基于人工智能的混合语音认证

Bilal Bora, Ahmet Emin Emanet, Enes Elmaci, Derya Kandaz, Muhammed Kürşad Uçar
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摘要

生物识别身份验证系统揭示个人身体或行为的独特性,并通过与现有记录进行比较来识别身份。如今,许多生物识别系统,如指纹识别、手掌识别和人脸识别,都在被研究和使用。人声也是用于这一目的的技术之一。由于人声的这一特点,它可以在各个领域进行安全交易和身份验证。基于这些语音特征,我们使用了一个包含 66,569 条语音记录的数据集。为了从数据集中获得最大的收益,我们对这些语音记录进行了修改,使其包括来自 24 个不同人的 6 个句子,每个句子至少包含 6 个单词。缩减后的数据集中的语音被标记为属于同一人的句子和属于不同人的句子,并转换成矩阵形式。生物识别研究得出的相关性分数为 0.88。通过这些工作,证明了人工智能语音生物识别系统的可行性。
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Hybrid AI-based Voice Authentication
Biometric authentication systems reveal individuals' physical or behavioral uniqueness and identify them by comparing them with existing records. Today, many biometric recognition systems, such as fingerprint reading, palm reading, and face reading, are being studied and used. The human voice is also among the techniques used for this purpose. Due to this feature, the human voice performs secure transactions and authentication in various fields. Based on these voice features, we used a dataset of 66,569 voice recordings. The voice recordings were revised to include six sentences of at least six words each from 24 different people to get the maximum benefit from the dataset. The voices in the reduced dataset were labeled as sentences belonging to the same person and sentences belonging to different people and converted into matrix form. A biometric recognition study resulted in a correlation score of 0.88. As a result of these processes, the feasibility of a voice biometric recognition system with artificial intelligence has been demonstrated.
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