Title :
Heterogeneous Data Fusion Algorithm for Pedestrian Navigation via Foot-Mounted Inertial Measurement Unit and Complementary Filter
Author_Institution :
GIPSA-Lab., Univ. of Grenoble Alpes, Grenoble, France
Abstract :
This paper proposes a foot-mounted zero velocity update (ZVU) aided inertial measurement unit (IMU) filtering algorithm for pedestrian tracking in indoor environment. The algorithm outputs are the foot kinematic parameters that include foot orientation, position, velocity, acceleration, and gait phase. The foot motion filtering algorithm incorporates methods for orientation estimation, gait detection, and position estimation. A novel complementary filter is introduced to better preprocess the sensor data from a foot-mounted IMU containing triaxial angular rate sensors, accelerometers, and magnetometers and to estimate the foot orientation without resorting to global positioning system data. A gait detection is accomplished using a simple states detector that transitions between states based on acceleration and angular rate measurements. Once foot orientation is computed, position estimates are obtained using integrating acceleration and velocity data, which has been corrected at step stance phase for drift using an implemented ZVU algorithm, leading to a position accuracy improvement. We show our findings experimentally by using of a commercial IMU during regular human walking trials in a typical public building. Experiment results show that the positioning approach achieves approximately a position accuracy around 0.4% and improves the performance regarding recent works of literature.
Keywords :
Global Positioning System; acceleration measurement; accelerometers; angular measurement; filtering theory; gait analysis; inertial navigation; magnetometers; motion measurement; pedestrians; position measurement; sensor fusion; velocity measurement; Global Positioning System; IMU; ZVU; acceleration measurement; accelerometer; angular rate measurement; complementary filtering algorithm; foot kinematic parameter; foot motion filtering algorithm; foot orientation; foot-mounted inertial measurement unit; foot-mounted zero velocity update; gait detection; heterogeneous data fusion algorithm; human walking trial; indoor environment; magnetometer; pedestrian navigation; pedestrian tracking; position estimation; public building; step stance phase; triaxial angular rate sensor; velocity measurement; Acceleration; Accelerometers; Estimation; Foot; Magnetometers; Quaternions; Vectors; Attitude estimation; complementary filter (CF); foot motion; inertial measurement units (IMU); pedestrian; pedestrian navigation; position estimation; zero velocity update (ZVU);
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2014.2335912