VOICE-BASED IDENTIFICATION IN IOT: AN OVERVIEW
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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