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Driving among Flatmobiles: Bird-Eye-View occupancy grids from a monocular camera for holistic trajectory planning

机译:在平板玻璃中驾驶:鸟瞰从单眼摄像机进行整体轨迹规划的占用栅格

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Camera-based end-to-end driving neural networks bring the promise of a low-cost system that maps camera images to driving control commands. These networks are appealing because they replace laborious hand engineered building blocks but their black-box nature makes them difficult to delve in case of failure. Recent works have shown the importance of using an explicit intermediate representation that has the benefits of increasing both the interpretability and the accuracy of networks’ decisions. Nonetheless, these camera-based networks reason in camera view where scale is not homogeneous and hence not directly suitable for motion forecasting. In this paper, we introduce a novel monocular camera-only holistic end-to-end trajectory planning network with a Bird-Eye-View (BEV) intermediate representation that comes in the form of binary Occupancy Grid Maps (OGMs). To ease the prediction of OGMs in BEV from camera images, we introduce a novel scheme where the OGMs are first predicted as semantic masks in camera view and then warped in BEV using the homography between the two planes. The key element allowing this transformation to be applied to 3D objects such as vehicles, consists in predicting solely their footprint in camera-view, hence respecting the flat world hypothesis implied by the homography.
机译:基于相机的端到端驾驶神经网络使得将相机图像映射到驱动控制命令的低成本系统的承诺。这些网络是吸引人的,因为它们取代了艰苦的手工工程建筑块,但他们的黑匣子性质使它们难以在失败的情况下深入研究。最近的作品表明了使用明确的中间代表性的重要性,这些中间代表具有增加的令人口可归和网络决策的准确性。尽管如此,这些基于相机的网络在相机视图中的原因,其中规模不是均匀,因此不直接适合运动预测。在本文中,我们介绍了一种新颖的单眼相机整体端到端轨迹规划网络,其鸟瞰图(BEV)中间表示以二进制占用网格图(OGM)为单位。为了缓解来自相机图像的BEV中OGM的预测,我们介绍了一种新颖的方案,其中首先预测为相机视图中的语义掩模,然后使用两个平面之间的邻居翘曲。允许该变换应用于诸如车辆的3D对象的关键元件包括在相机视图中仅预测其占地面积,因此致密地致密地暗示的世界假设。

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