深度数据辅助结构-运动参数优化和特征轨迹校正

S. Recker, C. Gribble, Mikhail M. Shashkov, Mario Yepez, Mauricio Hess-Flores, K. Joy
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引用次数: 3

摘要

动态结构(SfM)应用程序试图从从不同摄像机视点拍摄的图像集合中重建底层场景的三维(3D)几何形状。SfM中的传统优化技术,即计算和细化相机姿势和3D结构,仅依赖于从彩色(RGB)图像生成的特征轨迹或相应像素集。随着可靠的深度传感器信息的丰富,这些优化程序可以增强,以提高重建的精度。本文提出了一个通用的成本函数,它基于先前建立的角成本函数和深度数据估计来评估重建的质量。成本函数考虑了两个误差度量:一是计算出的每个3D场景点与其对应的特征轨迹位置之间的角度误差,二是传感器深度值与其计算估计值之间的差异。利用提出的成本函数实现了一束调整参数优化,并对精度和性能进行了评估。与传统的包调整相反,在特征跟踪错误的情况下,还存在一个纠正例程来检测和纠正不准确的特征跟踪。滤波算法包括对相同场景点的深度估计进行聚类,并观察深度点估计与三角化三维点之间的差异。在真实数据和合成数据上的结果表明,该方法提高了重建精度。
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Depth data assisted structure-from-motion parameter optimization and feature track correction
Structure-from-Motion (SfM) applications attempt to reconstruct the three-dimensional (3D) geometry of an underlying scene from a collection of images, taken from various camera viewpoints. Traditional optimization techniques in SfM, which compute and refine camera poses and 3D structure, rely only on feature tracks, or sets of corresponding pixels, generated from color (RGB) images. With the abundance of reliable depth sensor information, these optimization procedures can be augmented to increase the accuracy of reconstruction. This paper presents a general cost function, which evaluates the quality of a reconstruction based upon a previously established angular cost function and depth data estimates. The cost function takes into account two error measures: first, the angular error between each computed 3D scene point and its corresponding feature track location, and second, the difference between the sensor depth value and its computed estimate. A bundle adjustment parameter optimization is implemented using the proposed cost function and evaluated for accuracy and performance. As opposed to traditional bundle adjustment, in the event of feature tracking errors, a corrective routine is also present to detect and correct inaccurate feature tracks. The filtering algorithm involves clustering depth estimates of the same scene point and observing the difference between the depth point estimates and the triangulated 3D point. Results on both real and synthetic data are presented and show that reconstruction accuracy is improved.
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