基于象限分割和环状搜索的全高清视频ORB匹配系统的FPGA实现

T. Rao, T. Ikenaga
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引用次数: 6

摘要

在依赖图像细节的高级计算机视觉应用中,全高清视频越来越受到重视。得益于高分辨率输入,基于局部特征的匹配系统在各种视觉应用的基础上,也可以获得更多的可用信息,从而获得更好的性能。然而,高分辨率带来了海量数据,同时实现实时性和低成本是一个挑战。提出了一种基于orb的全高清视频匹配系统,并在FPGA上实现。为了改进ORB在硬件上的非线性功能和特征转向部分,提出了基于象限分割的方向检测器和基于环状搜索的特征转向,使原有的操作更适合硬件。评价表明,本文提出的ORB匹配系统可以在13.37ms内完成一幅Full-HD(1920×1080)图像的特征提取和匹配,与基于sift的设计相比,在特征提取部分平均节省近75%的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quadrant segmentation and ring-like searching based FPGA implementation of ORB matching system for Full-HD video
Full-HD video has drawn more and more attention in advanced computer vision applications which rely on more details in image. Benefit from high resolution input, local feature based matching system which at base of various vision applications, can also get better performance due to more available information. However, high resolution brings massive data and makes it challenging to achieve real-time and low cost at the same time. This paper proposes an ORB-based matching system for Full-HD video which implemented on FPGA. To improve nonlinear functions and feature steering part of ORB in hardware, the Quadrant Segmentation based orientation detector and Ring-like Searching based feature steering are proposed to make original operation more suitable for hardware. Evaluation shows that the proposed ORB matching system can complete feature extraction and matching for one Full-HD(1920×1080) image within 13.37ms and save almost 75% resources on average in feature extraction part compared with SIFT-based design.
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