首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >PREDICTING THE ACCURACY OF PHOTOGRAMMETRIC 3D RECONSTRUCTION FROM CAMERA CALIBRATION PARAMETERS THROUGH A MULTIVARIATE STATISTICAL APPROACH
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PREDICTING THE ACCURACY OF PHOTOGRAMMETRIC 3D RECONSTRUCTION FROM CAMERA CALIBRATION PARAMETERS THROUGH A MULTIVARIATE STATISTICAL APPROACH

机译:通过多变量统计方法预测摄像机校准参数摄影测量3D重建的准确性

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Several tools have been introduced to generate accurate 3D models. Among these, Unmanned Aerial Vehicles (UAVs) are an effective low-cost tool to go beyond on-fields effort limits since they allow to fly over areas difficult to reach and to reduce the time needed to collect and process photogrammetric pictures as well. Combining their versatility with Structure from Motion (SfM) techniques efficiency has provided a widely accessible approach to generate accurate photogrammetric products. However, the outcome resolution and coherences also depend on sensor traits. Therefore, UAVs are usually equipped with low-cost non-metric cameras, with the consequent requirement for a calibration procedure to increase the final 3D models accuracy. Although several researchers have highlighted the strong impact of camera calibration parameters on the photogrammetric outcomes, their linkage has not been explored yet. This paper is aimed at investigating their relationship and to propose a novel predicting function of 3D photogrammetric reconstruction accuracy. Such function was estimated thanks to the application of the Principal Components Analysis (PCA) technique. Four photogrammetric UAV flight surveys provided the input data of PCA while an extra dataset was used to validate the results. Once PCA was completed, a synthetic index was proposed and the coefficient of determination was calculated between the index and error components. Synthetic indices values for the various datasets were applied as baseline to detect a predictive function able to assess the northern and eastern error components with a deviation of 0.005 m and 0.003 m, respectively. The proposed approach shows promising and satisfying results for predicting 3D models accuracy.
机译:已经引入了几种工具以产生准确的3D模型。其中,无人驾驶航空公司(无人机)是一种有效的低成本工具,以超越开场努力限制,因为它们允许飞过难以达到的区域,并且还可以减少收集和处理摄影测量图片所需的时间。将其与来自运动(SFM)技术的结构相结合的功能效率提供了一种广泛可接近的方法来产生准确的摄影测量产品。但是,结果分辨率和一致性也取决于传感器特征。因此,无人机通常配备有低成本的非公制摄像头,因此导致校准过程的要求增加最终的3D模型精度。虽然有几位研究人员突出了摄像机校准参数对摄影测量结果的强烈影响,但它们的联系尚未探讨。本文旨在调查他们的关系,并提出了一种新型预测函数3D摄影测量重建精度。由于应用主成分分析(PCA)技术的应用,估计了这种功能。四个摄影测量UAV飞行调查提供了PCA的输入数据,而额外的数据集用于验证结果。一旦PCA完成,提出了一种合成指标,并且在指数和误差分量之间计算确定系数。各个数据集的综合指数值被应用为基线,以检测能够评估北部和东部误差分量的预测功能,分别偏离0.005 m和0.003 m。该方法显示了预测3D模型精度的有前途和令人满意的结果。

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