Robust Methods for Assessing the Characteristics of Locomotor Activity Based on Markerless Video Capture Data

M. Bogachev, K. Grigarevichius, N. Pyko, S. A. Pyko, M. Tsygankova, E. A. Plotnikova, T. V. Ageeva, Y. Mukhamedshina
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Abstract

Introduction. Analysis of locomotor activity is essential in a number of biomedical and pharmacological research designs, as well as environmental monitoring. The movement trajectories of biological objects can be represented by time series exhibiting a complex multicomponent structure and non-stationary dynamics, thus limiting the effectiveness of conventional correlation and spectral time series analysis methods. Recordings obtained using markerless technologies are typically characterized by enhanced noise levels, including both instrumental noise and anomalous errors associated with false estimates of the location of the points of interest, as well as gaps in the trajectories, promoting an urgent need in the development of robust methods to assess the characteristics of locomotor activity.Aim. Development of robust methods for assessing the characteristics of locomotor activity capable of efficient processing of noisy recordings obtained by markerless video-based motion capture systems.Materials and methods. In order to assess the characteristics of locomotor activity, the relative movements of body parts of laboratory animals were analyzed using the stability metrics of the mutual dynamics of their trajectories, their relative delays, as well as the relative duration of the recording fragments when relatively stable mutual dynamics could be observed. The local maxima of the cross-correlation function of two body fragments, the minima of the standard deviation of the difference between their Hilbert phases, as well as their relative delays, were used as the metrics of mutual dynamics.Results. The considered phase metrics were shown to explicitly reflect changes in locomotor activity, while the assessment of time delays using phase metric was shown to be prone to periodic error. The above limitation could be largely overcome using the correlation metrics, assuming that phase and correlation metrics could be combined.Conclusion. The proposed robust methods provide stable estimates of the characteristics of locomotor activity based on markerless video capture recordings, altogether increasing the efficiency of diagnostic procedures and assessment of the therapeutic effect during rehabilitation.
基于无标记视频捕捉数据的运动特征评估稳健方法
简介在许多生物医学和药理学研究设计以及环境监测中,运动活动分析都是必不可少的。生物物体的运动轨迹可以用时间序列来表示,表现出复杂的多成分结构和非稳态动态,从而限制了传统相关和频谱时间序列分析方法的有效性。使用无标记技术获得的记录通常具有噪声水平增高的特点,包括仪器噪声和与感兴趣点位置错误估计相关的异常误差,以及轨迹中的间隙,因此迫切需要开发稳健的方法来评估运动活动的特征。开发评估运动活动特征的稳健方法,以便有效处理无标记视频运动捕捉系统获得的噪声记录。为了评估运动活动的特征,我们使用运动轨迹相互动态的稳定性指标、相对延迟以及可以观察到相对稳定的相互动态时记录片段的相对持续时间来分析实验室动物身体各部分的相对运动。两个身体片段的交叉相关函数的局部最大值、它们的希尔伯特相位差的标准偏差的最小值以及它们的相对延迟被用作相互动态的度量。结果表明,所考虑的相位指标能明确反映运动活动的变化,而使用相位指标评估时间延迟则容易产生周期性误差。假设相位指标和相关性指标可以结合使用,那么上述限制在很大程度上可以通过相关性指标来克服。所提出的稳健方法可根据无标记视频捕获记录对运动活动特征进行稳定估计,从而提高诊断程序和康复治疗效果评估的效率。
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