How much depth information can radar contribute to a depth estimation model?

Chen-Chou Lo, P. Vandewalle
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引用次数: 1

Abstract

Recently, several works have proposed fusing radar data as an additional perceptual signal into monocular depth estimation models because radar data is robust against varying light and weather conditions. Although improved performances were reported in prior works, it is still hard to tell how much depth information radar can contribute to a depth estimation model. In this paper, we propose radar inference and supervision experiments to investigate the intrinsic depth potential of radar data using state-of-the-art depth estimation models on the nuScenes dataset. In the inference experiment, the model predicts depth by taking only radar as input to demonstrate the inference capability using radar data. In the supervision experiment, a monocular depth estimation model is trained under radar supervision to show the intrinsic depth information that radar can contribute. Our experiments demonstrate that the model using only sparse radar as input can detect the shape of surroundings to a certain extent in the predicted depth. Furthermore, the monocular depth estimation model supervised by preprocessed radar achieves a good performance compared to the baseline model trained with sparse lidar supervision.
雷达能为深度估计模型提供多少深度信息?
最近,一些研究提出将雷达数据作为额外的感知信号融合到单目深度估计模型中,因为雷达数据对不同的光照和天气条件具有鲁棒性。尽管在之前的工作中已经报道了改进的性能,但仍然很难判断深度信息雷达对深度估计模型的贡献有多大。在本文中,我们提出了雷达推理和监督实验,利用最先进的深度估计模型在nuScenes数据集上研究雷达数据的内在深度潜力。在推理实验中,该模型仅以雷达作为输入预测深度,以验证利用雷达数据进行推理的能力。在监督实验中,在雷达监督下训练单目深度估计模型,以显示雷达可以提供的固有深度信息。我们的实验表明,仅使用稀疏雷达作为输入的模型在预测深度内可以在一定程度上检测到周围环境的形状。此外,与稀疏激光雷达监督训练的基线模型相比,预处理雷达监督的单目深度估计模型取得了良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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