Institut de Biomecanique Humaine Georges Charpak Arts et Metiers Institute of Technology Paris, France.
Institut de Biomecanique Humaine Georges Charpak Arts et Metiers Institute of Technology Paris, France; Orthopedic Surgery Unit, Georges Pompidou European Hospital, Paris, France.
Gait Posture. 2021 May;86:70-76. doi: 10.1016/j.gaitpost.2021.03.003. Epub 2021 Mar 6.
The deep learning-based human pose estimation methods, which can estimate joint centers position, have achieved promising results on the publicly available human pose datasets (e.g., Human3.6 M). However, these datasets may be less efficient for gait study, particularly for clinical applications, because of the limited number of subjects, their homogeneity (all asymptomatic adults), and the errors introduced by marker placement on subjects' regular clothing.
How a new human pose dataset, adapted for gait study, could contribute to the advancement and evaluation of marker-less motion capture systems?
A marker-less system, based on deep learning-based pose estimation methods, was proposed. A new dataset (ENSAM dataset) was collected. Twenty-two asymptomatic adults, one adult with scoliosis, one adult with spondylolisthesis, and seven children with bone disease performed ten walking trials, while being recorded both by the proposed marker-less system and a reference system - combining a marker-based motion capture system and a medical imaging system (EOS). The dataset was split into training and test sets. The pose estimation method, already trained on the Human3.6 M dataset, was evaluated on the ENSAM test set, then reevaluated after further training on the ENSAM training set. The joints coordinates were evaluated, using Bland-Altman bias and 95 % confidence interval, and joint position error (the Euclidean distance between the estimated joint centers and the corresponding reference values).
The Bland-Altman 95 % confidence intervals were substantially improved after finetuning the pose estimation method on the ENSAM training set (e.g., from 106.9 mm to 17.4 mm for the hip joint). With the new dataset and approach, the mean joint position error varied from 6.2 mm for ankles to 21.1 mm for shoulders.
The proposed marker-less system achieved promising results in terms of joint position errors. Future studies are necessary to assess the system in terms of gait parameters.
基于深度学习的人体姿态估计方法可以估计关节中心点的位置,在公开的人体姿态数据集(如 Human3.6M)上取得了有前景的成果。然而,这些数据集对于步态研究可能效率较低,特别是对于临床应用而言,因为其包含的研究对象数量有限、研究对象同质性高(均为无症状成年人),以及标记物在研究对象日常穿着上的放置所带来的误差。
专门为步态研究而设计的新人体姿态数据集如何有助于无标记运动捕捉系统的改进和评估?
提出了一种基于基于深度学习的人体姿态估计方法的无标记系统。收集了一个新的数据集(ENSAM 数据集)。22 名无症状成年人、1 名脊柱侧凸患者、1 名腰椎滑脱患者和 7 名患有骨骼疾病的儿童进行了 10 次行走试验,分别由所提出的无标记系统和一个参考系统(结合基于标记的运动捕捉系统和医学成像系统(EOS))进行记录。数据集被分为训练集和测试集。已经在 Human3.6M 数据集上训练过的姿态估计方法在 ENSAM 测试集上进行了评估,然后在 ENSAM 训练集上进一步训练后再次进行评估。使用 Bland-Altman 偏差和 95%置信区间评估关节坐标,并评估关节位置误差(估计的关节中心点与相应参考值之间的欧几里得距离)。
在 ENSAM 训练集上对姿态估计方法进行微调后,Bland-Altman 95%置信区间得到了显著改善(例如,髋关节从 106.9mm 到 17.4mm)。使用新数据集和方法,平均关节位置误差从踝关节的 6.2mm 到肩部的 21.1mm 不等。
所提出的无标记系统在关节位置误差方面取得了有前景的结果。未来的研究需要评估该系统在步态参数方面的性能。