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A GPU -accelerated Deep Stereo- LiDAR Fusion for Real-time High-precision Dense Depth Sensing

机译:用于实时高精度密集深度传感的GPU -Accelerated深层立体声融合

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Active LiDAR and stereo vision are the most commonly used depth sensing techniques in autonomous vehicles. Each of them alone has weaknesses in terms of density and reliability and thus cannot perform well on all practical scenarios. Recent works use deep neural networks (DNNs) to exploit their complementary properties, achieving a superior depth-sensing. However, these state-of-the-art solutions are not satisfactory on real-time responsiveness due to the high computational complexities of DNNs. In this paper, we present FastFusion, a fast deep stereo-LiDAR fusion framework for real-time high-precision depth estimation. FastFusion provides an efficient two-stage fusion strategy that leverages binary neural network to integrate stereo-LiDAR information as input and use cross-based LiDAR trust aggregation to further fuse the sparse LiDAR measurements in the back-end of stereo matching. More importantly, we present a GPU-based acceleration framework for providing a low latency implementation of FastFusion, gaining both accuracy improvement and real-time responsiveness. In the experiments, we demonstrate the effectiveness and practicability of FastFusion, which obtains a significant speedup over state-of-the-art baselines while achieving comparable accuracy on depth sensing.
机译:活跃的LIDAR和立体声愿景是自主车辆中最常用的深度传感技术。它们中的每一个都在密度和可靠性方面具有缺点,因此无法对所有实际情况进行良好。最近的作品利用深神经网络(DNN)利用它们的互补性,实现了卓越的深度感应。然而,由于DNN的高计算复杂性,这些最先进的解决方案在实时响应性上并不令人满意。在本文中,我们呈现快速,是一种快速深度立体声融合框架,用于实时高精度深度估计。 FactFusion提供了一种有效的两阶段融合策略,利用二进制神经网络将立体激光器信息集成为输入,并使用基于跨的LIDAR信任聚合,以进一步融合立体声匹配后端的稀疏激光乐节测量。更重要的是,我们提出了一种基于GPU的加速框架,用于提供快速性的低延迟实现,获得精度改善和实时响应性。在实验中,我们展示了快速性的有效性和实用性,这在最先进的基线上获得了显着的加速,同时在深度感测上实现了可比的精度。

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