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基于改进的Harris和二次归一化互相关的量子图像拼接算法
引用本文:唐泽恬,丁召,曾瑞敏,王阳,朱登玮,王昱皓,钟岷哲,杨晨.基于改进的Harris和二次归一化互相关的量子图像拼接算法[J].激光与光电子学进展,2020,57(10):61-68.
作者姓名:唐泽恬  丁召  曾瑞敏  王阳  朱登玮  王昱皓  钟岷哲  杨晨
作者单位:贵州大学大数据与信息工程学院,半导体功率器件可靠性教育部工程研究中心,微纳电子与软件技术重点实验室,贵州贵阳,550025;贵州大学大数据与信息工程学院,半导体功率器件可靠性教育部工程研究中心,微纳电子与软件技术重点实验室,贵州贵阳,550025;贵阳朗玛信息技术股份有限公司,贵州贵阳,550022
基金项目:国家自然科学基金;贵州省科技计划;教育部工程研究中心
摘    要:针对量子图像拼接时,Harris算法需要人为设置阈值,以及图像局部相似度大导致误匹配率高的问题,提出了基于改进的Harris和二次归一化互相关(NCC)的量子图像拼接算法。在阈值设置方面,基于图像重复度高的事实,通过二值化和阈值下降统计图像子区域的量子点或环的数量以确定Harris阈值,并将其作为全图阈值。在误匹配方面,首先以小窗口进行NCC的匹配,初步筛选角点;然后在此结果上用大窗口进行第二次NCC,以降低误匹配率。实验结果表明:在量子点或环计数方面,该算法具有较好的精度和速度;在阈值设置方面,该算法将角点数量控制在合理的范围内;在匹配阶段,二次NCC的方法将误匹配率降低至4.82%~27.27%。因此,本文算法改善了量子图像拼接的可靠性和时间开销,在量子图像拼接中具有潜在的应用价值。

关 键 词:图像处理  量子图像  图像拼接  HARRIS  归一化互相关  量子计数

Quantum Image Stitching Algorithm Based on Improved Harris and Quadratic Normalized Cross Correlation
Tang Zetian,Ding Zhao,Zeng Ruimin,Wang Yang,Zhu Dengwei,Wang Yuhao,Zhong Minzhe,Yang Chen.Quantum Image Stitching Algorithm Based on Improved Harris and Quadratic Normalized Cross Correlation[J].Laser & Optoelectronics Progress,2020,57(10):61-68.
Authors:Tang Zetian  Ding Zhao  Zeng Ruimin  Wang Yang  Zhu Dengwei  Wang Yuhao  Zhong Minzhe  Yang Chen
Affiliation:(College of Big Data and Information Engineering,Guizhou University,Key Laboratory of Micro-Nano-Electronics and Softuure Technology of Guizhou Province,Porwer Semiconductor Device Reliability Engineering Center of the Ministry of Education,Guiyang,Guizhou 550025,China;Longmaster Information&Technology Co.,Guijang,Guizhou 550022,China)
Abstract:For the stitching of quantum images,the Harris algorithm needs to artificially set the threshold and the local similarity of the image is high,which leads to the high mismatch rate.The quantum image stitching algorithm based on improved Harris and the quadratic normalized cross correlation(NCC)is proposed.In terms of threshold setting,based on the fact that the image repeatability is high,the number of quantum dots or rings of the statistical image sub-region is determined by binarization and threshold reduction to determine the Harris threshold,and as a full-image threshold.In terms of mismatching,the NCC matching is first performed in a small window,and the corner points are initially screened.Then the second NCC is performed on the result with a large window to reduce the mismatch rate.Experimental results show that the proposed algorithm has better accuracy and speed in quantum dot or ring counting.In terms of threshold setting,the proposed algorithm controls the number of corner points within a reasonable range.In the matching stage,the quadratic NCC method reduces the mismatch rate to 4.82%-27.27%.Therefore,the proposed algorithm optimizes the reliability and time overhead of quantum image stitching,and has potential application value in quantum image stitching.
Keywords:image processing  quantum image  image stitching  Harris  normalized cross correlation  quantum counting
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