FarSight:从户外图像中进行远程深度估计

Md. Alimoor Reza, J. Kosecka, P. David
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引用次数: 6

摘要

本文介绍了城市室外环境的远距离单目深度估计问题。距离传感器和传统的深度估计算法(包括立体和单视图)在室外环境中预测距离小于100米,在室内环境中预测距离小于10米。使用学习方法的室外单视图方法的缺点,在一定程度上是由于缺乏远程地面真值训练数据,而这又是由于距离传感器的限制。为了解决这个问题,我们首先提出了一种新的策略来生成合成的远程地真深度数据。我们利用谷歌地球图像,以适当的比例重建不同城市的大尺度三维模型。获得的3D模型存储库和相关的RGB视图以及它们的远程深度渲染用作深度预测的训练数据。然后,我们训练两个深度神经网络模型用于远程深度估计:i)卷积神经网络(CNN)和ii)生成对抗网络(GAN)。我们在实验中发现,GAN模型更准确地预测深度。我们计划开放数据库和基线模型供公众使用。
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FarSight: Long-Range Depth Estimation from Outdoor Images
This paper introduces the problem of long-range monocular depth estimation for outdoor urban environments. Range sensors and traditional depth estimation algorithms (both stereo and single view) predict depth for distances of less than 100 meters in outdoor settings and 10 meters in indoor settings. The shortcomings of outdoor single view methods that use learning approaches are, to some extent, due to the lack of long-range ground truth training data, which in turn is due to limitations of range sensors. To circumvent this, we first propose a novel strategy for generating synthetic long-range ground truth depth data. We utilize Google Earth images to reconstruct large-scale 3D models of different cities with proper scale. The acquired repository of 3D models and associated RGB views along with their long-range depth renderings are used as training data for depth prediction. We then train two deep neural network models for long-range depth estimation: i) a Convolutional Neural Network (CNN) and ii) a Generative Adversarial Network (GAN). We found in our experiments that the GAN model predicts depth more accurately. We plan to open-source the database and the baseline models for public use.
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