ReNeLiB: Real-time Neural Listening Behavior Generation for Socially Interactive Agents

Daksitha Senel Withanage Don, Philipp Müller, Fabrizio Nunnari, Elisabeth André, Patrick Gebhard
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Abstract

Flexible and natural nonverbal reactions to human behavior remain a challenge for socially interactive agents (SIAs) that are predominantly animated using hand-crafted rules. While recently proposed machine learning based approaches to conversational behavior generation are a promising way to address this challenge, they have not yet been employed in SIAs. The primary reason for this is the lack of a software toolkit integrating such approaches with SIA frameworks that conforms to the challenging real-time requirements of human-agent interaction scenarios. In our work, we for the first time present such a toolkit consisting of three main components: (1) real-time feature extraction capturing multi-modal social cues from the user; (2) behavior generation based on a recent state-of-the-art neural network approach; (3) visualization of the generated behavior supporting both FLAME-based and Apple ARKit-based interactive agents. We comprehensively evaluate the real-time performance of the whole framework and its components. In addition, we introduce pre-trained behavioral generation models derived from psychotherapy sessions for domain-specific listening behaviors. Our software toolkit, pivotal for deploying and assessing SIAs’ listening behavior in real-time, is publicly available. Resources, including code, behavioural multi-modal features extracted from therapeutic interactions, are hosted at https://daksitha.github.io/ReNeLib
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ReNeLiB:基于社会交互agent的实时神经倾听行为生成
对人类行为的灵活和自然的非语言反应仍然是社会互动代理(SIAs)的挑战,这些代理主要使用手工制作的规则进行动画。虽然最近提出的基于机器学习的会话行为生成方法是解决这一挑战的有希望的方法,但它们尚未在sia中使用。造成这种情况的主要原因是缺乏将这种方法与SIA框架集成在一起的软件工具包,该工具包符合人机交互场景的具有挑战性的实时需求。在我们的工作中,我们首次提出了一个由三个主要部分组成的工具包:(1)实时特征提取,捕获来自用户的多模态社交线索;(2)基于最新神经网络方法的行为生成;(3)生成行为的可视化,支持基于flame和基于Apple arkit的交互代理。我们全面评估了整个框架及其组件的实时性能。此外,我们还引入了来自心理治疗课程的预训练行为生成模型,用于特定领域的倾听行为。我们的软件工具包对实时部署和评估SIAs的监听行为至关重要,是公开的。资源,包括代码,从治疗相互作用中提取的行为多模态特征,托管于https://daksitha.github.io/ReNeLib
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