ARCHITECTURAL OBJECTS RECOGNITION TECHNIQUE IN AUGMENTED REALITY TECHNOLOGIES BASED ON CREATING A SPECIALIZED MARKERS BASE

Olena Arsirii, Diana Kotova, I. Prykhodko, Yuliia Troianovska
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Abstract

The paper proposes a method for recognizing architectural objects when creating augmented reality mobile applications based on building a database of specialized markers. The main method of augmented reality technology for the recognition of architectural objects was chosen the technology based on special markers. The range of pattern recognition algorithms suitable for the task is highlighted. These are algorithms based on the selection of key points of images and their descriptors. The most important aim is the stable recognition of architectural objects upon mobile applications for augmented reality-type digital guide creation based on specialized markers. The scientific basis of the research is a systematic approach in the analysis of the considered markers recognition algorithms, machine learning for the development of a database of marker images and AO recognition are used. The technique consists of the following steps: processing images of architectural objects with the aim of identifying key points, obtaining descriptions of selected control points as descriptors, creating AR-metadata that correspond to architectural objects, organizing joint storage in the local database of descriptors and their corresponding metadata, visualizing the architectural object and AR metadata. To implement the stages of processing images of architectural objects and obtain descriptors of key points, algorithms for extracting key points on images, such as SIFT, MSER, SURF, RIFF, RF, are analyzed. It is shown that these algorithms are invariant to scaling, rotation, as well as resistant to changes in light, noise and viewing angle. A comprehensive use of them for processing architectural objects with the aim of obtaining descriptors of reference points was proposed. To ensure stable recognition of AO according to the developed methodology based on machine learning for processing architectural objects with the aim of obtaining descriptors of key points, it was proposed to create an additional module using an ordered stack. The launch sequence and the number of algorithms can be changed.
增强现实技术中基于创建专门标记库的建筑对象识别技术
本文提出了一种基于构建专用标记数据库的增强现实移动应用中建筑对象识别方法。本文选择了基于特殊标记的增强现实技术作为建筑对象识别的主要方法。强调了适合该任务的模式识别算法的范围。这些算法是基于图像的关键点及其描述符的选择。最重要的目标是在移动应用程序上稳定地识别建筑对象,用于基于专门标记的增强现实类型的数字指南创建。本研究的科学基础是采用系统的方法分析所考虑的标记识别算法,使用机器学习开发标记图像数据库和AO识别。该技术包括以下步骤:以识别关键点为目标处理建筑对象的图像,获得作为描述符的选定控制点的描述,创建与建筑对象对应的AR元数据,在描述符及其相应元数据的本地数据库中组织联合存储,可视化建筑对象和AR元数据。为了实现对建筑目标图像处理的各个阶段,获取关键点描述符,分析了SIFT、MSER、SURF、RIFF、RF等图像关键点提取算法。结果表明,这些算法不受缩放、旋转的影响,并且能够抵抗光线、噪声和视角的变化。提出了一种综合利用它们来处理建筑对象以获得参考点描述符的方法。为了确保基于机器学习的结构对象处理方法对AO的稳定识别,并以获取关键点描述符为目标,提出了使用有序堆栈创建附加模块的方法。启动顺序和算法的数量可以改变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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