A Deep Learning-based Radar and Camera Sensor Fusion Architecture for Object Detection

Felix Nobis, Maximilian Geisslinger, Markus Weber, Johannes Betz, M. Lienkamp
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引用次数: 161

Abstract

Object detection in camera images, using deep learning has been proven successfully in recent years. Rising detection rates and computationally efficient network structures are pushing this technique towards application in production vehicles. Nevertheless, the sensor quality of the camera is limited in severe weather conditions and through increased sensor noise in sparsely lit areas and at night. Our approach enhances current 2D object detection networks by fusing camera data and projected sparse radar data in the network layers. The proposed CameraRadarFusion Net (CRF-Net) automatically learns at which level the fusion of the sensor data is most beneficial for the detection result. Additionally, we introduce BlackIn, a training strategy inspired by Dropout, which focuses the learning on a specific sensor type. We show that the fusion network is able to outperform a state-of-the-art image-only network for two different datasets. The code for this research will be made available to the public at: https://github.com/TUMFTM/CameraRadarFusionNet
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一种基于深度学习的目标检测雷达与相机传感器融合架构
近年来,使用深度学习在相机图像中的目标检测已被证明是成功的。不断提高的检测率和计算效率的网络结构正在推动该技术在量产车辆上的应用。然而,在恶劣的天气条件下,相机的传感器质量受到限制,并且在光线稀少的地区和夜间,传感器噪声会增加。我们的方法通过在网络层中融合相机数据和投影稀疏雷达数据来增强当前的二维目标检测网络。所提出的CRF-Net (CameraRadarFusion Net)自动学习在哪个级别的传感器数据融合对检测结果最有利。此外,我们引入BlackIn,这是一种受Dropout启发的训练策略,它将学习重点放在特定的传感器类型上。我们表明,对于两个不同的数据集,融合网络能够优于最先进的仅图像网络。这项研究的代码将在https://github.com/TUMFTM/CameraRadarFusionNet上向公众提供
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