Abstract

Modern vehicles rely on a multitude of sensors and cameras to both understand the environment around them and assist the driver in different situations. Lane detection is an overall process as it can be used in safety systems such as the lane departure warning system (LDWS). Lane detection may be used in steering assist systems, especially useful at night in the absence of light sources. Although developing such a system can be done simply by using global positioning system (GPS) maps, it is dependent on an internet connection or GPS signal, elements that may be absent in some locations. Because of this, such systems should also rely on computer vision algorithms. In this paper, we improve upon an existing lane detection method, by changing two distinct features, which in turn leads to better optimization and false lane marker rejection. We propose using a probabilistic Hough transform, instead of a regular one, as well as using a parallelogram region of interest (ROI), instead of a trapezoidal one. By using these two methods we obtain an increase in overall runtime of approximately 30%, as well as an increase in accuracy of up to 3%, compared to the original method.

Highlights

  • Lane detection and tracking are challenging problems in computer vision as developing a robust and computationally efficient algorithm is not a simple task

  • One of the main purposes of the proposed method was to reduce the number of edge pixels using a parallelogram region of interest as lane position will not substantially change in the frame

  • Running the proposed algorithm for a total number of 969 frames resulted in a final average of 42% improvement in discarding unwanted edge pixels

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Summary

Introduction

Lane detection and tracking are challenging problems in computer vision as developing a robust and computationally efficient algorithm is not a simple task. Machines 2022, 10, x FOR PEER REVIEW and track lanes must be optimal. Otherwise, they may not be suitable for practical. Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations

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