Parking Lot Vehicle Counting Using a Deep Convolutional Neural Network

초록

This paper proposes a computer vision and deep learning-based technique for surveillance camera system for vehicle counting as one part of parking lot management system. We applied the You Only Look Once version 2 (YOLOv2) detector and come up with a deep convolutional neural network (CNN) based on YOLOv2 with a different architecture and two models. The effectiveness of the proposed architecture is illustrated using a publicly available Udacity’s self-driving-car datasets. After training and testing, our proposed architecture with new models is able to obtain 64.30% mean average precision which is a better performance compare to the original architecture (YOLOv2) that achieved only 47.89% mean average precision on the detection of car, truck, and pedestrian.

키워드

Parking lot managementObject detectionComputer visionMachine learningDeep convolutional neural networkSurveillance camera주차장 관리물체 감지컴퓨터 비전기계 학습deep convolutional neural network감시 카메라
제목
Parking Lot Vehicle Counting Using a Deep Convolutional Neural Network
저자
림쿠이송권장우
DOI
10.12815/kits.2018.17.5.173
발행일
2018-10
유형
Y
저널명
한국ITS학회 논문지
17
5
페이지
173 ~ 187