首页> 外文期刊>Computer Graphics Forum: Journal of the European Association for Computer Graphics >State-of-the-art in Multi-Light Image Collections for Surface Visualization and Analysis
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State-of-the-art in Multi-Light Image Collections for Surface Visualization and Analysis

机译:用于表面可视化和分析的多光图像集合中的最先进

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摘要

Multi-Light Image Collections (MLICs), i.e., stacks of photos of a scene acquired with a fixed viewpoint and a varying surface illumination, provide large amounts of visual and geometric information. In this survey, we provide an up-to-date integrative view of MLICs as a mean to gain insight on objects through the analysis and visualization of the acquired data. After a general overview of MLICs capturing and storage, we focus on the main approaches to produce representations usable for visualization and analysis. In this context, we first discuss methods for direct exploration of the raw data. We then summarize approaches that strive to emphasize shape and material details by fusing all acquisitions in a single enhanced image. Subsequently, we focus on approaches that produce relightable images through intermediate representations. This can be done both by fitting various analytic forms of the light transform function, or by locally estimating the parameters of physically plausible models of shape and reflectance and using them for visualization and analysis. We finally review techniques that improve object understanding by using illustrative approaches to enhance relightable models, or by extracting features and derived maps. We also review how these methods are applied in several, main application domains, and what are the available tools to perform MLIC visualization and analysis. We finally point out relevant research issues, analyze research trends, and offer guidelines for practical applications.
机译:多光图像集合(MLICS),即用固定视点和不同的表面照明获取的场景的堆叠,提供了大量的视觉和几何信息。在本调查中,我们提供了一个最新的MLIC的集成视图,作为通过分析和可视化获取数据的识别对象的含义。在MLIC捕获和存储的一般概述之后,我们专注于产生可用于可视化和分析的主要方法。在此背景下,我们首先讨论用于直接探索原始数据的方法。然后,我们总结了通过融合在单个增强图像中的所有采集来强调形状和材料细节的方法。随后,我们专注于通过中间陈述产生可致力的图像的方法。这可以通过拟合各种分析形式的光变换功能,或通过局部估计物理可粘合模型的形状和反射率的参数,并使用它们进行可视化和分析。我们终于通过使用说明性方法来提高可致力模型或通过提取特征和派生地图来审查改善对象理解的技巧。我们还介绍了这些方法如何应用于多个主应用域,以及执行MLIC可视化和分析的可用工具。我们终于指出了相关的研究问题,分析了研究趋势,并提供了实际应用的指导。

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