CVAug 14, 2025

SC-Lane: Slope-aware and Consistent Road Height Estimation Framework for 3D Lane Detection

arXiv:2508.10411v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses the problem of accurate 3D lane detection for autonomous driving systems, representing an incremental improvement over prior methods.

The paper tackles 3D lane detection by proposing SC-Lane, a framework that adaptively fuses slope-specific features and enforces temporal consistency for road height estimation, achieving state-of-the-art performance with an F-score of 64.3% on the OpenLane benchmark.

In this paper, we introduce SC-Lane, a novel slope-aware and temporally consistent heightmap estimation framework for 3D lane detection. Unlike previous approaches that rely on fixed slope anchors, SC-Lane adaptively determines the fusion of slope-specific height features, improving robustness to diverse road geometries. To achieve this, we propose a Slope-Aware Adaptive Feature module that dynamically predicts the appropriate weights from image cues for integrating multi-slope representations into a unified heightmap. Additionally, a Height Consistency Module enforces temporal coherence, ensuring stable and accurate height estimation across consecutive frames, which is crucial for real-world driving scenarios. To evaluate the effectiveness of SC-Lane, we employ three standardized metrics-Mean Absolute Error(MAE), Root Mean Squared Error (RMSE), and threshold-based accuracy-which, although common in surface and depth estimation, have been underutilized for road height assessment. Using the LiDAR-derived heightmap dataset introduced in prior work [20], we benchmark our method under these metrics, thereby establishing a rigorous standard for future comparisons. Extensive experiments on the OpenLane benchmark demonstrate that SC-Lane significantly improves both height estimation and 3D lane detection, achieving state-of-the-art performance with an F-score of 64.3%, outperforming existing methods by a notable margin. For detailed results and a demonstration video, please refer to our project page:https://parkchaesong.github.io/sclane/

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