基于机器学习方法的伦巴第效应研究

G. Korvel, P. Treigys, Krzysztof Kakol, Bożena Kostek
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引用次数: 0

摘要

摘要 伦巴第效应是指在有噪音的情况下,说话者的音调、强度和持续时间会不由自主地增加。它使在嘈杂环境中更有效地交流成为可能。本研究旨在探讨一种检测语音朗伯德效应的有效方法。研究了干扰噪音、房间类型和人的性别对检测过程的影响。首先,提取与伦巴第效应产生的语音变化有关的声学参数。中期统计建立在这些参数之上,并用于自相似矩阵的构建。它们构成了卷积神经网络 (CNN) 的输入数据。然后,将基于自相似性的方法与其他两种方法进行比较,即作为 CNN 输入的频谱图和结合 k 近邻算法的语音声学参数。实验研究表明,应用于伦巴第效应检测的自相似性方法优于其他两种方法。此外,自相似性方法的标准偏差值较小,证明了该方法的高准确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of the Lombard Effect Based on a Machine Learning Approach
Abstract The Lombard effect is an involuntary increase in the speaker’s pitch, intensity, and duration in the presence of noise. It makes it possible to communicate in noisy environments more effectively. This study aims to investigate an efficient method for detecting the Lombard effect in uttered speech. The influence of interfering noise, room type, and the gender of the person on the detection process is examined. First, acoustic parameters related to speech changes produced by the Lombard effect are extracted. Mid-term statistics are built upon the parameters and used for the self-similarity matrix construction. They constitute input data for a convolutional neural network (CNN). The self-similarity-based approach is then compared with two other methods, i.e., spectrograms used as input to the CNN and speech acoustic parameters combined with the k-nearest neighbors algorithm. The experimental investigations show the superiority of the self-similarity approach applied to Lombard effect detection over the other two methods utilized. Moreover, small standard deviation values for the self-similarity approach prove the resulting high accuracies.
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