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Published on 12 November 2024
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Feng,Y. (2024). Present and future of vehicle navigation systems: Deep integration of technological innovation and intelligent driving. Advances in Engineering Innovation,13,49-54.
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Present and future of vehicle navigation systems: Deep integration of technological innovation and intelligent driving

Yudong Feng *,1,
  • 1 University of Shanghai for Science and Technology

* Author to whom correspondence should be addressed.

https://doi.org/10.54254/2977-3903/13/2024139

Abstract

Vehicle navigation systems are one of the essential tools for automotive intelligence development, playing a crucial role in the process. This study discusses the components, operation principles, classification, and latest technological advances of Vehicle navigation systems, aiming to reveal the current state of the latest technological applications of the system in the automotive industry. The study indicates that the core value of vehicle navigation systems lies in precise positioning, enhanced driving safety, intelligent route planning, and other aspects. At present, the market of vehicle navigation systems is witnessing steady growth and faces intense competition from mobile phone navigation. To hold the upper hand in the competition, the industry should utilize policy support from the government, facing up to challenges and seeking solutions to current problems. In the future, the vehicle navigation system should deeply integrate with artificial intelligence (AI), providing diverse, tailored navigation services for customers. These services should cover driving skills, driving habits, etc. Meanwhile, through constant technological innovation, user experience optimization, and the application of deep learning, the vehicle navigation system is expected to achieve more efficient human-machine interaction and enhanced driving safety and comfortability, thereby improving its competitiveness in the market and turning it into an indispensable intelligent companion for drivers.

Keywords

vehicle navigation system, terrain detection and segmentation, autonomous driving positioning

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Cite this article

Feng,Y. (2024). Present and future of vehicle navigation systems: Deep integration of technological innovation and intelligent driving. Advances in Engineering Innovation,13,49-54.

Data availability

The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.

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Journal:Advances in Engineering Innovation

Volume number: Vol.13
ISSN:2977-3903(Print) / 2977-3911(Online)

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