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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Evaluation of feature-based 3-d registration of probabilistic volumetric scenes
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Evaluation of feature-based 3-d registration of probabilistic volumetric scenes

机译:评估基于概率的三维场景的基于特征的3维配准

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摘要

Automatic estimation of the world surfaces from aerial images has seen much attention and progress in recent years. Among current modeling technologies, probabilistic volumetric models (PVMs) have evolved as an alternative representation that can learn geometry and appearance in a dense and probabilistic manner. Recent progress, in terms of storage and speed, achieved in the area of volumetric modeling, opens the opportunity to develop new frameworks that make use of the PVM to pursue the ultimate goal of creating an entire map of the earth, where one can reason about the semantics and dynamics of the 3-d world. Aligning 3-d models collected at different time-instances constitutes an important step for successful fusion of large spatio-temporal information. This paper evaluates how effectively probabilistic volumetric models can be aligned using robust feature-matching techniques, while considering different scenarios that reflect the kind of variability observed across aerial video collections from different time instances. More precisely, this work investigates variability in terms of discretization, resolution and sampling density, errors in the camera orientation, and changes in illumination and geographic characteristics. All results are given for large-scale, outdoor sites. In order to facilitate the comparison of the registration performance of PVMs to that of other 3-d reconstruction techniques, the registration pipeline is also carried out using Patch-based Multi-View Stereo (PMVS) algorithm. Registration performance is similar for scenes that have favorable geometry and the appearance characteristics necessary for high quality reconstruction. In scenes containing trees, such as a park, or many buildings, such as a city center, registration performance is significantly more accurate when using the PVM.
机译:近年来,根据航空影像自动估计世界表面已引起了广泛的关注和进展。在当前的建模技术中,概率体积模型(PVM)已经发展成为可以以密集和概率的方式学习几何形状和外观的替代表示形式。在体积建模领域中在存储和速度方面的最新进展,为开发利用PVM的新框架提供了机会,以实现创建整个地球地图的最终目标,人们可以在其中推理3-d世界的语义和动力学。对齐在不同时间点收集的3-d模型是成功融合大时空信息的重要一步。本文评估了如何使用鲁棒的特征匹配技术有效地对齐概率体积模型,同时考虑了反映不同时间实例的航空视频集合中观察到的可变性的不同场景。更准确地说,这项工作研究了离散,分辨率和采样密度,相机方向的误差以及照明和地理特征的变化等方面的可变性。所有结果均针对大型户外场所。为了便于将PVM的注册性能与其他3-d重建技术进行比较,还使用基于补丁的多视图立体声(PMVS)算法执行注册管道。对于具有良好几何形状和高质量重建所需的外观特征的场景,配准性能相似。在包含树木(如公园)或许多建筑物(如市中心)的场景中,使用PVM时配准性能明显更高。

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