Deep learning based auto-labeling for sparse underwater freestyle marker-based optical motion capture using Qualisys Miqus M5U MoCap cameras

Golpayegani, Neda (2024) Deep learning based auto-labeling for sparse underwater freestyle marker-based optical motion capture using Qualisys Miqus M5U MoCap cameras. Masters thesis, Memorial University of Newfoundland.

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Abstract

This thesis proposes novel algorithms to automate cleaning and labeling of motion capture (MoCap) data specifically for underwater marker-based optical MoCap systems. Challenges related to sparse underwater freestyle MoCap data, captured using Qualisys Miqus M5U MoCap cameras, are explored using a dataset of 21 passive markers. A thorough review on MoCap denoising, recovery, alignment, and auto-labeling methods is conducted. The manual cleaning process using Qualisys Track Manager software and Automatic Identification of Markers function is explained. Then, a novel semi-supervised geometry-based labeling algorithm is developed based on distance and angle measurements with a visual evaluation of 100% accuracy. This algorithm includes sub algorithms for extraneous removal via norm differences, anomaly detection, pelvis detection based on Principal Component Analysis, recovery of missing markers, and detection of corresponding reappearing markers along with a side detection algorithm. Finally, a deep learning-based auto-labeling algorithm utilizing Long-Short-Term Memory is proposed, employing Hungarian label assignment and Procrustes analysis to label unlabeled data. The network accepts the 3D relative positions of markers, velocity, and acceleration. The ground truth and the training set are generated by the geometry-based algorithm and enhanced using data augmentation and transfer learning of simulated trajectories. The pelvis detection technique automates the alignment, and the extraneous removal algorithm enhances accuracy from 66% to 98%. These algorithms work effectively in the presence of outliers, extraneous, ghosts, and missing markers. Future work will evaluate the algorithm with more data and ghost markers and explore a more robust body side detection algorithm.

Item Type: Thesis (Masters)
URI: http://research.library.mun.ca/id/eprint/16784
Item ID: 16784
Additional Information: Includes bibliographical references
Keywords: MoCap, auto-labeling, underwater, deep learning
Department(s): Engineering and Applied Science, Faculty of
Date: October 2024
Date Type: Submission
Digital Object Identifier (DOI): https://doi.org/10.48336/70bt-e804
Library of Congress Subject Heading: Deep learning (Machine learning); Motion detectors; Cameras; Underwater imaging systems; Optical data processing; Algorithms

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