Depth completion deals with the problem of recovering dense depth maps from sparse ones, where color images are often used to facilitate this task. Recent approaches mainly focus on image guided learning frameworks to predict dense depth. However, blurry guidance in the image and unclear structure in the depth still impede the performance of the image guided frameworks. To tackle these problems, we explore a repetitive design in our image guided network to gradually and sufficiently recover depth values. Specifically, the repetition is embodied in both the image guidance branch and depth generation branch. In the former branch, we design a repetitive hourglass network to extract discriminative image features of complex environments, which can provide powerful contextual instruction for depth prediction. In the latter branch, we introduce a repetitive guidance module based on dynamic convolution, in which an efficient convolution factorization is proposed to simultaneously reduce its complexity and progressively model high-frequency structures. Extensive experiments show that our method achieves superior or competitive results on KITTI benchmark and NYUv2 dataset.
翻译:深度完成涉及从稀薄的深度地图中恢复密集的深度地图的问题,因为彩色图像常常被用于推动这项任务。最近的方法主要侧重于图像引导学习框架,以预测密度的深度。然而,图像中的模糊性指导以及深度结构的模糊性仍然阻碍着图像引导框架的性能。为了解决这些问题,我们在图像引导网络中探索了一种重复性设计,以逐步和充分地恢复深度值。具体地说,重复性体现在图像指导分支和深度生成分支中。在前分支中,我们设计了一个重复性的沙漏网络,以提取复杂环境中的歧视性图像特征,为深度预测提供强有力的背景指导。在后一个分支中,我们引入了一个基于动态共变动的重复性指导模块,其中建议一个高效的演进因子化同时降低其复杂性并逐步建模高频结构。广泛的实验表明,我们的方法在KITTI基准和NYUv2数据集上都取得了优或竞争性的结果。