基于深度学习的增量 SFM 3D 重构

Lei Liu, Congzheng Wang, Chuncheng Feng, Wanqi Gong, Lingyi Zhang, Libin Liao, Chang Feng
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引用次数: 0

摘要

近年来,随着无人飞行器(UAV)技术的飞速发展,多视角三维重建再次成为计算机视觉领域的热点。增量式运动结构重建(SFM)是目前最流行的重建管道,但它在重建效率、精度和特征匹配方面仍面临挑战。本文采用深度学习算法进行特征匹配,以获得更精确的匹配点对。此外,我们还采用了改进的高斯-牛顿(GN)方法,不仅避免了数值发散,还加快了束调整(BA)的速度。然后,用 SFM 重建的稀疏点云和原始图像作为深度估计网络的输入,预测每幅图像的深度图。最后,融合深度图完成密集点云的重建。经过实验验证,重建后的密集点云细节丰富、纹理清晰,点云的完整性、整体精度和重建效率都得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental SFM 3D Reconstruction Based on Deep Learning
In recent years, with the rapid development of unmanned aerial vehicle (UAV) technology, multi-view 3D reconstruction has once again become a hot spot in computer vision. Incremental Structure From Motion (SFM) is currently the most prevalent reconstruction pipeline, but it still faces challenges in reconstruction efficiency, accuracy, and feature matching. In this paper, we use deep learning algorithms for feature matching to obtain more accurate matching point pairs. Moreover, we adopted the improved Gauss–Newton (GN) method, which not only avoids numerical divergence but also accelerates the speed of bundle adjustment (BA). Then, the sparse point cloud reconstructed by SFM and the original image are used as the input of the depth estimation network to predict the depth map of each image. Finally, the depth map is fused to complete the reconstruction of dense point clouds. After experimental verification, the reconstructed dense point clouds have rich details and clear textures, and the integrity, overall accuracy, and reconstruction efficiency of the point clouds have been improved.
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