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Depth Estimation From Monocular Images And Sparse Radar Using Deep Ordinal Regression Network

机译:使用深度序数回归网络从单眼图像和稀疏雷达深度估计

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We integrate sparse radar data into a monocular depth estimation model and introduce a novel preprocessing method for reducing the sparseness and limited field of view provided by radar. We explore the intrinsic error of different radar modalities and show our proposed method results in more data points with reduced error. We further propose a novel method for estimating dense depth maps from monocular 2D images and sparse radar measurements using deep learning based on the deep ordinal regression network by Fu et al. Radar data are integrated by first converting the sparse 2D points to a height-extended 3D measurement and then including it into the network using a late fusion approach. Experiments are conducted on the nuScenes dataset. Our experiments demonstrate state-of-the-art performance in both day and night scenes.
机译:我们将稀疏雷达数据集成到单眼深度估计模型中,并引入一种新的预处理方法,用于减少雷达提供的稀疏性和有限视野。 我们探讨了不同雷达方式的内在错误,并显示了我们提出的方法导致更多的数据点,错误误差。 我们进一步提出了一种新的方法,用于使用基于深度序数回归网络的深度学习来估计来自单眼2D图像和稀疏雷达测量的密集深度图。 通过首先将稀疏2D点转换为高度扩展的3D测量,然后使用后期融合方法将其纳入网络,集成了雷达数据。 实验在NUSCENES数据集上进行。 我们的实验在白天和夜幕场景中表现出最先进的表现。

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