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基于机器学习技术的空间增强现实视图管理中注释的可见性估计。

Estimating Visibility of Annotations for View Management in Spatial Augmented Reality Based on Machine-Learning Techniques.

机构信息

Department of Computer and Information Sciences, Tokyo University of Agriculture and Technology, Tokyo 184-8588, Japan.

出版信息

Sensors (Basel). 2019 Feb 22;19(4):939. doi: 10.3390/s19040939.

Abstract

Augmented Reality (AR) is a class of "mediated reality" that artificially modifies the human perception by superimposing virtual objects on the real world, which is expected to supplement reality. In visual-based augmentation, text and graphics, i.e., label, are often associated with a physical object or a place to describe it. View management in AR is to maintain the visibility of the associated information and plays an important role on communicating the information. Various view management techniques have been investigated so far; however, most of them have been designed for two dimensional see-through displays, and few have been investigated for projector-based AR called spatial AR. In this article, we propose a view management method for spatial AR, VisLP, that places labels and linkage lines based on the estimation of the visibility. Since the information is directly projected on objects, the nature of optics such as reflection and refraction constrains the visibility in addition to the spatial relationship between the information, the objects, and the user. VisLP employs machine-learning techniques to estimate the visibility that reflects human's subjective mental workload in reading information and objective measures of reading correctness in various projection conditions. Four classes are defined for a label, while the visibility of a linkage line has three classes. After 88 and 28 classification features for label and linkage line visibility estimators are designed, respectively, subsets of features with 15 and 14 features are chosen to improve the processing speed of feature calculation up to 170%, with slight degradation of classification performance. An online experiment with new users and objects showed that 76.0% of the system's judgments were matched with the users' evaluations, while 73% of the linkage line visibility estimations were matched.

摘要

增强现实(AR)是一类“介导的现实”,通过将虚拟物体叠加在真实世界上,人为地修改人类的感知,旨在补充现实。在基于视觉的增强中,文本和图形(即标签)通常与物理对象或位置相关联,以描述它们。AR 中的视图管理是为了保持相关信息的可见性,在传达信息方面起着重要作用。迄今为止已经研究了各种视图管理技术;然而,大多数技术都是为二维透视显示器设计的,很少有研究是针对基于投影仪的增强现实(称为空间 AR)进行的。在本文中,我们提出了一种用于空间 AR 的视图管理方法 VisLP,它基于可见性的估计来放置标签和链接线。由于信息直接投影到物体上,除了信息、物体和用户之间的空间关系外,光学性质(如反射和折射)也限制了可见性。VisLP 采用机器学习技术来估计可见性,该技术反映了人类在阅读信息时的主观心理工作量以及在各种投影条件下阅读正确性的客观度量。标签定义了四个类别,而链接线的可见性有三个类别。为标签和链接线可见性估计器分别设计了 88 和 28 个分类特征后,选择了包含 15 和 14 个特征的特征子集,将特征计算的处理速度提高了 170%,而分类性能略有下降。一项针对新用户和新物体的在线实验表明,系统判断的 76.0%与用户的评价相匹配,而链接线可见性估计的 73%与用户的评价相匹配。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/72a3/6412218/5061ca6fe78d/sensors-19-00939-g001.jpg

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