesturing. We make our data pipeline and the generation framework publicly available.
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