Ego-Lane Analysis System (ELAS): Dataset and Algorithms
Rodrigo F. Berriel, Edilson de Aguiar, Alberto F. de Souza, Thiago, Oliveira-Santos

TL;DR
This paper introduces ELAS, a real-time vision-based system for ego-lane analysis, including lane detection, classification, and event detection, validated on a new extensive dataset for diverse driving scenarios.
Contribution
The paper presents a novel real-time ego-lane analysis system and provides a comprehensive, publicly available dataset for evaluating lane-related tasks in varied conditions.
Findings
High detection accuracy across multiple lane events
Effective lane modeling using spline with Kalman and particle filters
System demonstrated suitability for real-time ADAS applications
Abstract
Decreasing costs of vision sensors and advances in embedded hardware boosted lane related research detection, estimation, and tracking in the past two decades. The interest in this topic has increased even more with the demand for advanced driver assistance systems (ADAS) and self-driving cars. Although extensively studied independently, there is still need for studies that propose a combined solution for the multiple problems related to the ego-lane, such as lane departure warning (LDW), lane change detection, lane marking type (LMT) classification, road markings detection and classification, and detection of adjacent lanes (i.e., immediate left and right lanes) presence. In this paper, we propose a real-time Ego-Lane Analysis System (ELAS) capable of estimating ego-lane position, classifying LMTs and road markings, performing LDW and detecting lane change events. The proposed…
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