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Papers/Fog Simulation on Real LiDAR Point Clouds for 3D Object De...

Fog Simulation on Real LiDAR Point Clouds for 3D Object Detection in Adverse Weather

Martin Hahner, Christos Sakaridis, Dengxin Dai, Luc van Gool

2021-08-11ICCV 2021 10Physical Simulationsobject-detection3D Object Detection
PaperPDFCode(official)

Abstract

This work addresses the challenging task of LiDAR-based 3D object detection in foggy weather. Collecting and annotating data in such a scenario is very time, labor and cost intensive. In this paper, we tackle this problem by simulating physically accurate fog into clear-weather scenes, so that the abundant existing real datasets captured in clear weather can be repurposed for our task. Our contributions are twofold: 1) We develop a physically valid fog simulation method that is applicable to any LiDAR dataset. This unleashes the acquisition of large-scale foggy training data at no extra cost. These partially synthetic data can be used to improve the robustness of several perception methods, such as 3D object detection and tracking or simultaneous localization and mapping, on real foggy data. 2) Through extensive experiments with several state-of-the-art detection approaches, we show that our fog simulation can be leveraged to significantly improve the performance for 3D object detection in the presence of fog. Thus, we are the first to provide strong 3D object detection baselines on the Seeing Through Fog dataset. Our code is available at www.trace.ethz.ch/lidar_fog_simulation.

Results

TaskDatasetMetricValueModel
Object DetectionDense Fogmod. Car AP@.5IoU47.38PV-RCNN
Object DetectionDense Fogmod. Cyclist AP@.25IoU27.89PV-RCNN
Object DetectionDense Fogmod. Pedestrian AP@.25IoU40.65PV-RCNN
Object DetectionDense Fogmod. mAP38.64PV-RCNN
3DDense Fogmod. Car AP@.5IoU47.38PV-RCNN
3DDense Fogmod. Cyclist AP@.25IoU27.89PV-RCNN
3DDense Fogmod. Pedestrian AP@.25IoU40.65PV-RCNN
3DDense Fogmod. mAP38.64PV-RCNN
3D Object DetectionDense Fogmod. Car AP@.5IoU47.38PV-RCNN
3D Object DetectionDense Fogmod. Cyclist AP@.25IoU27.89PV-RCNN
3D Object DetectionDense Fogmod. Pedestrian AP@.25IoU40.65PV-RCNN
3D Object DetectionDense Fogmod. mAP38.64PV-RCNN
2D ClassificationDense Fogmod. Car AP@.5IoU47.38PV-RCNN
2D ClassificationDense Fogmod. Cyclist AP@.25IoU27.89PV-RCNN
2D ClassificationDense Fogmod. Pedestrian AP@.25IoU40.65PV-RCNN
2D ClassificationDense Fogmod. mAP38.64PV-RCNN
2D Object DetectionDense Fogmod. Car AP@.5IoU47.38PV-RCNN
2D Object DetectionDense Fogmod. Cyclist AP@.25IoU27.89PV-RCNN
2D Object DetectionDense Fogmod. Pedestrian AP@.25IoU40.65PV-RCNN
2D Object DetectionDense Fogmod. mAP38.64PV-RCNN
16kDense Fogmod. Car AP@.5IoU47.38PV-RCNN
16kDense Fogmod. Cyclist AP@.25IoU27.89PV-RCNN
16kDense Fogmod. Pedestrian AP@.25IoU40.65PV-RCNN
16kDense Fogmod. mAP38.64PV-RCNN

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