移动设备ORB特征匹配算法

Jia-min Liu, Jin-Song Yu, Chudi Wang, Xia Zhang
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引用次数: 2

摘要

特征匹配是实现基于移动的增强现实系统的关键问题。然而,匹配方法的性能受到移动设备处理速度和存储容量的限制。考虑到增强现实系统中跟踪配准的实时性要求,提出了一种基于ORB的特征匹配算法,将SIFT算法与原有ORB算法相结合,在保证算法效率的基础上,改进了尺度不变性的弱点。此外,采用词袋模型来提高特征点的匹配速度。实验结果表明,该算法在目标实时跟踪、尺度不变性和匹配时间等方面均优于原ORB算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An ORB Feature Matching Algorithm for Mobile Devices
Feature matching is a key issue to realize a mobile-based augmented reality system. However, the performance of the matching methods is constrained by the processing speed and storage capacity of mobile devices. Considering the real-time requirement of tracking registration in the augmented reality system, a feature matching algorithm based on ORB is proposed, which combines SIFT algorithm with the original ORB algorithm to improve the weakness of the scale invariance on the basis of ensuring the efficiency of the algorithm. Moreover, a Bag-of-Words model is used to enhance the matching speed of feature points. Experimental results show that the algorithm can obtain better results than the original ORB algorithm on the aspects of real-time tracking target, scale invariance and matching time.
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