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Machine-Learning-Based Approach To Decoding Physiological And Neural Signals, Elnaz Lashgari
Machine-Learning-Based Approach To Decoding Physiological And Neural Signals, Elnaz Lashgari
Computational and Data Sciences (PhD) Dissertations
In recent years, machine learning algorithms have been developing rapidly, becoming increasingly powerful tools in decoding physiological and neural signals. The aim of this dissertation is to develop computational tools, and especially machine learning techniques, to identify the most effective methods for feature extraction and classification of these signals. This is particularly challenging due to the highly non-linear, non-stationery, and artifact- and noise-prone nature of these signals.
Among basic human-control tasks, reaching and grasping are ubiquitous in everyday life. I investigated different linear and non-linear dimensionality reduction techniques for feature extraction and classification of electromyography (EMG) during a reach-grasp-lift task. …