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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Boundary-induced and scene-aggregated network for monocular depth prediction
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Boundary-induced and scene-aggregated network for monocular depth prediction

机译:用于单眼深度预测的边界诱导和场景聚合网络

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摘要

Monocular depth prediction is an important task in scene understanding. It aims to predict the dense depth of a single RGB image. With the development of deep learning, the performance of this task has made great improvements. However, two issues remain unresolved: (1) The deep feature encodes the wrong farthest region in a scene, which leads to a distorted 3D structure of the predicted depth; (2) The low-level features are insufficient utilized, which makes it even harder to estimate the depth near the edge with sudden depth change. To tackle these two issues, we propose the Boundary-induced and Scene-aggregated network (BS-Net). In this network, the Depth Correlation Encoder (DCE) is first designed to obtain the contextual correlations between the regions in an image, and perceive the farthest region by considering the correlations. Meanwhile, the Bottom-Up Boundary Fusion (BUBF) module is designed to extract accurate boundary that indicates depth change. Finally, the Stripe Refinement module (SRM) is designed to refine the dense depth induced by the boundary cue, which improves the boundary accuracy of the predicted depth. Several experimental results on the NYUD v2 dataset and the iBims-1 dataset illustrate the state-of-the-art performance of the proposed approach. And the SUN-RGBD dataset is employed to evaluate the generalization of our method. Code is available at https://github.com/XuefengBUPT/BS-Net .
机译:单目深度预测是场景理解中的一项重要任务。它旨在预测单个RGB图像的密集深度。随着深度学习的发展,这项任务的执行有了很大的提高。然而,有两个问题尚未解决:(1)深度特征对场景中错误的最远区域进行编码,这导致预测深度的3D结构扭曲;(2) 低层特征没有得到充分利用,这使得在深度突变的情况下更难估计边缘附近的深度。为了解决这两个问题,我们提出了边界诱导和场景聚合网络(BS-Net)。在该网络中,深度相关编码器(DCE)首先用于获取图像中各区域之间的上下文相关性,并通过考虑相关性来感知最远的区域。同时,设计了自底向上的边界融合(BUBF)模块来提取反映深度变化的精确边界。最后,设计了条带细化模块(SRM)对边界线索诱导的密集深度进行细化,提高了预测深度的边界精度。在NYUD v2数据集和iBims-1数据集上的几个实验结果说明了所提出方法的最新性能。并利用SUN-RGBD数据集对该方法的泛化性进行了评估。代码可在https://github.com/XuefengBUPT/BS-Net .

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