论文标题
自我监督单眼估计的级联网络
Cascade Network for Self-Supervised Monocular Depth Estimation
论文作者
论文摘要
通过使用单眼相机获得真实的场景深度图是一个经典的计算视觉问题,近年来一直广泛关注。但是,培训该模型通常需要大量人工标记的样品。为了解决这个问题,一些研究人员使用自我监督的学习模型来克服此问题并减少对手动标记数据的依赖。然而,这些方法的准确性和可靠性尚未达到预期的标准。在本文中,我们提出了一种基于级联网络的新的自学学习方法。与以前的自我监督方法相比,我们的方法提高了准确性和可靠性,我们已经通过实验证明了这一点。我们显示了一个级联的神经网络,该网络将目标场景分为不同视力距离的一部分,并分别训练它们以生成更好的深度图。我们的方法分为以下四个步骤。在第一步中,我们使用自我监督的模型大致估计场景的深度。在第二步中,在第一步中生成的场景的深度被用作将场景分为不同深度部分的标签。第三步是使用具有不同参数的模型来生成目标场景中不同深度部分的深度图,第四步是融合深度图。通过消融研究,我们表明了每个组件的有效性,并在Kitti基准中显示出高质量的最先进的结果。
It is a classical compute vision problem to obtain real scene depth maps by using a monocular camera, which has been widely concerned in recent years. However, training this model usually requires a large number of artificially labeled samples. To solve this problem, some researchers use a self-supervised learning model to overcome this problem and reduce the dependence on manually labeled data. Nevertheless, the accuracy and reliability of these methods have not reached the expected standard. In this paper, we propose a new self-supervised learning method based on cascade networks. Compared with the previous self-supervised methods, our method has improved accuracy and reliability, and we have proved this by experiments. We show a cascaded neural network that divides the target scene into parts of different sight distances and trains them separately to generate a better depth map. Our approach is divided into the following four steps. In the first step, we use the self-supervised model to estimate the depth of the scene roughly. In the second step, the depth of the scene generated in the first step is used as a label to divide the scene into different depth parts. The third step is to use models with different parameters to generate depth maps of different depth parts in the target scene, and the fourth step is to fuse the depth map. Through the ablation study, we demonstrated the effectiveness of each component individually and showed high-quality, state-of-the-art results in the KITTI benchmark.