Comparative analysis of speaker identification performance using deep learning, machine learning, and novel subspace classifiers with multiple feature extraction techniques

•For the first time in the literature, speaker identification was achieved using HCF.•Many hybrid algorithms were tested in the study.•Six different feature vectors were used in the study.•SF-CVA classifier obtained a 99% speaker recognition rate for most tests. Speaker identification is vital in va...

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Veröffentlicht in:Digital signal processing 2025-01, Vol.156, p.104811, Article 104811
Hauptverfasser: Keser, Serkan, Gezer, Esra
Format: Artikel
Sprache:eng
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Zusammenfassung:•For the first time in the literature, speaker identification was achieved using HCF.•Many hybrid algorithms were tested in the study.•Six different feature vectors were used in the study.•SF-CVA classifier obtained a 99% speaker recognition rate for most tests. Speaker identification is vital in various application domains, such as automation, security, and enhancing user experience. In the literature, convolutional neural network (CNN) or recurrent neural network (RNN) classifiers are generally used due to the one-dimensional time series of speech signals. However, new approaches using subspace classifiers are also crucial in speaker identification. In this study, in addition to the newly developed subspace classifiers for speaker identification, traditional classification algorithms, and various hybrid algorithms are analyzed in terms of performance. Stacked Features-Common Vector Approach (SF-CVA) and Hybrid CVA-Fisher Linear Discriminant Analysis (HCF) subspace classifiers are used for speaker identification for the first time in the literature. In addition, CVA is evaluated for the first time for speaker identification using hybrid deep learning algorithms. The study includes Recurrent Neural Network-Long Short-Term Memory (RNN-LSTM), i-vector + Probabilistic Linear Discriminant Analysis (i-vector+PLDA), Time Delayed Neural Network (TDNN), AutoEncoder+Softmax (AE+Softmax), K-Nearest Neighbors (KNN), Support Vector Machine (SVM), Common Vector Approach (CVA), SF-CVA, HCF, and Alexnet classifiers for speaker identification. This study uses MNIST, TIMIT and Voxceleb1 databases for clean and noisy speech signals. Six different feature structures are tested in the study. The six different feature extraction approaches consist of Mel Frequency Cepstral Coefficients (MFCC)+Pitch, Gammatone Filter Bank Cepstral Coefficients (GTCC)+Pitch, MFCC+GTCC+Pitch+seven spectral features, spectrograms,i-vectors, and Alexnet feature vectors. High accuracy rates were obtained, especially in tests using SF-CVA. RNN-LSTM, i-vector+KNN, AE+Softmax, TDNN, and i-vector+HCF classifiers also gave high test accuracy rates. [Display omitted]
ISSN:1051-2004
DOI:10.1016/j.dsp.2024.104811