This paper introduces Scene Completeness-Aware Depth Completion (SCADC) to complete raw lidar scans into dense depth maps with fine and complete scene structures. Recent sparse depth completion for lidars only focuses on the lower scenes and produces irregular estimations on the upper because existing datasets, such as KITTI, do not provide groundtruth for upper areas. These areas are considered less important since they are usually sky or trees of less scene understanding interest. However, we argue that in several driving scenarios such as large trucks or cars with loads, objects could extend to the upper parts of scenes. Thus depth maps with structured upper scene estimation are important for RGBD algorithms. SCADC adopts stereo images that produce disparities with better scene completeness but are generally less precise than lidars, to help sparse lidar depth completion. To our knowledge, we are the first to focus on scene completeness of sparse depth completion. We validate our SCADC on both depth estimate precision and scene-completeness on KITTI. Moreover, we experiment on less-explored outdoor RGBD semantic segmentation with scene completeness-aware D-input to validate our method.
翻译:本文介绍Sceen Clustis-Aware深度完成(SCADC),以完成精密和完整的场景结构的密集深度地图的原始激光雷达扫描。最近,激光雷达的深度完成量很少,仅侧重于低层场景,并且由于现有的数据集,如KITTI,没有为上层区域提供地面图象,因此在上层区域得出不规则的估计。这些地区被认为不太重要,因为它们通常是天空或对场景了解较少的树木。然而,我们认为,在大型卡车或载重汽车等一些驾驶场景的情况下,物体可以延伸到场景的上方。因此,带有结构化的高层场景估计的深度地图对于RGBD算法很重要。 SACDC采用产生差异的立体图像,其效果优于场景完整性,但一般比 Lidar 深度完成率要差。据我们所知,我们首先侧重于干深度完成的场景完整性。我们在KITTI的深度估计精确度和场景完整度方面,我们验证了我们的SCADC。此外,我们还试验了探索较不甚广的室外的RGBD断域图段,以便验证我们的方法。