3D Scene Geometry-Aware Constraint for Camera Localization with Deep Learning

Mi Tian, Qiong Nie, Hao Shen
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引用次数: 10

Abstract

Camera localization is a fundamental and key component of autonomous driving vehicles and mobile robots to localize themselves globally for further environment perception, path planning and motion control. Recently end-to-end approaches based on convolutional neural network have been much studied to achieve or even exceed 3D-geometry based traditional methods. In this work, we propose a compact network for absolute camera pose regression. Inspired from those traditional methods, a 3D scene geometry-aware constraint is also introduced by exploiting all available information including motion, depth and image contents. We add this constraint as a regularization term to our proposed network by defining a pixel-level photometric loss and an image-level structural similarity loss. To benchmark our method, different challenging scenes including indoor and outdoor environment are tested with our proposed approach and state-of-the-arts. And the experimental results demonstrate significant performance improvement of our method on both prediction accuracy and convergence efficiency.
基于深度学习的三维场景几何感知约束相机定位
摄像头定位是自动驾驶车辆和移动机器人实现全局定位的基础和关键组成部分,用于进一步的环境感知、路径规划和运动控制。近年来,人们对基于卷积神经网络的端到端方法进行了大量研究,以达到甚至超越基于3d几何的传统方法。在这项工作中,我们提出了一个紧凑的网络用于绝对相机姿态回归。在这些传统方法的启发下,利用所有可用的信息,包括运动、深度和图像内容,引入了三维场景几何感知约束。我们通过定义像素级的光度损失和图像级的结构相似性损失,将这个约束作为正则化项添加到我们提出的网络中。为了对我们的方法进行基准测试,使用我们提出的方法和最先进的技术对室内和室外环境等不同具有挑战性的场景进行了测试。实验结果表明,该方法在预测精度和收敛效率上都有显著提高。
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