Estimating Whole-Body Walking Motion from Inertial Measurement Units at Wrist and Heels Using Deep Learning

Yuji Kumano, S. Kanoga, Masataka Yamamoto, H. Takemura, M. Tada
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Abstract

A recurrent-neural-network-based deep-learning model was developed to estimate the three-axis joint angles of an entire body with 17 bones during walking from three inertial measurement units (IMUs) — one each on the left wrist and heels. In this model, the acceleration and angular velocity of the previous 49 frames and current frame were considered as inputs. The architecture comprises two hidden layers (two long short-term memory layers) and a dense layer. The performance of the model was evaluated using the National Institute of Advanced Industrial Science and Technology (AIST) Gait Database 2019 public dataset. Consequently, the root mean squared error of each joint angle was less than 12.28°. A comparison of the estimation results of the same model with IMUs at the pelvis and shanks revealed that the proposed model is advantageous in terms of balanced measurement accuracy and ease of use in realizing whole-body motion capture. Although the accuracy of the model was better than those of previous models in estimating the general whole-body motion from six IMUs, it was worse than that of a previous model in estimating only the lower-limb motion from three IMUs attached to the pelvis and shanks during walking. In the proposed model, IMUs are attached to the left wrist and heels, and whole-body motion can be easily captured using a smartwatch and smart shoes.
利用深度学习从手腕和脚跟的惯性测量单元估计全身行走运动
研究人员开发了一种基于循环神经网络的深度学习模型,通过三个惯性测量单元(imu)——左手腕和脚跟各一个——来估计具有17块骨头的整个身体在行走过程中的三轴关节角度。在该模型中,将前49帧和当前帧的加速度和角速度作为输入。该体系结构包括两个隐藏层(两个长短期记忆层)和一个密集层。使用美国国家先进工业科学技术研究所(AIST)步态数据库2019年公共数据集对模型的性能进行了评估。因此,各关节角的均方根误差均小于12.28°。将同一模型与骨盆和小腿的imu的估计结果进行比较,表明该模型在平衡测量精度和易于实现全身运动捕获方面具有优势。虽然该模型在估计6个imu的全身运动时的准确性优于先前的模型,但在仅估计行走时骨盆和小腿连接的3个imu的下肢运动时,该模型的准确性比先前的模型差。在提出的模型中,imu连接在左手腕和脚跟上,可以通过智能手表和智能鞋轻松捕捉全身运动。
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