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3DPH
2009

Discriminative Human Full-Body Pose Estimation from Wearable Inertial Sensor Data

14 years 1 months ago
Discriminative Human Full-Body Pose Estimation from Wearable Inertial Sensor Data
Abstract. In this paper, a method is presented that allows reconstructing the full-body pose of a person in real-time, based on the limited input from a few wearable inertial sensors. Our method uses Gaussian Process Regression to learn the person-specific functional relationship between the sensor measurements and full-body pose. We generate training data by recording sample movements for different activities simultaneously using inertial sensors and an optical motion capture system. Since our approach is discriminative, pose prediction from sensor data is efficient and does not require manual initialization or iterative optimization in pose space. We also propose a SVM-based scheme to classify the activities based on inertial sensor data. An evaluation is performed on a dataset of movements, such as walking or golfing, performed by different actors. Our method is capable of reconstructing the full-body pose from as little as four inertial sensors with an average angular error of 4-6 ...
Loren Arthur Schwarz, Diana Mateus, Nassir Navab
Added 08 Nov 2010
Updated 08 Nov 2010
Type Conference
Year 2009
Where 3DPH
Authors Loren Arthur Schwarz, Diana Mateus, Nassir Navab
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