基于卷积稀疏编码和字典学习的汽车场景激光雷达深度补全

F. Giovanneschi, A. Ramesh, Maria Antonia Gonzalez Huici, Erdem Altuntac
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引用次数: 0

摘要

近年来,人们对用于自动驾驶应用的激光雷达传感器的兴趣有所增加:与雷达传感器相比,固态架构可以减小尺寸和成本,同时保持更高的扫描分辨率。在动态汽车场景中,LiDAR深度测量产生的离散点云通常是稀疏的,并且可能包含不规则/缺失的深度信息,此外,可以进一步减少照射像素以提高扫描速率并降低计算成本。本文提出了一种基于补丁和卷积稀疏编码(CSC)方法的激光雷达深度补全的新应用,并使用公开可用的户外汽车场景KITTI数据集进行了验证。基于patch的稀疏编码方法在表示全局图像特征和边缘时可能会出现不准确的情况,特别是在缺失数据百分比较高的情况下。CSC允许全局处理数据,同时通过将字典构造为卷积过滤器的连接来保留本地信息。这两种方法所考虑的字典要么由Daubechies小波组成,要么使用K-SVD和卷积字典学习(CDL)策略从城市SYNTHIA数据集的深度图像中学习。使用基于CSC的方法对各种稀疏度级别生成的深度图产生平滑的图像和增强的场景感知。基于稀疏平均绝对误差(SMAE)和加权平均绝对误差(WMAE)的分析表明,相对于基于补丁的策略,深度和边缘保持得到了改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Sparse Coding and Dictionary Learning for Lidar Depth Completion in Automotive Scenarios
The interest in LiDAR sensors for autonomous driving applications has recently increased: solid state architectures have made it possible to reduce sizes and costs while maintaining higher scanning resolution compared to RADAR sensors. In a dynamic automotive scenario, LiDAR depth measurements result in a discrete point cloud which is typically sparse and may contain irregular/missing depth information, moreover, one may further reduce the illuminated pixels to increase the scanning rate and reduce computational cost. Here, a novel application of both a patch based and a convolutional sparse coding (CSC) approach for LiDAR depth completion are presented and validated using the publicly available KITTI dataset of outdoor automotive scenarios. Patch-based sparse coding approach may result inaccurate in representing global image features and edges, especially when the missing data percentage is high. CSC allows to process the data globally while still preserving local information by constructing the dictio-nary as a concatenation of convolutional filters. The dictionary considered for both approaches is either composed of Daubechies Wavelets or learned from depth images of the urban SYNTHIA dataset using K-SVD and Convolutional Dictionary Learning (CDL) strategies. Resulting depth maps using the CSC based approach for various sparsity levels produce smooth images and an enhanced scenario awareness. An analysis based on the Sparse Mean Absolute Error (SMAE) and Weighted Mean Absolute Error (WMAE) indicates that depth and edge preservation improves with respect to patch-based strategies.
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