图像匹配结合SIFT和区域匹配程序2012国际会议上控制工.pdf
《图像匹配结合SIFT和区域匹配程序2012国际会议上控制工.pdf》由会员分享,可在线阅读,更多相关《图像匹配结合SIFT和区域匹配程序2012国际会议上控制工.pdf(3页珍藏版)》请在淘文阁 - 分享文档赚钱的网站上搜索。
1、Image matching combine SIFT with regional SSDAQiu Wentao1,2,Zhao Jian1*,Liu Jie1(1 Changchun Institute of Optics,Fine Mechanics and Physics,Chinese Academy of Sciences,Changchun 130033,China,E-mail:;2 Graduate University of the Chinese Academy of Sciences,Beijing 100039,China)AbstractImage matching
2、is at the base of many computer vision problems,such as object recognition or image stitching.Standard SIFT provides poor performance when images under viewpoint change conditions and with similar corners.Hence,we propose a matching algorithm combine regional SSDA with simplified SIFT algorithm.We d
3、emonstrate through experiments that our algorithm yields better performance in images ofviewpoint change and similar feature points.Besides,the simplified algorithm cut down about half the time was originally needed in our tested images.Keywords-Image matching?SIFT?SSDAI.INTRODUCTION Image matching
4、is an essential part of many modern computer vision systems that solve tasks such as object or scene recognition,stereo correspondence,image indexing and it is the basis of image stitching,image fusion 1,2.It is a technique that wildly used in processing medical images,remote sensing images etc.Imag
5、e registration is to find a transformation between two or two more images,which is of the same scene obtained from different time or different sensors or different viewpoint,enables their identical in spatial locations.In literature 1,2,methods of image matching can be broadly divided into two categ
6、ories:image matching based on gray intensity and based on image feature.Image matching based on intensity usually make use of the intensity information to build a similarity function between two images,such as sequential similarity detection algorithm(SSDA)3,phrase correlation and Fourier-Mellin tra
7、nsformation etc.While image matching based on feature oftentimes extractfeatures such as corners,contours,interlines,curvature and synthesized descriptors etc.Since it doesnt rely on image intensity thus reducing the probability of disruption by noise,it became the most popular methodology that used
8、 currently.Scale-invariant feature transform(SIFT)4,5,6 is invariant to image scaling and rotation,and partially invariant to change in illumination and 3D camera viewpoint.In addition,large number of features detected is of highly distinctive.All these properties make SIFT the most popularly studie
9、d recently.Most related research efforts focused on designing and learning effective descriptors or on speeding up the computation in detection components,incorporating the applicable criteria that follow.II.REVIEW OF SIFT ALGORITHMStandard SIFT,as described in 4,consists of five major stages of com
10、putation to detect and match feature points,which is shown in Fig.1.Figure 1 SIFT computational process?Scale-space 7 extrema detection,extremum detection in both scale space and image coordinate plane.A Gaussian pyramid is constructed and candidate points are extracted by scanning local extremum in
11、 a series of DoG(Difference of Gaussian)images.?Keypoint location,candidate points are localized to sub-pixel accuracy through fitting three-dimension quadratic function,and unstable points of low contrast or strong edge response are eliminated.?Orientation assignment,orientations are assigned to ea
12、ch keypoint location based on statistical result of local image gradient directions.?Keypoint descriptor,SIFT descriptor is the representation of statistical local image gradients which measured at the selected scale in the region around each keypoint.?Matching the SIFT feature points.Calculate Eucl
13、idean distance between each SIFT descriptors to match points.In later estimation parameters of transformation,use RANSAC 8 to eliminate outliers to ensure the accuracy of parameters estimation.III.SIFT COMBINE WITH REGIONAL SSDABased on our observations,when it comes to images that with change in vi
14、ewpoint and with similar corners within images,SIFT cannot get a satisfying result.In order to tackle this problem,we propose a simplified SIFT combine with regional SSDA.In this section,we elaborate our proposed algorithm,using two pair of images with size of 816?616.There are rotation,real-world v
15、iewpoint change,illumination and scale change between reference image and test image.Our proposed algorithm run on Intel E5200 Pentium(R)Dual-CoreCPU 2.5GHz PC.We first apply SIFT to these images,and the results show in Fig.2 and Fig.3.We can see only one correct match in Fig.1 and no correct match
16、obtained in Fig.2.Figure 2 SIFT matching result of first pair imagesFunded by Key Project of Science and Technology Department of Jilin Province(Grant No.20100310)2012 International Conference on Control Engineering and Communication Technology978-0-7695-4881-4/12$26.00 2012 IEEEDOI 10.1109/ICCECT.2
17、012.781772012 International Conference on Control Engineering and Communication Technology978-0-7695-4881-4/12$26.00 2012 IEEEDOI 10.1109/ICCECT.2012.78177Figure 3 SIFT matching result of second pair imagesA.regional SSDAIn order to enhance the ability of SIFT to distinguish similar corner within im
- 配套讲稿:
如PPT文件的首页显示word图标,表示该PPT已包含配套word讲稿。双击word图标可打开word文档。
- 特殊限制:
部分文档作品中含有的国旗、国徽等图片,仅作为作品整体效果示例展示,禁止商用。设计者仅对作品中独创性部分享有著作权。
- 关 键 词:
- 图像 匹配 结合 SIFT 区域 程序 2012 国际会议 控制
限制150内