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Smart Annotation of Cyclic Data Using Hierarchical Hidden Markov Models

机译:使用分层隐马尔可夫模型的循环数据智能注释

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摘要

Cyclic signals are an intrinsic part of daily life, such as human motion and heart activity. The detailed analysis of them is important for clinical applications such as pathological gait analysis and for sports applications such as performance analysis. Labeled training data for algorithms that analyze these cyclic data come at a high annotation cost due to only limited annotations available under laboratory conditions or requiring manual segmentation of the data under less restricted conditions. This paper presents a smart annotation method that reduces this cost of labeling for sensor-based data, which is applicable to data collected outside of strict laboratory conditions. The method uses semi-supervised learning of sections of cyclic data with a known cycle number. A hierarchical hidden Markov model (hHMM) is used, achieving a mean absolute error of 0.041 ± 0.020 s relative to a manually-annotated reference. The resulting model was also used to simultaneously segment and classify continuous, ‘in the wild’ data, demonstrating the applicability of using hHMM, trained on limited data sections, to label a complete dataset. This technique achieved comparable results to its fully-supervised equivalent. Our semi-supervised method has the significant advantage of reduced annotation cost. Furthermore, it reduces the opportunity for human error in the labeling process normally required for training of segmentation algorithms. It also lowers the annotation cost of training a model capable of continuous monitoring of cycle characteristics such as those employed to analyze the progress of movement disorders or analysis of running technique.
机译:循环信号是日常生活的固有部分,例如人体运动和心脏活动。对它们的详细分析对于诸如病理步态分析之类的临床应用以及对于诸如性能分析之类的体育应用而言都是重要的。用于分析这些循环数据的算法的标记训练数据的注释成本很高,这是因为在实验室条件下只能使用有限的注释,或者在限制条件较少的情况下需要手动分割数据。本文提出了一种智能注释方法,可以减少基于传感器的数据的标签成本,该方法适用于在严格实验室条件下收集的数据。该方法使用半监督学习周期数已知的周期数据。使用了分层隐式马尔可夫模型(hHMM),相对于手动注释的参考,平均绝对误差为0.041±0.020 s。生成的模型还用于同时对连续的“野外”数据进行分类和分类,证明了使用hHMM(在有限的数据部分进行训练)来标记完整的数据集的适用性。该技术获得了与完全监督的等效结果相当的结果。我们的半监督方法具有减少注释成本的显着优势。此外,它减少了训练分割算法通常所需的标记过程中人为错误的机会。它还降低了训练模型的注释成本,该模型能够连续监视周期特征,例如用于分析运动障碍的进展或分析跑步技术的特征。

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