Movement synchrony refers to the dynamic temporal connection between the motions of interacting people. The applications of movement synchrony are wide and broad. For example, as a measure of coordination between teammates, synchrony scores are often reported in sports. The autism community also identifies movement synchrony as a key indicator of children's social and developmental achievements. In general, raw video recordings are often used for movement synchrony estimation, with the drawback that they may reveal people's identities. Furthermore, such privacy concern also hinders data sharing, one major roadblock to a fair comparison between different approaches in autism research. To address the issue, this paper proposes an ensemble method for movement synchrony estimation, one of the first deep-learning-based methods for automatic movement synchrony assessment under privacy-preserving conditions. Our method relies entirely on publicly shareable, identity-agnostic secondary data, such as skeleton data and optical flow. We validate our method on two datasets: (1) PT13 dataset collected from autism therapy interventions and (2) TASD-2 dataset collected from synchronized diving competitions. In this context, our method outperforms its counterpart approaches, both deep neural networks and alternatives.
翻译:运动同步是指互动人员运动之间的动态时间联系。运动同步的应用是广泛和广泛的。例如,作为队友之间协调的一种衡量标准,在体育中经常报告同步的分数。自闭症社区还把运动同步确定为儿童社会和发展成就的一个关键指标。一般来说,原始视频记录常常用于运动同步估计,其缺点是它们可能揭示人们的身份。此外,这种隐私关切还妨碍数据分享,这是自闭症研究不同方法之间公平比较的一大障碍。为解决这一问题,本文件提出了运动同步估计的共通方法,这是在隐私保护条件下,以学习为基础的第一个基于自动运动同步评估的先进方法之一。我们的方法完全依赖于可公开分享的、身份认知的二级数据,如骨架数据和光学流。我们验证了我们在两个数据集上的方法:(1) 从自闭症疗法干预中收集的PT13数据集和(2)从同步潜水竞赛中收集的TASD-2数据集。在这方面,我们的方法超越了对口方法,包括深神经网络和替代方法。