Title :
Hierarchical Information Fusion for Global Displacement Estimation in Microsensor Motion Capture
Author :
Xiaoli Meng ; Zhi-qiang Zhang ; Jian-Kang Wu ; Wai-Choong Wong
Author_Institution :
Dept. of Bioeng., Nat. Univ. of Singapore, Singapore, Singapore
Abstract :
This paper presents a novel hierarchical information fusion algorithm to obtain human global displacement for different gait patterns, including walking, running, and hopping based on seven body-worn inertial and magnetic measurement units. In the first-level sensor fusion, the orientation for each segment is achieved by a complementary Kalman filter (CKF) which compensates for the orientation error of the inertial navigation system solution through its error state vector. For each foot segment, the displacement is also estimated by the CKF, and zero velocity update is included for the drift reduction in foot displacement estimation. Based on the segment orientations and left/right foot locations, two global displacement estimates can be acquired from left/right lower limb separately using a linked biomechanical model. In the second-level geometric fusion, another Kalman filter is deployed to compensate for the difference between the two estimates from the sensor fusion and get more accurate overall global displacement estimation. The updated global displacement will be transmitted to left/right foot based on the human lower biomechanical model to restrict the drifts in both feet displacements. The experimental results have shown that our proposed method can accurately estimate human locomotion for the three different gait patterns with regard to the optical motion tracker.
Keywords :
Kalman filters; biomedical equipment; biomedical optical imaging; body sensor networks; displacement measurement; gait analysis; image fusion; inertial navigation; inertial systems; magnetic variables measurement; microsensors; motion estimation; body-worn inertial measurement units; complementary Kalman filter; drift reduction; error state vector; estimate human locomotion; first-level sensor fusion; foot displacement estimation; foot segment; gait patterns; global displacement estimation; hierarchical information fusion algorithm; hopping; human lower biomechanical model; inertial navigation system solution; left-right foot locations; left-right lower limb; linked biomechanical model; magnetic measurement units; microsensor motion capture; optical motion tracker; orientation error; running; second-level geometric fusion; walking; zero velocity update; Acceleration; Biological system modeling; Biomechanics; Estimation; Gyroscopes; Humans; Vectors; Complementary Kalman filter (CKF); displacement estimation; gait pattern; human biomechanical model; sensor fusion; Accelerometry; Algorithms; Computer Simulation; Gait; Humans; Information Storage and Retrieval; Leg; Micro-Electrical-Mechanical Systems; Models, Biological; Models, Statistical;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2013.2248085