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Performance Analysis of Augmented Reality Based on Vuforia Using 3D Marker Detection

机译:基于Vuforia的3D标记检测增强现实性能分析

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In the field of education, especially engineering, there is evidence of skills gaps. According to a survey in the UK covers 2017-2024, the demand for electricity projected to increase. In fact, at the same time, 23.7% of electricity workers are predicted to experience retirement. Therefore, skills gaps need to be minimized through the development of effective and credible learning media. One of the innovations in developing instructional media is applying augmented reality. However, augmented reality performance needs testing to find out the factors that influence the success of object detection to provide maximum results when implemented in learning media. Several existing studies analyze the performance of augmented reality based on the NyARToolkit library, template matching, and the Metaio Mobile SDK. In this research, the performance of 3D object detection performed on augmented reality based on the Vuforia. The research scenarios based on the results of the analysis of the Vuforia working principle. The study conducted with three angles of shooting and several variations of light intensity and distance of the object. The research also conducted by covering part of the object's surface. The results showed that the Vuforia was able to detect objects well in several scenarios that applied with a success rate of 87.5%. The success rate of object detection strongly influenced by the surface area of the detected object and the intensity of the light space.
机译:在教育领域,特别是工程领域,存在技能差距的证据。根据英国2017年至2024年的一项调查,对电力的需求预计会增加。实际上,与此同时,预计有23.7%的电力工人将退休。因此,需要通过开发有效且可靠的学习媒体来最大程度地减少技能差距。开发教学媒体的创新之一是应用增强现实。但是,增强现实性能需要进行测试,以找出影响对象检测成功的因素,以便在学习媒体中实施时提供最大的结果。现有的一些研究基于NyARToolkit库,模板匹配和Metaio Mobile SDK分析了增强现实的性能。在这项研究中,基于Vuforia在增强现实上执行3D对象检测的性能。研究方案基于对Vuforia工作原理的分析结果。该研究以三个拍摄角度以及光强度和物体距离的几种变化进行。该研究还通过覆盖对象表面的一部分来进行。结果表明,Vuforia在多种应用场景下都能很好地检测物体,成功率为87.5%。对象检测的成功率受检测对象的表面积和光空间强度的影响很大。

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