Camera-Lidar Integration: Probabilistic sensor fusion for semantic mapping
Julie Stephany Berrio, Mao Shan, Stewart Worrall, Eduardo Nebot

TL;DR
This paper presents a probabilistic sensor fusion method combining camera and lidar data to create accurate 3D semantic maps for autonomous vehicles, addressing uncertainty and occlusion challenges.
Contribution
It introduces a novel probabilistic pipeline for multi-sensor fusion that incorporates uncertainties and a viewpoint validation algorithm for semantic mapping.
Findings
Effective fusion of camera and lidar data for semantic mapping.
Improved accuracy in 3D semantic voxel maps.
Validated on USyd Dataset with positive results.
Abstract
An automated vehicle operating in an urban environment must be able to perceive and recognise object/obstacles in a three-dimensional world while navigating in a constantly changing environment. In order to plan and execute accurate sophisticated driving maneuvers, a high-level contextual understanding of the surroundings is essential. Due to the recent progress in image processing, it is now possible to obtain high definition semantic information in 2D from monocular cameras, though cameras cannot reliably provide the highly accurate 3D information provided by lasers. The fusion of these two sensor modalities can overcome the shortcomings of each individual sensor, though there are a number of important challenges that need to be addressed in a probabilistic manner. In this paper, we address the common, yet challenging, lidar/camera/semantic fusion problems which are seldom approached…
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