PCA/LDA Approach For Text-independent Speaker Recognition
2016 Β· Zhenhao Ge, Sudhendu R. Sharma, Mark J. T. Smith
Abstract
Various algorithms for text-independent speaker recognition have been developed through the decades, aiming to improve both accuracy and efficiency. This paper presents a novel PCA/LDA-based approach that is faster than traditional statistical model-based methods and achieves competitive results. First, the performance based on only PCA and only LDA is measured; then a mixed model, taking advantages of both methods, is introduced. A subset of the TIMIT corpus composed of 200 male speakers, is used for enrollment, validation and testing. The best results achieve 100%; 96% and 95% classification rate at population level 50; 100 and 200, using 39-dimensional MFCC features with delta and double delta. These results are based on 12-second text-independent speech for training and 4-second data for test. These are comparable to the conventional MFCC-GMM methods, but require significantly less time to train and operate.
Authors
(none)
Tags
Stats
Related papers
- A Text-independent Speaker Verification Model: A Comparative Analysis (2017)8.60
- Multiobjective Optimization Training Of PLDA For Speaker Verification (2018)2.26
- Multi-label Training For Text-independent Speaker Identification (2022)0.00
- A Novel Speech Feature Fusion Algorithm For Text-independent Speaker Recognition (2022)3.58
- Frequency And Temporal Convolutional Attention For Text-independent Speaker Recognition (2019)0.00
- Domain Adaptation Based Speaker Recognition On Short Utterances (2016)0.00
- Exploring The Use Of An Unsupervised Autoregressive Model As A Shared Encoder For Text-dependent Speaker Verification (2020)5.84
- The IBM Speaker Recognition System: Recent Advances And Error Analysis (2016)8.60