Deeper Depth Prediction with Fully Convolutional Residual Networks

Iro Laina, C. Rupprecht, Vasileios Belagiannis, Federico Tombari, Nassir Navab
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引用次数: 1598

Abstract

This paper addresses the problem of estimating the depth map of a scene given a single RGB image. We propose a fully convolutional architecture, encompassing residual learning, to model the ambiguous mapping between monocular images and depth maps. In order to improve the output resolution, we present a novel way to efficiently learn feature map up-sampling within the network. For optimization, we introduce the reverse Huber loss that is particularly suited for the task at hand and driven by the value distributions commonly present in depth maps. Our model is composed of a single architecture that is trained end-to-end and does not rely on post-processing techniques, such as CRFs or other additional refinement steps. As a result, it runs in real-time on images or videos. In the evaluation, we show that the proposed model contains fewer parameters and requires fewer training data than the current state of the art, while outperforming all approaches on depth estimation. Code and models are publicly available.
基于全卷积残差网络的深度预测
本文解决了给定单个RGB图像的场景深度图估计问题。我们提出了一个包含残差学习的全卷积架构,对单眼图像和深度图之间的模糊映射进行建模。为了提高输出分辨率,我们提出了一种在网络内有效学习特征映射上采样的新方法。为了优化,我们引入了反向Huber损失,它特别适合手头的任务,并由深度图中常见的值分布驱动。我们的模型由端到端训练的单一体系结构组成,不依赖于后处理技术,例如crf或其他额外的细化步骤。因此,它可以在图像或视频上实时运行。在评估中,我们表明所提出的模型包含更少的参数,并且需要更少的训练数据,而在深度估计方面优于所有方法。代码和模型是公开可用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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