The Language of Actions: Recovering the Syntax and Semantics of Goal-Directed Human Activities

Hilde Kuehne, A. B. Arslan, Thomas Serre
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引用次数: 452

Abstract

This paper describes a framework for modeling human activities as temporally structured processes. Our approach is motivated by the inherently hierarchical nature of human activities and the close correspondence between human actions and speech: We model action units using Hidden Markov Models, much like words in speech. These action units then form the building blocks to model complex human activities as sentences using an action grammar. To evaluate our approach, we collected a large dataset of daily cooking activities: The dataset includes a total of 52 participants, each performing a total of 10 cooking activities in multiple real-life kitchens, resulting in over 77 hours of video footage. We evaluate the HTK toolkit, a state-of-the-art speech recognition engine, in combination with multiple video feature descriptors, for both the recognition of cooking activities (e.g., making pancakes) as well as the semantic parsing of videos into action units (e.g., cracking eggs). Our results demonstrate the benefits of structured temporal generative approaches over existing discriminative approaches in coping with the complexity of human daily life activities.
行动的语言:恢复目标导向的人类活动的句法和语义
本文描述了一个将人类活动建模为时间结构化过程的框架。我们的方法是由人类活动固有的层次性质以及人类行为和语言之间的密切对应所驱动的:我们使用隐马尔可夫模型对行动单元进行建模,就像语音中的单词一样。然后,这些动作单元形成构建块,使用动作语法将复杂的人类活动建模为句子。为了评估我们的方法,我们收集了一个关于日常烹饪活动的大型数据集:该数据集总共包括52名参与者,每个参与者在多个现实生活中的厨房中进行了10次烹饪活动,产生了超过77小时的视频片段。我们评估了HTK工具包,这是一个最先进的语音识别引擎,结合多个视频特征描述符,用于识别烹饪活动(例如,制作煎饼)以及将视频语义解析为动作单元(例如,打鸡蛋)。我们的研究结果表明,在处理人类日常生活活动的复杂性方面,结构化时间生成方法优于现有的判别方法。
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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