Volume no :
10 |
Issue no :
01
Article Type :
Google Scholar
Author :
K Murugan, Harish B, Harish P, Joshua J, Madhankumar M
Published Date :
07 - April - 2026
Publisher :
Journal of Artificial Intelligence and Cyber Security (JAICS)
Page No: 1 - 6
Abstract : Tourism plays a significant role in the economic development of many countries by promoting cultural exchange, generating employment, and supporting local businesses. However, tourists often face challenges such as lack of real-time information, language barriers, difficulty in discovering nearby attractions, and limited access to personalized travel guidance. These challenges can negatively impact travel experiences and reduce the efficiency of tourism exploration. This paper proposes an AI-Powered Smart Heritage Tourism Assistant for Real-Time Multilingual Visitor Guidance, designed to enhance the overall tourism experience through intelligent and user-centric features. The system integrates advanced technologies such as Artificial Intelligence, location-based services, and Natural Language Processing to provide tourists with real-time recommendations and interactive assistance. The proposed system collects and processes data such as user preferences, location information, and heritage site details to generate personalized recommendations. It also incorporates multilingual translation capabilities to ensure accessibility for users from diverse linguistic backgrounds. An AI-based chatbot is integrated to provide conversational support, answer user queries, and guide users throughout their journey. The system is developed as a mobile application using Flutter for the frontend, with backend support for data processing and API integration. Experimental evaluation shows that the system improves user engagement, enhances accessibility, and provides efficient navigation and information retrieval for tourists. The proposed solution contributes to the promotion of cultural heritage, improves tourism accessibility, and delivers a smarter and more interactive travel experience. Future enhancements may include augmented reality features, ofline support, and advanced AI-based recommendation models for improved personalization.
Keyword Smart Tourism, AI-Based Tourism System, Heritage Tourism, Multilingual Translation, Chatbot Assistance, Location-Based Services, Personalized Recommendation System, Mobile Application Development
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