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BEVHeight: A Robust Framework for Vision-based Roadside 3D Object Detection

Lei Yang, Kaicheng Yu, Tao Tang, Jun Li, Kun Yuan, Li Wang, Xinyu Zhang, Peng Chen

2023105 citationsDOI

Abstract

While most recent autonomous driving system focuses on developing perception methods on ego-vehicle sensors, people tend to overlook an alternative approach to leverage intelligent roadside cameras to extend the perception ability beyond the visual range. We discover that the state-of-the-art vision-centric bird's eye view detection methods have inferior performances on roadside cameras. This is because these methods mainly focus on recovering the depth regarding the camera center, where the depth difference between the car and the ground quickly shrinks while the distance increases. In this paper, we propose a simple yet effective approach, dubbed BEVHeight, to address this issue. In essence, instead of predicting the pixel-wise depth, we regress the height to the ground to achieve a distance-agnostic formulation to ease the optimization process of camera-only perception methods. On popular 3D detection benchmarks of roadside cameras, our method surpasses all previous vision-centric methods by a significant margin. The code is available at https://github.com/ADLab-AutoDrive/BEVHeight.

Topics & Concepts

Computer visionLeverage (statistics)Artificial intelligenceComputer scienceObject detectionPixelPerceptionFocus (optics)Margin (machine learning)Pattern recognition (psychology)Machine learningOpticsNeurosciencePhysicsBiologyAdvanced Neural Network ApplicationsVisual Attention and Saliency DetectionVideo Surveillance and Tracking Methods
BEVHeight: A Robust Framework for Vision-based Roadside 3D Object Detection | Litcius