INTELLIGENT BUDDY
Abstract
Software agents known as voice assistants are able to understand human speech and answer with synthetic voices. The most well-known voice assistants, which are built into smartphones or specific home speakers, are Apple’s Siri, Amazon’s Alexa, Microsoft’ Cortana, and Google’s Assistant. Users can use voice commands to manage other basic chores like email, to-do lists, and calendars, as well as ask inquiries of personal assistants, operate home automation devices, and playback of media. By holding and analysing information in the context of the user, this engages the capacity for social communication through natural language processing. This research will examine the fundamental operations and typical characteristics of voice assistants in use today. The currently used system operates online and is kept up by a third party. This program will safeguard personal information from others and use the local database, speech recognition and synthesizer.
Keywords:
Speech recognition system, Voice assistants, Machine LearningPublished
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