Deep Gait Tracking With Inertial Measurement Unit

05/10/2022
by   Jien-De Sui, et al.
0

This paper presents a convolutional neural network based foot motion tracking with only six-axis Inertial-Measurement-Unit (IMU) sensor data. The presented approach can adapt to various walking conditions by adopting differential and window based input. The training data are further augmented by sliding and random window samplings on IMU sensor data to increase data diversity for better performance. The proposed approach fuses predictions of three dimensional output into one model. The proposed fused model can achieve average error of 2.30+-2.23 cm in X-axis, 0.91+-0.95 cm in Y-axis and 0.58+-0.52 cm in Z-axis.

READ FULL TEXT
research
05/10/2022

Real-Time Wearable Gait Phase Segmentation For Running And Walking

Previous gait phase detection as convolutional neural network (CNN) base...
research
12/05/2017

Human activity recognition from mobile inertial sensors using recurrence plots

Inertial sensors are present in most mobile devices nowadays and such de...
research
05/31/2016

Robust Deep-Learning-Based Road-Prediction for Augmented Reality Navigation Systems

This paper proposes an approach that predicts the road course from camer...
research
11/30/2021

A multi-sensor human gait dataset captured through an optical system and inertial measurement units

Different technologies can acquire data for gait analysis, such as optic...
research
02/20/2018

Fusing Video and Inertial Sensor Data for Walking Person Identification

An autonomous computer system (such as a robot) typically needs to ident...
research
02/21/2022

CROMOSim: A Deep Learning-based Cross-modality Inertial Measurement Simulator

With the prevalence of wearable devices, inertial measurement unit (IMU)...
research
12/18/2021

An effective coaxiality error measurement for twist drill based on line structured light sensor

Since the structure of twist drill is complex, it is hard and challengin...

Please sign up or login with your details

Forgot password? Click here to reset