对单幅图像进行统一深度和语义预测

Peng Wang, Xiaohui Shen, Zhe L. Lin, Scott D. Cohen, Brian L. Price, A. Yuille
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引用次数: 409

摘要

深度估计和语义分割是图像理解中的两个基本问题。虽然这两个任务密切相关且相互有利,但它们通常是分开或顺序解决的。基于这两个任务的互补性,我们提出了一个统一的联合深度和语义预测框架。给定一张图像,我们首先使用训练好的卷积神经网络(CNN)来共同预测由像素深度值和语义标签组成的全局布局。通过允许深度和语义信息之间的交互,联合网络提供了比仅为深度预测而训练的最先进的CNN更准确的深度预测[6]。为了进一步获得精细细节,在全局布局的指导下,将图像分解为局部片段进行区域级深度和语义预测。利用像素级全局预测和区域级局部预测,我们在双层分层条件随机场(HCRF)中形成推理问题,从而生成最终的深度和语义图。如实验所示,我们的方法有效地利用了这两个任务的优势,并提供了最先进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards unified depth and semantic prediction from a single image
Depth estimation and semantic segmentation are two fundamental problems in image understanding. While the two tasks are strongly correlated and mutually beneficial, they are usually solved separately or sequentially. Motivated by the complementary properties of the two tasks, we propose a unified framework for joint depth and semantic prediction. Given an image, we first use a trained Convolutional Neural Network (CNN) to jointly predict a global layout composed of pixel-wise depth values and semantic labels. By allowing for interactions between the depth and semantic information, the joint network provides more accurate depth prediction than a state-of-the-art CNN trained solely for depth prediction [6]. To further obtain fine-level details, the image is decomposed into local segments for region-level depth and semantic prediction under the guidance of global layout. Utilizing the pixel-wise global prediction and region-wise local prediction, we formulate the inference problem in a two-layer Hierarchical Conditional Random Field (HCRF) to produce the final depth and semantic map. As demonstrated in the experiments, our approach effectively leverages the advantages of both tasks and provides the state-of-the-art results.
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