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Combining Recurrence Analysis and Automatic Movement Extraction from Video Recordings to Study Behavioral Coupling in Face-to-Face Parent-Child Interactions

机译:结合递归分析和从视频记录中自动提取运动来研究面对面亲子互动中的行为耦合

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摘要

The analysis of parent-child interactions is crucial for the understanding of early human development. Manual coding of interactions is a time-consuming task, which is a limitation in many projects. This becomes especially demanding if a frame-by-frame categorization of movement needs to be achieved. To overcome this, we present a computational approach for studying movement coupling in natural settings, which is a combination of a state-of-the-art automatic tracker, Tracking-Learning-Detection (TLD), and nonlinear time-series analysis, Cross-Recurrence Quantification Analysis (CRQA). We investigated the use of TLD to extract and automatically classify movement of each partner from 21 video recordings of interactions, where 5.5-month-old infants and mothers engaged in free play in laboratory settings. As a proof of concept, we focused on those face-to-face episodes, where the mother animated an object in front of the infant, in order to measure the coordination between the infants' head movement and the mothers' hand movement. We also tested the feasibility of using such movement data to study behavioral coupling between partners with CRQA. We demonstrate that movement can be extracted automatically from standard definition video recordings and used in subsequent CRQA to quantify the coupling between movement of the parent and the infant. Finally, we assess the quality of this coupling using an extension of CRQA called anisotropic CRQA and show asymmetric dynamics between the movement of the parent and the infant. When combined these methods allow automatic coding and classification of behaviors, which results in a more efficient manner of analyzing movements than manual coding.
机译:亲子互动的分析对于理解人类早期发展至关重要。手动进行交互编码是一项耗时的任务,这在许多项目中是一个限制。如果需要实现运动的逐帧分类,这将变得尤为苛刻。为了克服这个问题,我们提出了一种用于研究自然环境中运动耦合的计算方法,该方法结合了最新的自动跟踪器,跟踪学习检测(TLD)和非线性时间序列分析,交叉-递归定量分析(CRQA)。我们调查了使用TLD从21个互动视频录像中提取和自动分类每个伙伴的运动的情况,其中5.5个月大的婴儿和母亲在实验室环境中进行免费游戏。作为概念验证,我们重点研究了那些面对面的情节,其中母亲对婴儿前面的物体进行了动画处理,以测量婴儿的头部运动与母亲的手部运动之间的协调性。我们还测试了使用此类运动数据来研究具有CRQA的伙伴之间的行为耦合的可行性。我们证明,可以从标准清晰度视频记录中自动提取运动,并将其用于后续的CRQA中,以量化父母与婴儿运动之间的耦合。最后,我们使用称为各向异性CRQA的CRQA扩展来评估这种耦合的质量,并显示父母与婴儿运动之间的不对称动力学。当结合使用这些方法时,可以对行为进行自动编码和分类,与手动编码相比,这可以更有效地分析运动。

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