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자료유형
학술저널
저자정보
Ziyu Fang (Silla University) Pyeoungkee Kim (Silla University)
저널정보
한국정보통신학회JICCE Journal of information and communication convergence engineering Journal of information and communication convergence engineering Vol.18 No.1
발행연도
2020.3
수록면
28 - 32 (5page)

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Railway transportation is the main land-based transportation in most countries. Accordingly, railway-transportation safety has always been a key issue for many researchers. Railway pedestrian accidents are the main reasons of railway-transportation casualties. In this study, we conduct experiments to determine which of the latest convolutional neural network models and algorithms are appropriate to build pedestrian railroad accident prevention systems. When a drone cruises over a pre-specified path and altitude, the real-time status around the rail is recorded, following which the image information is transmitted back to the server in time. Subsequently, the images are analyzed to determine whether pedestrians are present around the railroads, and a speed-deceleration order is immediately sent to the train driver, resulting in a reduction of the instances of pedestrian railroad accidents. This is the first part of an envisioned drone-based intelligent security system. This system can effectively address the problem of insufficient manual police force.

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Abstract
I. INTRODUCTION
II. DESIGN OF PEDESTRIAN RAILROAD ACCIDENT PREVENTION SYSTEM
III. CONVOLUTIONAL NEURAL NETWORK (CNN) MODELS FOR THE DETECTION OF PEDESTRIANS
IV. EXPERIMENTAL DATASET
V. EXPERIMENTAL RESULT AND ANALYSIS
VI. CONCLUSION
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