Abstract

Recently, deep models have been very popular because they achieve excellent performance with many classification problems. Deep networks have high computational complexities and require specific hardware. To overcome this problem (without decreasing classification ability), a hand-modeled feature selection method is proposed in this paper. A new shape-based local feature extractor is presented which uses the geometric shape of the frustum. By using a frustum pattern, textural features are generated. Moreover, statistical features have been extracted in this model. Textures and statistics features are fused, and a hybrid feature extraction phase is obtained; these features are low-level. To generate high level features, tunable Q factor wavelet transform (TQWT) is used. The presented hybrid feature generator creates 154 feature vectors; hence, it is named Frustum154. In the multilevel feature creation phase, this model can select the appropriate feature vectors automatically and create the final feature vector by merging the appropriate feature vectors. Iterative neighborhood component analysis (INCA) chooses the best feature vector, and shallow classifiers are then used. Frustum154 has been tested on three basic hand-movement sEMG datasets. Hand-movement sEMG datasets are commonly used in biomedical engineering, but there are some problems in this area. The presented models generally required one dataset to achieve high classification ability. In this work, three sEMG datasets have been used to test the performance of Frustum154. The presented model is self-organized and selects the most informative subbands and features automatically. It achieved 98.89%, 94.94%, and 95.30% classification accuracies using shallow classifiers, indicating that Frustum154 can improve classification accuracy.

Highlights

  • Electromyography (EMG) is a diagnostic procedure to assess the health of muscles and the nerve cells that control them

  • The evaluation results were presented according to the following parameters: accuracy (99.14%), geometric mean (99.13%), precision (99.14%), and F1-score (99.14%), employing k nearest neighbor (kNN) classifier with 10-fold cross-validation

  • We propose a hand-modeled learning method for successful classification model for one-dimensional signals (sEMGs) signal classification with high performance

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Summary

Introduction

Electromyography (EMG) is a diagnostic procedure to assess the health of muscles and the nerve cells that control them (motor neurons). With surface EMG, on the other hand, noninvasive electrodes are used to detect the electrical signals of the muscle. Electromyography (EMG) signals can be used to diagnose neuromuscular diseases through muscles and nerve cells that control muscles [5,6]. These nerve cells, known as motor neurons, transmit electrical signals that cause the muscle to contract and relax. These electrical signals may be recorded using different techniques, e.g., EMG signals obtained with the help of electrodes connected to surface, such as the hands and arms, or needles/wires connected to muscle tissue [7]

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