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Abstract

The purpose of this project was to create a proof-of-concept vision based automated parking space monitoring system to monitor the number of empty parking spaces in a defined area. This project was specifically targeted toward parking lot J at the University of Southern Indiana with a desired camera placement on the third floor of the Business and Engineering Center. This lot was selected as it has limited spaces while being the closest lot to several university buildings, resulting in high vehicle and pedestrian traffic during peak times. The original idea to solve this proposed by various faculty was to implement a camera and image processing solution in a thirdfloor window of the USI Business and Engineering building as it would be possible to do so with no added infrastructure. A computer vision model using the opensource program TensorFlow was selected as a solution to this problem due to the relatively low cost and minimal necessary infrastructure for operation. This software was implemented on an NVIDIA Jetson Nano using the SSD Mobilenet detection architecture. A transfer learning approach was used to retrain the SSD Mobilenet detection architecture to tailor it to this application. Custom datasets were generated to improve results. An additional detection model was created to automate parking space location detection. The final design is able to accurately detect vehicles within a designated area. Due to limitations regarding perspective and image processing resolution, the final design cannot be implemented solely through camera placement on the third floor of the Business and Engineering building. A cost analysis determined that the added infrastructure required to implement a multi-camera solution would be similar to the cost of traditional sensor based solutions.

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