Image guided depth completion is the task of generating a dense depth map from a sparse depth map and a high quality image. In this task, how to fuse the color and depth modalities plays an important role in achieving good performance. This paper proposes a two-branch backbone that consists of a color-dominant branch and a depth-dominant branch to exploit and fuse two modalities thoroughly. More specifically, one branch inputs a color image and a sparse depth map to predict a dense depth map. The other branch takes as inputs the sparse depth map and the previously predicted depth map, and outputs a dense depth map as well. The depth maps predicted from two branches are complimentary to each other and therefore they are adaptively fused. In addition, we also propose a simple geometric convolutional layer to encode 3D geometric cues. The geometric encoded backbone conducts the fusion of different modalities at multiple stages, leading to good depth completion results. We further implement a dilated and accelerated CSPN++ to refine the fused depth map efficiently. The proposed full model ranks 1st in the KITTI depth completion online leaderboard at the time of submission. It also infers much faster than most of the top ranked methods. The code of this work is available at https://github.com/JUGGHM/PENet_ICRA2021.
翻译:图像导导深完成的任务是从稀薄的深度地图和高品质图像中绘制密密深度地图。 在这一任务中,如何结合颜色和深度模式对于取得良好业绩起着重要作用。 本文还提出一个由两分管组成的主干柱, 包括一个彩色主导分支和一个深度主导分支, 以彻底开发和连接两种模式。 更具体地说, 一个分支输入一个彩色图像和一个稀薄深度地图, 以预测一个密密密的深度地图。 另一个分支将稀少的深度地图和先前预测的深度地图作为投入, 并输出一个密密密的深度地图。 两个分支预测的深度地图彼此互为补充, 因而具有适应性地结合功能。 此外, 我们还提出一个简单的几分层相交错的组合骨干骨干骨干骨干骨干骨干骨干骨干骨干骨干骨干骨干, 在提交文件时, ASBREBRMM /RBI 最高级的RBI 方法 。