Smart Parking Space Detection with Generative Artificial Intelligence and Large Language Models

Authors

DOI:

https://doi.org/10.55632/pwvas.v96i1.1063

Abstract

CAMERON VU, Dept of Computer Science and Math & ENGR, Shepherd  University, Shepherdstown, WV, 25443, and DARIA PANOVA, Dept of Computer Science and Math & ENGR, Shepherd  University, Shepherdstown, WV, 25443, and JOSIAH KOWALSKI, Dept of Computer Science and Math & ENGR, Shepherd  University, Shepherdstown, WV, 25443, and Dr. W. LIAO  (Faculty Advisor), Dept of Computer Science and Math & ENGR, Shepherd  University, Shepherdstown, WV, 25443, and Dr. O. Guzide (Faculty Advisor), Dept of Computer Science and Math & ENGR, Shepherd  University, Shepherdstown, WV, 25443. Smart Parking Space Detection with Generative Artificial Intelligence and Large Language Models.

The increasing relevance of generative AI and large language models is reshaping various sectors of modern society. These advancements have spurred notable progress in fields such as healthcare, finance, and education. Yet, the application of AI extends beyond expert domains, offering simplified solutions to everyday tasks for the general populace.

This project harnesses the power of generative artificial intelligence and large language models to develop a practical application: smart parking space detection. By leveraging these technologies, individuals can effortlessly ascertain the availability of parking spots in monitored lots via camera or photographic monitoring, facilitated by a straightforward algorithm. The overarching objective is twofold: to engineer a user-friendly system utilizing generative AI principles and to demonstrate the potential for such technologies to enhance the daily experiences of ordinary individuals.

Author Biography

Weidong Liao, Shepherd University

Associate Professor of Computer and Information Sciences

Published

2024-04-18

How to Cite

Vu, C., Panova, D., Kowalski, J., Liao, W., & Guzide, O. (2024). Smart Parking Space Detection with Generative Artificial Intelligence and Large Language Models. Proceedings of the West Virginia Academy of Science, 96(1). https://doi.org/10.55632/pwvas.v96i1.1063

Issue

Section

Meeting Abstracts-Poster