Litcius/Paper detail

From raw measurements to human pose - a dataset with low-cost and high-end inertial-magnetic sensor data

Manuel Palermo, Sara M. Cerqueira, João André, Ántónio Pereira, Cristina P. Santos

2022Scientific Data13 citationsDOIOpen Access PDF

Abstract

Wearable technology is expanding for motion monitoring. However, open challenges still limit its widespread use, especially in low-cost systems. Most solutions are either expensive commercial products or lower performance ad-hoc systems. Moreover, few datasets are available for the development of complete and general solutions. This work presents 2 datasets, with low-cost and high-end Magnetic, Angular Rate, and Gravity(MARG) sensor data. Provides data for the complete inertial pose pipeline analysis, starting from raw data, sensor-to-segment calibration, multi-sensor fusion, skeleton-kinematics, to complete Human pose. Contains data from 21 and 10 participants, respectively, performing 6 types of sequences, presenting high variability and complex dynamics with almost complete range-of-motion. Amounts to 3.5 M samples, synchronized with a ground-truth inertial motion capture system. Presents a method to evaluate data quality. This database may contribute to develop novel algorithms for each pipeline's processing steps, with applications in inertial pose estimation algorithms, human movement forecasting, and motion assessment in industrial or rehabilitation settings. All data and code to process and analyze the complete pipeline is freely available.

Topics & Concepts

Computer sciencePipeline (software)Inertial measurement unitMotion captureSensor fusionRaw dataArtificial intelligenceWearable computerPoseComputer visionGround truthInertial frame of referenceReal-time computingMotion (physics)Embedded systemQuantum mechanicsProgramming languagePhysicsInertial Sensor and NavigationGait Recognition and AnalysisHand Gesture Recognition Systems