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Estimation of gait normality index based on point clouds through deep auto-encoder

机译:基于深度云通过深度自动编码器的步态正常指数估计

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Abstract This paper proposes a method estimating an index that indicates human gait normality based on a sequence of 3D point clouds representing the walking motion of a subject. A cylinder-based histogram is extracted from each cloud to reduce the number of data dimensions as well as highlight gait-related characteristics. A model of deep neural network is finally formed from such histograms of normal gait patterns to provide gait normality indices supporting gait assessment tasks. The ability of our approach is demonstrated using a dataset of 9 different gait types performed by 9 subjects and two other datasets converted from mocap data. The experimental results are also compared with other related methods that process different input data types including silhouette, depth map, and skeleton as well as state-of-the-art deep learning approaches working on point cloud.
机译:摘要本文提出了一种估计基于代表主题的步行运动的3D点云序列来估计指示人类步态正常性的索引的方法。从每个云中提取基于圆柱的直方图,以减少数据尺寸的数量,以及突出显示的步态相关的特性。最终从正常步态模式的这种直方图形成深度神经网络模型,以提供支持步态评估任务的步态正常指标。使用由9个科目和从Mocap数据转换的另外两个数据集执行的9种不同步态类型的数据集来证明我们的方法的能力。与其他相关方法进行比较实验结果,这些方法处理不同的输入数据类型,包括轮廓,深度图和骨架以及在点云上工作的最先进的深度学习方法。

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