IMPROVED VOICE-BASED BIOMETRICS USING MULTI-CHANNEL TRANSFER LEARNING

IF 0.2 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Youssouf Ismail Cherif, Abdelhakim Dahimene
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引用次数: 0

Abstract

Identifying the speaker has become more of an imperative thing to do in the modern age. Especially since most personal and professional appliances rely on voice commands or speech in general terms to operate. These systems need to discern the identity of the speaker rather than just the words that have been said to be both smart and safe. Especially if we consider the numerous advanced methods that have been developed to generate fake speech segments. The objective of this paper is to improve upon the existing voice-based biometrics to keep up with these synthesizers. The proposed method focuses on defining a novel and more speaker adapted features by implying artificial neural networks and transfer learning. The approach uses pre-trained networks to define a mapping from two complementary acoustic features to a speaker adapted phonetic features. The complementary acoustics features are paired to provide both information about how the speech segments are perceived (type 1 feature) and produced (type 2 feature). The approach was evaluated using both a small and large closed-speaker data set. Primary results are encouraging and confirm the usefulness of such an approach to extract speaker adapted features whether for classical machine learning algorithms or advanced neural structures such as LSTM or CNN.
使用多渠道迁移学习改进基于语音的生物识别技术
在现代社会,识别说话人已经成为一件非常必要的事情。特别是因为大多数个人和专业设备都依赖于语音命令或一般的语音来操作。这些系统需要识别说话者的身份,而不仅仅是那些被认为既聪明又安全的词语。特别是如果我们考虑到许多先进的方法已经被开发出来,以产生虚假的语音片段。本文的目的是改进现有的基于语音的生物识别技术,以跟上这些合成器的发展。该方法着重于通过隐含人工神经网络和迁移学习来定义一种新的、更适合说话人的特征。该方法使用预训练的网络来定义从两个互补的声学特征到说话者适应的语音特征的映射。互补声学特征配对,以提供有关如何感知语音片段(类型1特征)和产生语音片段(类型2特征)的信息。使用小型和大型封闭式扬声器数据集对该方法进行了评估。初步结果令人鼓舞,并证实了这种方法在提取说话人适应特征方面的实用性,无论是经典的机器学习算法还是先进的神经结构,如LSTM或CNN。
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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来源期刊
IADIS-International Journal on Computer Science and Information Systems
IADIS-International Journal on Computer Science and Information Systems COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
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