Litcius/Paper detail

Indonesian Traffic Sign Recognition For Advanced Driver Assistent (ADAS) Using YOLOv4

Agus Mulyanto, Rohmat Indra Borman, Purwono Prasetyawan, Wisnu Jatmiko, Petrus Mursanto, Aprian Sinaga

20202020 3rd International Seminar on Research of Information Technology and Intelligent Systems (ISRITI)24 citationsDOI

Abstract

Traffic violations are one of the causes of the increasing number of road traffic fatalities every year, apart from driver negligence or ignorance of traffic signs. ADAS does not totally forestall mishap, however they can all more likely shield us from a few human elements and human mistake. The goal of ADAS is to automate vehicle systems for better driving and safety, such as Traffic Sign Recognition (TSR). This paper presents a study to recognize traffic sign patterns using YOLOv4 using the Indonesia Traffic Signs (ITS) dataset. The ITS dataset consists of four categories (warning, prohibitory, mandatory and directive) with twenty six signs. The deep learning model of YOLOv4 is based CSP-DarkNet53 backbone which has shown good performance with main Average Precision ([email protected]) of 74.91% for 26 signs of Indonesian Traffic Signs.

Topics & Concepts

Computer scienceAdvanced driver assistance systemsTraffic signTraffic sign recognitionRoad trafficSign (mathematics)Artificial intelligenceComputer securityTransport engineeringEngineeringMathematical analysisMathematicsVehicle License Plate RecognitionAdvanced Neural Network ApplicationsComputer Science and Engineering