Evaluating the Efficacy of Traditional Machine Learning Models in Speaker Recognition: A Comparative Study Using the LibriSpeech Dataset

Gregorius Airlangga
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Abstract

The efficacy of machine learning models in speaker recognition tasks is critical for advancements in security systems, biometric authentication, and personalized user interfaces. This study provides a comparative analysis of three prominent machine learning models: Naive Bayes, Logistic Regression, and Gradient Boosting, using the LibriSpeech test-clean dataset—a corpus of read English speech from audiobooks designed for training and evaluating speech recognition systems. Mel-Frequency Cepstral Coefficients (MFCCs) were extracted as features from the audio samples to represent the power spectrum of the speakers’ voices. The models were evaluated based on precision, recall, F1-score, and accuracy to determine their performance in correctly identifying speakers. Results indicate that Logistic Regression outperformed the other models, achieving nearly perfect scores across all metrics, suggesting its superior capability for linear classification in high-dimensional spaces. Naive Bayes also demonstrated high efficiency and robustness, despite the inherent assumption of feature independence, while Gradient Boosting showed slightly lower performance, potentially due to model complexity and overfitting. The study underscores the potential of simpler machine learning models to achieve high accuracy in speaker recognition tasks, particularly where computational resources are limited. However, limitations such as the controlled nature of the dataset and the focus on a single feature type were noted, with recommendations for future research to include more diverse environmental conditions and feature sets.
评估传统机器学习模型在说话人识别中的功效:使用 LibriSpeech 数据集的比较研究
机器学习模型在扬声器识别任务中的功效对于安全系统、生物识别身份验证和个性化用户界面的进步至关重要。本研究对三种著名的机器学习模型进行了比较分析:LibriSpeech test-clean 数据集是一个从有声读物中读取英语语音的语料库,用于训练和评估语音识别系统。Mel-Frequency Cepstral Coefficients (MFCC) 作为音频样本的特征被提取出来,以表示说话者声音的功率谱。根据精确度、召回率、F1 分数和准确度对模型进行评估,以确定它们在正确识别说话者方面的性能。结果表明,逻辑回归的表现优于其他模型,在所有指标上都几乎达到了满分,这表明它在高维空间的线性分类方面具有卓越的能力。直觉贝叶斯模型也表现出了高效率和鲁棒性,尽管其固有的假设特征是独立的,而梯度提升模型的性能略低,这可能是由于模型的复杂性和过度拟合造成的。这项研究强调了较简单的机器学习模型在扬声器识别任务中实现高准确率的潜力,尤其是在计算资源有限的情况下。不过,研究也指出了一些局限性,如数据集的可控性和对单一特征类型的关注,并建议未来的研究应包括更多样化的环境条件和特征集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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