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http://dx.doi.org/10.22680/kasa2019.11.2.035

Improved Environment Recognition Algorithms for Autonomous Vehicle Control  

Bae, Inhwan (DGIST)
Kim, Yeounghoo (DGIST)
Kim, Taekyung (DGIST)
Oh, Minho (DGIST)
Ju, Hyunsu (DGIST)
Kim, Seulki (DGIST)
Shin, Gwanjun (DGIST)
Yoon, Sunjae (DGIST)
Lee, Chaejin (DGIST)
Lim, Yongseob (DGIST)
Choi, Gyeungho (DGIST)
Publication Information
Journal of Auto-vehicle Safety Association / v.11, no.2, 2019 , pp. 35-43 More about this Journal
Abstract
This paper describes the improved environment recognition algorithms using some type of sensors like LiDAR and cameras. Additionally, integrated control algorithm for an autonomous vehicle is included. The integrated algorithm was based on C++ environment and supported the stability of the whole driving control algorithms. As to the improved vision algorithms, lane tracing and traffic sign recognition were mainly operated with three cameras. There are two algorithms developed for lane tracing, Improved Lane Tracing (ILT) and Histogram Extension (HIX). Two independent algorithms were combined into one algorithm - Enhanced Lane Tracing with Histogram Extension (ELIX). As for the enhanced traffic sign recognition algorithm, integrated Mutual Validation Procedure (MVP) by using three algorithms - Cascade, Reinforced DSIFT SVM and YOLO was developed. Comparing to the results for those, it is convincing that the precision of traffic sign recognition is substantially increased. With the LiDAR sensor, static and dynamic obstacle detection and obstacle avoidance algorithms were focused. Therefore, improved environment recognition algorithms, which are higher accuracy and faster processing speed than ones of the previous algorithms, were proposed. Moreover, by optimizing with integrated control algorithm, the memory issue of irregular system shutdown was prevented. Therefore, the maneuvering stability of the autonomous vehicle in severe environment were enhanced.
Keywords
Autonomous vehicle; Cross-checking system; Image machine learning; Integrated control algorithm; Lane detection; Obstacle detection and avoidance; Recognition algorithm; Sign detection;
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Times Cited By KSCI : 1  (Citation Analysis)
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