一种用于摄像机姿态回归的CNN多场景数据集构建方法

Yuhao Ma, Hao Guo, Hong Chen, Mengxiao Tian, Xin Huo, Chengjiang Long, Shiye Tang, Xiaoyu Song, Qing Wang
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引用次数: 1

摘要

卷积神经网络(CNN)已被证明对相机姿势回归很有用,并且它们对一些具有挑战性的场景(如灯光变化,运动模糊和具有大量无纹理表面的场景)具有强大的效果。此外,PoseNet表明,深度学习系统可以在训练图像之间的空间内插入相机姿势。在本文中,我们探讨了处理数据集的不同策略如何影响姿态回归,并提出了一种构建多场景数据集的方法来训练这种神经网络。我们证明了仅使用一个神经网络就可以记住多个场景的位置。通过组合多个场景,我们发现神经网络的位置误差并没有随着摄像机之间距离的增加而显著减小,这意味着我们不需要为场景数量的增加而训练多个模型。我们还探讨了影响多场景相机姿态回归模型精度的影响因素,这可以帮助我们更好地将多个场景合并到一个数据集中。为了更好的研究,我们向公众开放了我们的代码和数据集。
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A Method to Build Multi-Scene Datasets for CNN for Camera Pose Regression
Convolutional neural networks (CNN) have shown to be useful for camera pose regression, and They have robust effects against some challenging scenarios such as lighting changes, motion blur, and scenes with lots of textureless surfaces. Additionally, PoseNet shows that the deep learning system can interpolate the camera pose in space between training images. In this paper, we explore how different strategies for processing datasets will affect the pose regression and propose a method for building multi-scene datasets for training such neural networks. We demonstrate that the location of several scenes can be remembered using only one neural network. By combining multiple scenes, we found that the position errors of the neural network do not decrease significantly as the distance between the cameras increases, which means that we do not need to train several models for the increase number of scenes. We also explore the impact factors that influence the accuracy of models for multi-scene camera pose regression, which can help us merge several scenes into one dataset in a better way. We opened our code and datasets to the public for better researches.
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