VOICE-BASED IDENTIFICATION IN IOT: AN OVERVIEW

Авторы

  • Hamiyev A.T
  • Kholiyorov Kh.A

Ключевые слова:

Keywords: Voice-based identification, Internet of Things (IoT), Biometric security, Smart homes, Data collection, Network layer, Application layer, Machine learning algorithms, Unique voiceprints.

Аннотация

Abstract. This article explores the critical aspects of voice-based identification
within the context of Internet of Things (IoT) technologies. The rise of mobile
applications has increased the demand for voice identification. As a biometric security
method, voice identification provides effective protection against cyber threats by
creating unique voiceprints based on the user's voice [1]. IoT systems consist of three
primary layers: the perception layer, the network layer, and the application layer, each
playing a role in data collection and processing. The article also details the technologies
used for voice-based identification and their applications in smart homes, healthcare,
agriculture, and the automotive industry. Voice identification is pivotal in enhancing
user experience and security within IoT systems.

Библиографические ссылки

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Опубликован

2024-06-20

Как цитировать

Hamiyev A.T, & Kholiyorov Kh.A. (2024). VOICE-BASED IDENTIFICATION IN IOT: AN OVERVIEW . Tadqiqotlar, 40(3), 189–191. извлечено от http://tadqiqotlar.uz/index.php/new/article/view/3926