Author:
Sharma Jeevanshi,Maheshwari Rajat,Khan Salman,Khan Abid Ali
Abstract
In this paper, different machine learning and tabular learning classification algorithms have been studied and compared on the acute hand-gesture Electromyogram dataset. The comparative study between different models such as KNN, RandomForest, TabNet, etc. depicts that small datasets can achieve high-level accuracy along with the intuition of high-performing neural net architectures through tabular learning approaches like TabNet. The performed analysis produced an accuracy of 99.9% through TabNet while other conventional classifiers also gave satisfactory results with KNN being at highest achieving accuracy of 97.8 %.
Publisher
Inventive Research Organization
Cited by
1 articles.
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1. Hand Gesture Recognition using DenseNet201-Mediapipe Hybrid Modelling;2022 International Conference on Automation, Computing and Renewable Systems (ICACRS);2022-12-13