文章摘要
宋大伟,马凤娟,赵华.基于相似度模型耦合角度制约规则的图像匹配算法[J].井冈山大学自然版,2019,40(2):39-44,51
基于相似度模型耦合角度制约规则的图像匹配算法
IMAGE MATCHING METHOD BASED ON SIMILARITY MODEL COUPLING ANGLE CONSTRAINT RULE
投稿时间:2018-11-23  修订日期:2018-12-27
DOI:10.3969/j.issn.1674-8085.2019.02.008
中文关键词: 图像匹配  FAST特征检测  SURF机制  SSIM模型  相似度模型  角度制约规则
英文关键词: image matching  FAST feature detection  SURF mechanism  SSIM model  similarity model  angle constraint rule
基金项目:山东省自然科学基金项目(ZR2013FQ030)
作者单位
宋大伟 潍坊工程职业学院, 山东, 潍坊 262500 
马凤娟 潍坊工程职业学院, 山东, 潍坊 262500 
赵华 山东科技大学, 山东, 青岛 266590 
摘要点击次数: 1563
全文下载次数: 1828
中文摘要:
      为了克服当前图像匹配方法主要通过测量距离的方法来实现图像匹配,忽略了图像间的相似度,导致算法存在错误匹配较多以及鲁棒性较差的问题。本文提出了基于相似度模型耦合角度制约规则的图像匹配算法。采用FAST检测方法对图像特征进行检测,快速获取鲁棒特征点,以改善算法的匹配正确率。随后,利用SURF特征描述机制,通过计算特征圆域内的Haar小波响应值,对特征点进行描述。引入结构相似度SSIM (structuralsimilarity index measurement)模型,将其与欧氏距离模型相结合,构造相似度模型,从结构相似度与测量距离两方面出发,将特征点进行粗匹配。最后,利用特征点的余弦关系,求取特征点间角度,建立角度制约规则,对粗匹配结果完成优化。实验结果显示:与典型的匹配方法相比,该算法具有更好的匹配性能较好,在多种几何变换下仍具有理想的匹配精度。
英文摘要:
      The current image matching methods mainly achieve image matching by measuring the distance,which neglect the similarity between images and result in more mismatches and poor robustness.In this paper,an image matching algorithm based on similarity degree model and coupling angle constraint rule is proposed.High-speed and high-accuracy feature detection method is used to detect the image features,and the feature points with high accuracy can be obtained fast,which is helpful to improve the matching accuracy of the algorithm.Using the feature description mechanism,the feature points are described by calculating the wavelet response values in the feature circle domain.The structure similarity model is introduced and combined with Euclidean distance model to construct similarity model.The feature points are roughly matched from the aspects of structure similarity and measurement distance.The cosine relation of feature points is used to calculate the angle between feature points,and the angle restriction rules are established to match the feature points accurately.Experimental results show that this matching algorithm has better matching performance and higher matching accuracy compared with the typical matching method.
查看全文   查看/发表评论  下载PDF阅读器
关闭