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Mono-SF: Multi-View Geometry Meets Single-View Depth for Monocular Scene Flow Estimation of Dynamic Traffic Scenes

机译:Mono-SF:多视图几何满足单视图深度,用于动态交通场景的单眼场景流量估计

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Existing 3D scene flow estimation methods provide the 3D geometry and 3D motion of a scene and gain a lot of interest, for example in the context of autonomous driving. These methods are traditionally based on a temporal series of stereo images. In this paper, we propose a novel monocular 3D scene flow estimation method, called Mono-SF. Mono-SF jointly estimates the 3D structure and motion of the scene by combining multi-view geometry and single-view depth information. Mono-SF considers that the scene flow should be consistent in terms of warping the reference image in the consecutive image based on the principles of multi-view geometry. For integrating single-view depth in a statistical manner, a convolutional neural network, called ProbDepthNet, is proposed. ProbDepthNet estimates pixel-wise depth distributions from a single image rather than single depth values. Additionally, as part of ProbDepthNet, a novel recalibration technique for regression problems is proposed to ensure well-calibrated distributions. Our experiments show that Mono-SF outperforms state-of-the-art monocular baselines and ablation studies support the Mono-SF approach and ProbDepthNet design.
机译:现有的3D场景流估计方法提供了场景的3D几何形状和3D运动,并且获得了很多关注,例如在自动驾驶的情况下。传统上,这些方法基于立体图像的时间序列。在本文中,我们提出了一种新颖的单眼3D场景流估计方法,称为Mono-SF。 Mono-SF通过组合多视图几何图形和单视图深度信息,共同估算场景的3D结构和运动。 Mono-SF认为,基于多视图几何原理,场景流在连续图像中扭曲参考图像方面应该是一致的。为了以统计方式集成单视图深度,提出了一个称为ProbDepthNet的卷积神经网络。 ProbDepthNet从单个图像而不是单个深度值估计像素方向的深度分布。此外,作为ProbDepthNet的一部分,提出了一种用于回归问题的新颖的重新校准技术,以确保校准良好的分布。我们的实验表明,Mono-SF的性能优于最新的单眼基线,并且消融研究支持Mono-SF方法和ProbDepthNet设计。

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