Suppr超能文献

一种针对从三维表面摄影测量系统捕获的点云的连续表面重建方法。

A continuous surface reconstruction method on point cloud captured from a 3D surface photogrammetry system.

作者信息

Liu Wenyang, Cheung Yam, Sabouri Pouya, Arai Tatsuya J, Sawant Amit, Ruan Dan

机构信息

Department of Bioengineering, University of California, Los Angeles, California 90095.

Department of Radiation Oncology, University of Texas Southwestern, Dallas, Texas 75390.

出版信息

Med Phys. 2015 Nov;42(11):6564-71. doi: 10.1118/1.4933196.

Abstract

PURPOSE

To accurately and efficiently reconstruct a continuous surface from noisy point clouds captured by a surface photogrammetry system (VisionRT).

METHODS

The authors have developed a level-set based surface reconstruction method on point clouds captured by a surface photogrammetry system (VisionRT). The proposed method reconstructs an implicit and continuous representation of the underlying patient surface by optimizing a regularized fitting energy, offering extra robustness to noise and missing measurements. By contrast to explicit/discrete meshing-type schemes, their continuous representation is particularly advantageous for subsequent surface registration and motion tracking by eliminating the need for maintaining explicit point correspondences as in discrete models. The authors solve the proposed method with an efficient narrowband evolving scheme. The authors evaluated the proposed method on both phantom and human subject data with two sets of complementary experiments. In the first set of experiment, the authors generated a series of surfaces each with different black patches placed on one chest phantom. The resulting VisionRT measurements from the patched area had different degree of noise and missing levels, since VisionRT has difficulties in detecting dark surfaces. The authors applied the proposed method to point clouds acquired under these different configurations, and quantitatively evaluated reconstructed surfaces by comparing against a high-quality reference surface with respect to root mean squared error (RMSE). In the second set of experiment, the authors applied their method to 100 clinical point clouds acquired from one human subject. In the absence of ground-truth, the authors qualitatively validated reconstructed surfaces by comparing the local geometry, specifically mean curvature distributions, against that of the surface extracted from a high-quality CT obtained from the same patient.

RESULTS

On phantom point clouds, their method achieved submillimeter reconstruction RMSE under different configurations, demonstrating quantitatively the faith of the proposed method in preserving local structural properties of the underlying surface in the presence of noise and missing measurements, and its robustness toward variations of such characteristics. On point clouds from the human subject, the proposed method successfully reconstructed all patient surfaces, filling regions where raw point coordinate readings were missing. Within two comparable regions of interest in the chest area, similar mean curvature distributions were acquired from both their reconstructed surface and CT surface, with mean and standard deviation of (μrecon=-2.7×10(-3) mm(-1), σrecon=7.0×10(-3) mm(-1)) and (μCT=-2.5×10(-3) mm(-1), σCT=5.3×10(-3) mm(-1)), respectively. The agreement of local geometry properties between the reconstructed surfaces and the CT surface demonstrated the ability of the proposed method in faithfully representing the underlying patient surface.

CONCLUSIONS

The authors have integrated and developed an accurate level-set based continuous surface reconstruction method on point clouds acquired by a 3D surface photogrammetry system. The proposed method has generated a continuous representation of the underlying phantom and patient surfaces with good robustness against noise and missing measurements. It serves as an important first step for further development of motion tracking methods during radiotherapy.

摘要

目的

从表面摄影测量系统(VisionRT)采集的含噪点云中准确、高效地重建连续表面。

方法

作者开发了一种基于水平集的表面重建方法,用于处理表面摄影测量系统(VisionRT)采集的点云。该方法通过优化正则化拟合能量来重建潜在患者表面的隐式连续表示,对噪声和缺失测量具有更强的鲁棒性。与显式/离散网格型方案相比,其连续表示在后续表面配准和运动跟踪方面具有特别优势,因为无需像离散模型那样维护显式点对应关系。作者使用高效的窄带演化方案求解该方法。作者通过两组互补实验在体模和人体受试者数据上评估了该方法。在第一组实验中,作者在一个胸部体模上生成了一系列带有不同黑色斑块的表面。由于VisionRT在检测深色表面方面存在困难,从有斑块区域获得的VisionRT测量结果具有不同程度的噪声和缺失水平。作者将该方法应用于在这些不同配置下采集的点云,并通过相对于高质量参考表面的均方根误差(RMSE)定量评估重建表面。在第二组实验中,作者将其方法应用于从一名人体受试者获取的100个临床点云。在没有地面真值的情况下,作者通过将局部几何形状(特别是平均曲率分布)与从同一患者的高质量CT中提取的表面进行比较,定性地验证了重建表面。

结果

在体模点云上,他们的方法在不同配置下实现了亚毫米级的重建RMSE,定量地证明了所提方法在存在噪声和缺失测量时能够忠实保留潜在表面的局部结构特性,以及对这些特性变化的鲁棒性。在人体受试者的点云上,所提方法成功重建了所有患者表面,填补了原始点坐标读数缺失的区域。在胸部区域的两个可比感兴趣区域内,从重建表面和CT表面获得了相似的平均曲率分布,其均值和标准差分别为(μrecon = -2.7×10(-3) mm(-1),σrecon = 7.0×10(-3) mm(-1))和(μCT = -2.5×10(-3) mm(-1),σCT = 5.3×10(-3) mm(-1))。重建表面与CT表面之间局部几何特性的一致性证明了所提方法能够忠实地表示潜在患者表面。

结论

作者集成并开发了一种基于水平集的准确连续表面重建方法,用于处理三维表面摄影测量系统采集的点云。所提方法生成了潜在体模和患者表面的连续表示,对噪声和缺失测量具有良好的鲁棒性。它是放疗期间运动跟踪方法进一步发展的重要第一步。

相似文献

本文引用的文献

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验