Mahoney Joseph M, Rhudy Matthew B
a Mechanical Engineering, Berks College , The Pennsylvania State University , Reading , PA , USA.
J Med Eng Technol. 2019 Jan;43(1):25-32. doi: 10.1080/03091902.2019.1599073. Epub 2019 Apr 30.
With the rising popularity of activity tracking, there is a desire to not only count the number of steps a person takes, but also identify the type of step (e.g., walking or running) they are taking. For rehabilitation and athletic training, this difference is important to the prescribed regiment. Fourteen healthy adults walked, jogged and ran on a treadmill at three different constant speeds (1.21, 2.01, 2.68 m/s) for 90 s. An inertial measurement unit (IMU) with accelerometer and gyroscope was affixed to their left ankle. Collected acceleration and angular velocity data were partitioned into individual time-normalised strides. These data were used as features in the artificial neural network (ANN) that classified the type of stride. Several ANN models were tested: using only acceleration, only angular velocity and both. Using primarily acceleration data in the trained ANN yielded the best results (94% correct stride-type identification) after cross-validation. The ANN models were able to accurately classify the gait type of each stride using a single wearable IMU. The accuracy of the method should improve further as more data is added to the ANN training.
随着活动追踪越来越受欢迎,人们不仅希望计算一个人的步数,还希望识别他们所走步的类型(例如,行走或跑步)。对于康复和运动训练而言,这种差异对于规定的训练方案很重要。14名健康成年人在跑步机上以三种不同的恒定速度(1.21、2.01、2.68米/秒)行走、慢跑和跑步90秒。一个带有加速度计和陀螺仪的惯性测量单元(IMU)被固定在他们的左脚踝上。收集到的加速度和角速度数据被分割成单独的时间归一化步幅。这些数据被用作人工神经网络(ANN)中对步幅类型进行分类的特征。测试了几种人工神经网络模型:仅使用加速度、仅使用角速度以及同时使用两者。在交叉验证后,在经过训练的人工神经网络中主要使用加速度数据产生了最佳结果(步幅类型识别正确率为94%)。人工神经网络模型能够使用单个可穿戴IMU准确地对每个步幅的步态类型进行分类。随着更多数据添加到人工神经网络训练中,该方法的准确性应该会进一步提高。