SIUNet:边缘感知深度补全的稀疏不变U-Net

A. Ramesh, F. Giovanneschi, M. González-Huici
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引用次数: 1

摘要

深度补全是指从稀疏深度测量(如激光雷达)中生成密集深度图像的任务。由于深度出血,现有的非制导方法无法恢复具有清晰物体边界的密集深度图像,特别是在极其稀疏的测量中。最先进的引导方法需要额外的处理来对多模态输入进行空间和时间对齐,以及用于数据融合的复杂架构,这使得它们对于定制传感器设置来说非常重要。为了解决这些限制,我们提出了一种基于U-Net的非引导方法,该方法对输入的稀疏性不变。重建中的边界一致性是通过辅助学习在以密集深度和深度轮廓图像为目标的合成数据集上明确执行的,然后在真实数据集上进行微调。利用我们的网络架构和简单的实现方法,我们在KITTI基准上取得了与非制导方法相比具有竞争力的结果,并表明重构图像具有清晰的边界,即使对极其稀疏的LiDAR测量也具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIUNet: Sparsity Invariant U-Net for Edge-Aware Depth Completion
Depth completion is the task of generating dense depth images from sparse depth measurements, e.g., LiDARs. Existing unguided approaches fail to recover dense depth images with sharp object boundaries due to depth bleeding, especially from extremely sparse measurements. State-of-the-art guided approaches require additional processing for spatial and temporal alignment of multi-modal inputs, and sophisticated architectures for data fusion, making them non-trivial for customized sensor setup. To address these limitations, we propose an unguided approach based on U-Net that is invariant to sparsity of inputs. Boundary consistency in reconstruction is explicitly enforced through auxiliary learning on a synthetic dataset with dense depth and depth contour images as targets, followed by fine-tuning on a real-world dataset. With our network architecture and simple implementation approach, we achieve competitive results among unguided approaches on KITTI benchmark and show that the reconstructed image has sharp boundaries and is robust even towards extremely sparse LiDAR measurements.
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