EMAHA-DB1: A New Upper Limb sEMG Dataset for Classification of Activities of Daily Living
Naveen Kumar Karnam, Anish Chand Turlapaty, Shiv Ram Dubey, and, Balakrishna Gokaraju

TL;DR
This paper introduces EMAHA-DB1, a comprehensive sEMG dataset for classifying daily activities, demonstrating its utility through machine learning classification accuracy and potential for prosthetic development.
Contribution
The paper presents a new multi-channel sEMG dataset for ADL classification and evaluates its effectiveness using multiple machine learning classifiers.
Findings
Achieved 83.21% accuracy on FAABOS categories with SVM.
Achieved 75.39% accuracy on 22 hand activities with SVM.
Dataset can serve as a benchmark for sEMG analysis and prosthetic development.
Abstract
In this paper, we present electromyography analysis of human activity - database 1 (EMAHA-DB1), a novel dataset of multi-channel surface electromyography (sEMG) signals to evaluate the activities of daily living (ADL). The dataset is acquired from 25 able-bodied subjects while performing 22 activities categorised according to functional arm activity behavioral system (FAABOS) (3 - full hand gestures, 6 - open/close office draw, 8 - grasping and holding of small office objects, 2 - flexion and extension of finger movements, 2 - writing and 1 - rest). The sEMG data is measured by a set of five Noraxon Ultium wireless sEMG sensors with Ag/Agcl electrodes placed on a human hand. The dataset is analyzed for hand activity recognition classification performance. The classification is performed using four state-ofthe-art machine learning classifiers, including Random Forest (RF), Fine K-Nearest…
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Taxonomy
TopicsMuscle activation and electromyography studies · Advanced Sensor and Energy Harvesting Materials · EEG and Brain-Computer Interfaces
MethodsSupport Vector Machine
