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COMPARISON OF NATURAL FEATURE DESCRIPTORS FOR RIGID-OBJECT TRACKING FOR REAL-TIME AUGMENTED REALITY

机译:用于实时增强现实的刚体跟踪自然特征描述子的比较

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This paper presents a comparison of natural feature descriptors for rigid object tracking for augmented reality (AR) applications. AR relies on object tracking in order to identify a physical object and to superimpose virtual object on an object. Natural feature tracking (NFT) is one approach for computer vision-based object tracking. NFT utilizes interest points of a physcial object, represents them as descriptors, and matches the descriptors against reference descriptors in order to identify a phsical object to track. In this research, we investigate four different natural feature descriptors (SIFT, SURF, FREAK, ORB) and their capability to track rigid objects. Rigid objects need robust descriptors since they need to describe the objects in a 3D space. AR applications are also real-time application, thus, fast feature matching is mandatory. FREAK and ORB are binary descriptors, which promise a higher performance in comparison to SIFT and SURF. We deployed a test in which we match feature descriptors to artificial rigid objects. The results indicate that the SIFT descriptor is the most promising solution in our addressed domain, AR-based assembly training.
机译:本文对用于增强现实(AR)应用程序的刚性对象跟踪的自然特征描述符进行了比较。 AR依靠对象跟踪来识别物理对象并将虚拟对象叠加在对象上。自然特征跟踪(NFT)是一种用于基于计算机视觉的对象跟踪的方法。 NFT利用物理对象的兴趣点,将它们表示为描述符,并将描述符与参考描述符进行匹配,以识别要跟踪的物理对象。在这项研究中,我们研究了四个不同的自然特征描述符(SIFT,SURF,FREAK,ORB)及其跟踪刚性物体的能力。刚性对象需要鲁棒的描述符,因为它们需要在3D空间中描述对象。 AR应用程序也是实时应用程序,因此,快速功能匹配是必不可少的。 FREAK和ORB是二进制描述符,与SIFT和SURF相比,它们具有更高的性能。我们部署了一个测试,在该测试中,我们将特征描述符与人造刚性物体进行了匹配。结果表明,在我们基于AR的装配培训领域中,SIFT描述符是最有前途的解决方案。

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