Single-Eye View: Monocular Real-time Perception Package for Autonomous Driving
Abstract
Amidst the rapid advancement of camera-based autonomous driving technology, effectiveness is often prioritized with limited attention to computational efficiency. To address this issue, this paper introduces LRHPerception, a real-time monocular perception package for autonomous driving that uses single-view camera video to interpret the surrounding environment. The proposed system combines the computational efficiency of end-to-end learning with the rich representational detail of local mapping methodologies. With significant improvements in object tracking and prediction, road segmentation, and depth estimation integrated into a unified framework, LRHPerception processes monocular image data into a five-channel tensor consisting of RGB, road segmentation, and pixel-level depth estimation, augmented with object detection and trajectory prediction. Experimental results demonstrate strong performance, achieving real-time processing at 29 FPS on a single GPU, representing a 555% speedup over the fastest mapping-based approach.
Cite
@article{arxiv.2603.21061,
title = {Single-Eye View: Monocular Real-time Perception Package for Autonomous Driving},
author = {Haixi Zhang and Aiyinsi Zuo and Zirui Li and Chunshu Wu and Tong Geng and Zhiyao Duan},
journal= {arXiv preprint arXiv:2603.21061},
year = {2026}
}
Comments
9 pages, 5 figures