用于整体和细粒度行为分析的模块化机器学习工具。

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-12-19 DOI:10.3758/s13428-024-02511-3
Bruno Michelot, Alexandra Corneyllie, Marc Thevenet, Stefan Duffner, Fabien Perrin
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引用次数: 0

摘要

人工智能技术为从视频中探索人体特征提供了很有前途的途径,但迄今为止,还没有一种免费的工具能够可靠地提供整体和细粒度的行为分析。为了解决这个问题,我们开发了一种基于两级方法的机器学习工具:第一个低级处理使用计算机视觉提取细粒度和全面的行为特征,如骨骼或面部点、凝视和动作单元;第二级机器学习分类与可解释性相结合,提供模块化,以确定哪些行为特征是由特定环境触发的。为了验证我们的工具,我们在六种条件下拍摄了16名参与者,这些条件根据有人(“Pers”)、声音(“Snd”)或沉默(“Rest”)的存在以及使用自我指涉(“Self”)和控制(“Ctrl”)刺激的情绪水平而变化。我们通过使用两种计算机视觉软件(OpenPose和OpenFace)从视频中提取和纠正行为,并通过训练两种算法(XGBoost和长短期记忆[LSTM])来区分实验条件,证明了我们方法的有效性。与“Snd”或“Rest”相比,“Pers”条件的分类率很高(AUC = 0.8-0.9),可解释性揭示了行动单位和凝视作为关键特征。此外,“Snd”与“Rest”的分类率中等(AUC = 0.7),归因于行动单位,四肢和头部点,以及“Self”与“Ctrl”的分类率中等(AUC = 0.7-0.8),归因于面部点。这些发现与更传统的假设驱动方法一致。总的来说,我们的研究表明,我们的工具非常适合于整体和细粒度的行为分析,并为扩展到更复杂的自然环境提供了模块化。
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A modular machine learning tool for holistic and fine-grained behavioral analysis.

Artificial intelligence techniques offer promising avenues for exploring human body features from videos, yet no freely accessible tool has reliably provided holistic and fine-grained behavioral analyses to date. To address this, we developed a machine learning tool based on a two-level approach: a first lower-level processing using computer vision for extracting fine-grained and comprehensive behavioral features such as skeleton or facial points, gaze, and action units; a second level of machine learning classification coupled with explainability providing modularity, to determine which behavioral features are triggered by specific environments. To validate our tool, we filmed 16 participants across six conditions, varying according to the presence of a person ("Pers"), a sound ("Snd"), or silence ("Rest"), and according to emotional levels using self-referential ("Self") and control ("Ctrl") stimuli. We demonstrated the effectiveness of our approach by extracting and correcting behavior from videos using two computer vision software (OpenPose and OpenFace) and by training two algorithms (XGBoost and long short-term memory [LSTM]) to differentiate between experimental conditions. High classification rates were achieved for "Pers" conditions versus "Snd" or "Rest" (AUC = 0.8-0.9), with explainability revealing actions units and gaze as key features. Additionally, moderate classification rates were attained for "Snd" versus "Rest" (AUC = 0.7), attributed to action units, limbs and head points, as well as for "Self" versus "Ctrl" (AUC = 0.7-0.8), due to facial points. These findings were consistent with a more conventional hypothesis-driven approach. Overall, our study suggests that our tool is well suited for holistic and fine-grained behavioral analysis and offers modularity for extension into more complex naturalistic environments.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
期刊最新文献
Testing for group differences in multilevel vector autoregressive models. Distribution-free Bayesian analyses with the DFBA statistical package. Jiwar: A database and calculator for word neighborhood measures in 40 languages. Open-access network science: Investigating phonological similarity networks based on the SUBTLEX-US lexicon. Survey measures of metacognitive monitoring are often false.
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