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A Cascaded LiDAR-Camera Fusion Network for Road Detection | IEEE Conference Publication | IEEE Xplore

A Cascaded LiDAR-Camera Fusion Network for Road Detection


Abstract:

Most of the existing road detection methods are either single-modal based, e.g., based on LiDAR or camera, or multi-modal based with LiDAR-camera fusion. The algorithms a...Show More

Abstract:

Most of the existing road detection methods are either single-modal based, e.g., based on LiDAR or camera, or multi-modal based with LiDAR-camera fusion. The algorithms are designed for a specific data type, and cannot cope with input data changes. In addition, the LiDAR-camera based methods can only work in day time with enough light. In this paper, we develop a novel LiDAR-camera fusion strategy, which combines the LiDAR point clouds and the camera images in a cascaded way. The proposed network has two working modes, the single-modal mode with LiDAR point clouds only and the multimodal mode with both LiDAR and camera data, so it can be used in all day scenes. The whole network consists of three parts: 1) LiDAR segmentation module, which segments road points in the LiDAR’s imagery view. 2) Sparse-to-dense module, which upsamples the sparse LiDAR feature maps to dense road detection results. 3) LiDAR-camera fusion module, which fuses the dense LiDAR feature maps with the dense camera images to obtain accurate road estimations. Experiments on the KITTI-Road dataset show that the proposed cascaded LiDAR-camera fusion network can obtain very competitive road detection performance, with a MaxF value of 96.38%, and achieve the state-of-the-art in the single-modal mode among all LiDAR-only methods.
Date of Conference: 30 May 2021 - 05 June 2021
Date Added to IEEE Xplore: 18 October 2021
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Conference Location: Xi'an, China

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