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1.
基于形态学梯度和互信息的医学图像配准方法   总被引:3,自引:0,他引:3  
基于互信息的图像配准方法,已被广泛用于医学图像的配准.但是该方法计算量较大且无法处理图像空间信息,导致运行时间较长且易陷入局部极值.为解决此问题,本研究提出了一种基于形态学梯度和互信息相结合的医学图像配准新方法,该方法充分利用图像的灰度信息和空间几何形状,可节省运行时间且有效改善传统互信息方法中的局部极值问题.实验结果表明,该方法的配准精度和运行速度明显优于传统方法.  相似文献   

2.
目的提出一种基于Contourlet变换,用于放射治疗定位的CT与锥形束CT(cone beam CT,CBCT)图像配准的方法.方法 利用Contourlet变换多尺度多方向的分辨特性,将待配准图像进行Contourlet变换分解,分解后的高频方向子带合成梯度图像,采用归一化互信息作为相似性测度,把梯度图像与低频方向子带以加权函数结合,进行临床医学图像的刚性配准,有效弥补了互信息配准中缺少空间信息的不足.结果 通过已知空间变换参数图像的配准结果验证了算法的准确性.配准后10幅图像变换参数的误差极小,且均方根误差接近于0.结论 该图像配准算法精确度高,并具有很好的鲁棒性,有助于提高图像引导放射治疗(image guided radiation therapy,IGRT)中解剖组织结构和靶区的定位精度.  相似文献   

3.
目的提出一种基于Contourlet变换,用于放射治疗定位的CT与锥形束CT(cone beam CT,CBCT)图像配准的方法。方法利用Contourlet变换多尺度多方向的分辨特性,将待配准图像进行Contourlet变换分解,分解后的高频方向子带合成梯度图像,采用归一化互信息作为相似性测度,把梯度图像与低频方向子带以加权函数结合,进行临床医学图像的刚性配准,有效弥补了互信息配准中缺少空间信息的不足。结果通过已知空间变换参数图像的配准结果验证了算法的准确性。配准后lO幅图像变换参数的误差极小,且均方根误差接近于0。结论该图像配准算法精确度高,并具有很好的鲁棒性,有助于提高图像引导放射治疗(image guid edradiation therapy,IGRT)中解剖组织结构和靶区的定位精度。  相似文献   

4.
PSO和Powell混合算法在医学图像配准中的应用研究   总被引:8,自引:0,他引:8  
基于互信息的图像配准方法具有自动化程度高、配准精度高等优点,已被广泛应用于医学图像的配准.但是,基于互信息的目标函数经常是不光滑的,存在许多局部极值,给问题的求解带来了很大的困难.本文讨论了互信息函数的多极值特性,并提出了一种粒子群优化算法(particle swarm optimization,PSO)和Powell混合优化方法.经检验,这种方法能有效地克服互信息函数的局部极值,大大地提高了配准精度,达到亚像素级.  相似文献   

5.
引入高斯函数的互信息法多模态图像配准   总被引:1,自引:0,他引:1  
目的:最大互信息作为相似度测量在医学图像配准中已被广泛应用。在计算图像互信息时,为了避免引入新的灰度值一般采用部分体积插值统计两幅图像的联合直方图。但用该方法计算中,当图像平移整数点时,统计联合直方图会出现缺陷,使目标函数出现局部极值,从而造成误配准。方法:将高斯函数引入到直方图统计中,选取适当的邻域,用高斯函数计算邻域内各点像素对联合直方图的贡献。利用高斯函数的平滑性,避免了在互信息计算过程中统计图像联合直方图时出现误差。使用Powell优化方法,寻找最佳的优化参数,实现图像的最佳配准。结果:采用CT-PET数据进行实验,该方法平滑了目标函数,有效地消除了局部极值,提高了多模态图像配准的精确性,并且,对噪音图像配准也产生很好的效果。结论:该方法适用于多模态医学图像配准,克服了传统互信息计算时的不足,提高了配准的正确率和精确度。  相似文献   

6.
目的:基于互信息的配准方法是医学图像配准领域的重要方法,具有鲁棒性,精度高等优点。本文探究医学刚性图像配准的有效算法和关键技术。方法:基于互信息配准方法,利用Powell多参数算法和改进的PV插值算法,得到两幅图像之间的最大互信息和最佳配准参数。结果:二维磨牙CT图像配准实验表明,配准速度快,精度提高,验证了插值方法的有效性。结论:方法和算法可提高配准速度,能有效抑制互信息目标函数的局部极值。  相似文献   

7.
基于互信息的配准方法,其目标函数经常存在许多局部极值,给配准的优化过程带来很大困难。提出一种基于概率模型的引力优化算法,在空间中随机构造参考物体与浮动物体,根据牛顿万有引力定律,搜索空间中质量最大的物体。利用该算法,实现以归一化互信息为相似性测度的医学图像配准实验。实验结果表明,这种方法能够有效地克服互信息的局部极值,在配准精度、配准时间和抗噪性方面都有较好的性能。  相似文献   

8.
以互信息为相似性测度,采用B样条变换对多模态医学图像进行非刚性配准时,由于噪声及图像插值等原因造成的互信息局部极值使得传统优化方法不能搜索到最佳配准参数。为此,使用粒子群智能优化方法作为搜索策略,以降低对图像预处理的要求,进一步提高基于互信息的非刚性配准的鲁棒性。为了克服粒子群算法受初始值选取等因素的影响易陷于局部最优的缺点,使用LBFGS优化得到的结果构造初始粒子群,采用多目标优化方法结合交叉变异策略加以改进,使得算法在解空间搜索的遍历性得到改善,优化结果更接近全局最优。MR-T2与MR-PD图像的配准实验证明,该方法提高了基于互信息的B样条非刚性配准的鲁棒性,配准率达到94%;CT与PET图像的配准实验表明该方法相比惯性权重粒子群算法提高了配准精度,互信息增加了0.026;另外,CT与CBCT图像的配准实验也验证了本方法的有效性。  相似文献   

9.
目的:及时纠正放射治疗过程中患者的摆位误差,提高放射治疗效果.方法:本文对放疗中射野图像和参考图像的进行配准,应用Canny算子进行两幅图像的边缘提取,将提取的图像边缘作为配准的基准点,以射野图像与参考图像的最大互信息为配准准则,应用模拟退火法优化配准参数,搜索图像最大互信息.结果:本文对29例宫颈癌和前列腺癌患者的射野图像与参考图像进行了配准,结果表明该方法配准精度高,提高了配准的速度.结论:该配准方法适用于放疗临床摆位误差的在线分析.  相似文献   

10.
基于互信息的医学图像配准中互信息的计算   总被引:1,自引:0,他引:1  
基于互信息的配准方法是医学图像配准领域的重要方法.互信息是图像配准中常用的相似性度量,具有鲁棒、精度高等优点,但基于互信息的配准计算量大,制约了它的实际应用.我们采用基于多分辨率和混合优化策略的配准方法,在图像的不同灰度等级数下进行配准,分析了互信息的计算量与灰度等级数的关系,并用人头部的MRI图像和CT图像做了二维的单模模拟实验和多模实际配准实验,结果显示在灰度等级数为32和64时,与灰度等级数为256时相比,配准精度没有明显改变,而计算量下降显著.  相似文献   

11.
Image registrations that are based on similarity measures simply adjust the parameters of an appropriate spatial transformation model until the similarity measure reaches an optimum. The numerous similarity measures that have been proposed in the past are differently sensitive to imaging modality, image content and differences in the image content, selection of the floating and target image, partial image overlap, etc. In this paper, we evaluate and compare 12 similarity measures for the rigid registration. To study the impact of different imaging modalities on the behavior of similarity measures, we have used 16 CT/MR and 6 PET/MR image pairs with known 'gold standard' registrations. The results for the PET/MR registration and for the registration of CT to both rectified and unrectified MR images indicate that mutual information, normalized mutual information and the entropy correlation coefficient are the most accurate similarity measures and have the smallest risk of being trapped in a local optimum. The results of an experiment on the impact of exchanging the floating and target image indicate that, especially in MR/PET registrations, the behavior of some similarity measures, such as mutual information, significantly depends on which image is the floating and which is the target.  相似文献   

12.
An improved image registration method is proposed based on mutual infor- mation with hybrid optimizer. Firstly, mutual information measure is combined with morphological gradient information. The essence of the gradient information is that locations a large gradient magnitude should be aligned, but also the orientation of the gradients at those locations should be similar. Secondly, a hybrid optimizer combined PSO with Powell algorithm is proposed to restrain local maxima of mutual information function and improve the registration accuracy to sub-pixel level. Lastly, muhlresolution data structure based on Mallat decomposition can not only improve the behavior of registration function, but also improve the speed of the algorithm. Experimental results demonstrate that the new method can yield good registration result, superior to traditional optimizer with respect to smoothness and attraction basin as well as convergence speed.  相似文献   

13.
Conventional approaches to image registration are generally limited to image-wide rigid transformations. However, the body and its internal organs are non-rigid structures that change shape due to changes in the body's posture during image acquisition, and due to normal, pathological and treatment-related variations. Inter-subject matching also constitutes a non-rigid registration problem. In this paper, we present a fully automated non-rigid image registration method that maximizes a local voxel-based similarity metric. Overlapping image blocks are defined on a 3D grid. The transformation vector field representing image deformation is found by translating each block so as to maximize the local similarity measure. The resulting sparsely sampled vector field is median filtered and interpolated by a Gaussian function to ensure a locally smooth transformation. A hierarchical strategy is adopted to progressively establish local registration associated with image structures at diminishing scale. Simulation studies were carried out to evaluate the proposed algorithm and to determine the robustness of various voxel-based cost functions. Mutual information, normalized mutual information, correlation ratio (CR) and a new symmetric version of CR were evaluated and compared. A T1-weighted magnetic resonance (MR) image was used to test intra-modality registration. Proton density and T2-weighted MR images of the same subject were used to evaluate inter-modality registration. The proposed algorithm was tested on the 2D MR images distorted by known deformations and 3D images simulating inter-subject distortions. We studied the robustness of cost functions with respect to image sampling. Results indicate that the symmetric CR gives comparable registration to mutual information in intra- and inter-modality tasks at full sampling and is superior to mutual information in registering sparsely sampled images.  相似文献   

14.
This article presents a framework to register (or align) plantar pressure images based on a hybrid registration approach, which first establishes an initial registration that is subsequently improved by the optimization of a selected image (dis)similarity measure. The initial registration has two different solutions: one based on image contour matching and the other on image cross-correlation. In the final registration, a multidimensional optimization algorithm is applied to one of the following (dis)similarity measures: the mean squared error (MSE), the mutual information, and the exclusive or (XOR). The framework has been applied to intra- and inter-subject registration. In the former, the framework has proven to be extremely accurate and fast (<70 ms on a normal PC notebook), and obtained superior XOR and identical MSE values compared to the best values reported in previous studies. Regarding the inter-subject registration, by using rigid, similarity, affine, projective, and polynomial (up to the fourth degree) transformations, the framework significantly optimized the image (dis)similarity measures. Thus, it is considered to be very accurate, fast, and robust in terms of noise, as well as being extremely versatile, all of which are regarded as essential features for near-real-time applications.  相似文献   

15.
灰度级别对基于互信息医学图像配准方法的影响   总被引:11,自引:0,他引:11  
医学图像配准在医学图像处理领域中已经被广泛使用。基于互信息配准的方法具有自动化程度高、配准精度高等优点。基于互信息的配准方法实质上是一种进行灰度统计和计算的方法 ,因此同一图像采用不同的灰度表示必然会影响配准结果。在分析灰度级别的压缩对于图像质量的影响和基于互信息配准方法的影响的基础上 ,进行了一系列的多模态医学图像配准试验 ,从配准精度和计算时间两个方面比较了不同的灰度级别对图像配准的影响。在详细分析和比较不同级别图像配准结果的基础上 ,给出了基于互信息配准时所采用的合理灰度级别的建议。  相似文献   

16.
"虚拟中国人男性一号"多模态图像配准   总被引:1,自引:0,他引:1  
目的:解决“虚拟中国人男性一号”CT图像、MRI图像与断层切削图像之间的多模态图像配准问题。材料和方法:根据这三种图像的特点,选择CT图像为基准图像,在对MRI图像进行配准时,通过求解两幅图像梯度特征的最大互信息,搜索出最佳配准参数;在对断层切削图像进行配准时,采用基于解剖结构特征提取的配准方法获取最佳配准参数:最后.根据所得配准参数对待配图进行变换,从而达到配准目的。结果:对头部三种模态图像数据集进行了配准,与高精度手工分割图像数据集进行对比,配准正确率达到95.8%。结论:配准结果准确,解决了“虚拟中国人男性一号”多模态图像配准问题,为数字化虚拟人多模态图像配准提供了参考。  相似文献   

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