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Weakly Supervised Deep Learning Method for Vulnerable Road User Detection in FMCW Radar

机译:FMCW雷达中弱势道路用户检测弱势监督深度学习方法

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摘要

Millimeter-wave radar is currently the most effective automotive sensor capable of all-weather perception. In order to detect Vulnerable Road Users (VRUs) in cluttered radar data, it is necessary to model the time-frequency signal patterns of human motion, i.e. the micro-Doppler signature. In this paper we propose a spatio-temporal Convolutional Neural Network (CNN) capable of detecting VRUs in cluttered radar data. The main contribution is a weakly supervised training method which uses abundant, automatically generated labels from camera and lidar for training the model. The input to the network is a tensor of temporally concatenated range-azimuth-Doppler arrays, while the ground truth is an occupancy grid formed by objects detected jointly in-camera images and lidar. Lidar provides accurate ranging ground truth, while camera information helps distinguish between VRUs and background. Experimental evaluation shows that the CNN model has superior detection performance compared to classical techniques. Moreover, the model trained with imperfect, weak supervision labels outperforms the one trained with a limited number of perfect, hand-annotated labels. Finally, the proposed method has excellent scalability due to the low cost of automatic annotation.
机译:毫米波雷达目前是最有效的汽车传感器,能够全天候感知。为了检测杂乱的雷达数据中的易受攻击的道路用户(VRU),有必要建模人动运动的时频信号模式,即微多普勒签名。在本文中,我们提出了一种能够检测杂乱雷达数据中的VRU的时空卷积神经网络(CNN)。主要贡献是一种弱监督培训方法,采用丰富的,自动生成的相机和激光器的标签用于训练模型。对网络的输入是时间上级联范围 - Azimuther阵列的张量,而地面事实是由相机相互作用的对象形成的物体形成的占用网格。 LIDAR提供准确的地面真理,而相机信息有助于区分VRU和背景。实验评估表明,与经典技术相比,CNN模型具有卓越的检测性能。此外,模型培训不完美,弱监管标签优于具有有限数量的完美,手工注释的标签训练的培训。最后,由于自动注释成本低,所提出的方法具有出色的可扩展性。

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