人际互动中的无监督同步发现

Wen-Sheng Chu, Jiabei Zeng, Fernando De la Torre, Jeffrey F Cohn, Daniel S Messinger
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摘要

人天生具有社会性。社会互动在人类行为中扮演着重要而自然的角色。大多数计算方法只关注个体,而不是社会背景。这些方法还需要标注训练数据。我们提出了一种发现人际同步的无监督方法,人际同步是指两个或两个以上的人在重叠的视频帧或片段中做出共同的动作。为了提高计算效率,我们开发了一种分支与边界(B&B)方法,在保证全局最优解的同时进行穷举搜索。所提出的方法完全通用。它可以从两个或多个视频中提取任何可以用直方图表示的多维信号。我们推导出三个新颖的边界函数,并提供了有效的扩展,包括多同步检测和加速搜索,使用了热启动策略和并行性。我们评估了我们的方法在多个数据库中的有效性,包括使用 CMU Mocap 数据集[1]的人类动作、使用群体形成任务数据集[37]的自发面部行为以及亲子互动数据集[28]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Unsupervised Synchrony Discovery in Human Interaction.

People are inherently social. Social interaction plays an important and natural role in human behavior. Most computational methods focus on individuals alone rather than in social context. They also require labelled training data. We present an unsupervised approach to discover interpersonal synchrony, referred as to two or more persons preforming common actions in overlapping video frames or segments. For computational efficiency, we develop a branch-and-bound (B&B) approach that affords exhaustive search while guaranteeing a globally optimal solution. The proposed method is entirely general. It takes from two or more videos any multi-dimensional signal that can be represented as a histogram. We derive three novel bounding functions and provide efficient extensions, including multi-synchrony detection and accelerated search, using a warm-start strategy and parallelism. We evaluate the effectiveness of our approach in multiple databases, including human actions using the CMU Mocap dataset [1], spontaneous facial behaviors using group-formation task dataset [37] and parent-infant interaction dataset [28].

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