基于特征匹配技术的对象检索系统

Yuhao Zhang, Xiaoyan Hu
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引用次数: 0

摘要

图像匹配技术作为底层视觉技术,在许多领域发挥着极其重要的作用。在这众多的领域中,为了获得更好的效果,目前大多采用深度学习作为主流算法,但深度学习算法对设备的性能要求较高,移动端仅支持其承载深度学习任务是不够的。本文尝试使用比深度学习更适合的图像匹配技术来构建适合它们的应用场景。本文的主要内容是针对经典的基于特征的匹配技术中应用最广泛的SIFT算法,并在SIFT算法的基础上,结合单应性匹配的相关知识,构建一个面向小型移动终端的目标检索系统。系统可以检索包含在系统中的对象的图片中的对象。系统采用经典的SIFT算法作为主流算法来满足这些小型移动终端的需求。同时,该系统还具有很高的检索成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object retrieval system based on feature matching technology
As the underlying visual technology, image matching technology plays an extremely important role in many fields. In these many fields, in order to get better results, most of them currently use deep learning as the mainstream algorithm, but deep learning algorithms have high requirements for the performance of the device, so it is not enough for mobile terminal to support its carrying deep learning tasks. This thesis attempts to build a suitable application scenario for them using image matching technology which is more suitable than deep learning. The main content of this thesis is to focus on the most widely used SIFT algorithm in the classic feature-based matching technology, and based on the SIFT algorithm, combined with the knowledge of homography to construct an object retrieval system for small mobile terminal. The system can retrieve the object in a picture containing the object in the system. The system uses the classic SIFT algorithm as the mainstream algorithm to meet the needs of these small mobile terminal. At the same time, the system also has a very high retrieval success rate.
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