Faculty of Computer and Information Science, University of Ljubljana, Večna Pot 113, 1000 Ljubljana, Slovenia.
Faculty of Electrical Engineering, University of Ljubljana, Tržaška Cesta 25, 1000 Ljubljana, Slovenia.
Sensors (Basel). 2021 May 19;21(10):3527. doi: 10.3390/s21103527.
Inertial sensor-based step length estimation has become increasingly important with the emergence of pedestrian-dead-reckoning-based (PDR-based) indoor positioning. So far, many refined step length estimation models have been proposed to overcome the inaccuracy in estimating distance walked. Both the kinematics associated with the human body during walking and actual step lengths are rarely used in their derivation. Our paper presents a new step length estimation model that utilizes acceleration magnitude. To the best of our knowledge, we are the first to employ principal component analysis (PCA) to characterize the experimental data for the derivation of the model. These data were collected from anatomical landmarks on the human body during walking using a highly accurate optical measurement system. We evaluated the performance of the proposed model for four typical smartphone positions for long-term human walking and obtained promising results: the proposed model outperformed all acceleration-based models selected for the comparison producing an overall mean absolute stride length estimation error of 6.44 cm. The proposed model was also least affected by walking speed and smartphone position among acceleration-based models and is unaffected by smartphone orientation. Therefore, the proposed model can be used in the PDR-based indoor positioning with an important advantage that no special care regarding orientation is needed in attaching the smartphone to a particular body segment. All the sensory data acquired by smartphones that we utilized for evaluation are publicly available and include more than 10 h of walking measurements.
基于惯性传感器的步长估计随着基于行人航位推算 (PDR) 的室内定位技术的出现变得越来越重要。到目前为止,已经提出了许多改进的步长估计模型,以克服估计行走距离的不准确性。在推导过程中,很少使用与人体行走相关的运动学和实际步长。我们的论文提出了一种新的步长估计模型,该模型利用加速度幅度。据我们所知,我们是第一个利用主成分分析 (PCA) 来描述实验数据以推导出该模型的人。这些数据是使用高精度的光学测量系统从人体的解剖学标志在行走过程中收集的。我们评估了该模型在长期人类行走时四种典型智能手机位置下的性能,并取得了令人鼓舞的结果:与所选的所有基于加速度的模型相比,该模型的总体平均绝对步长估计误差为 6.44 厘米,表现最佳。与基于加速度的模型相比,该模型受行走速度和智能手机位置的影响最小,并且不受智能手机方向的影响。因此,该模型可以用于基于 PDR 的室内定位,具有一个重要的优势,即在将智能手机连接到特定身体部位时,不需要特别注意方向。我们用于评估的智能手机所采集的所有感官数据都是公开的,包括超过 10 小时的行走测量数据。