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1.
融合边缘检测与区域生长的交通图像分割方法   总被引:1,自引:0,他引:1  
在交通监控中,如何从复杂的背景中分割运动物体是至关重要的一步,针对车辆的运动阴影对图像分割产生的不利影响,提出了一种新的融合边缘检测与区域生长的彩色图像分割算法,算法同时考虑了图像的彩色信息和空间信息.该算法首先对彩色图像边缘检测,并根据检测结果设置种子像素;再基于颜色相似性生长准则,结合边缘检测结果,对每个种子点进行区域生长;最后,利用区域合并算法对剩余的像素进行合并.实验结果表明该算法很大程度上克服了阴影给图像分割带来的不利影响.  相似文献   

2.
基于HSI空间的模糊C均值彩色图像分割方法   总被引:1,自引:0,他引:1  
给出了一种在HSI空间上基于模糊C均值的彩色图像分割方法.首先对每个像素根据H分量和I分量计算出4个隶属度,然后将其中的两个隶属度结合形成一个二雏特征矢量来表征像素的全部颜色特征,最后对二维矢量运用模糊C均值聚类算法得到最终的彩色图像分割结果.  相似文献   

3.
A new hierarchical approach called bintree energy segmentation was presented for color image seg-mentation. The image features are extracted by adaptive clustering on multi-channel data at each level and used as the criteria to dynamically select the best chromatic channel, where the segmentation is carried out. In this approach, an extended direct energy computation method based on the Chan-Vese model was proposed to segment the selected channel, and the segmentation outputs are then fused with other channels into new images,from which a new channel with better features is selected for the second round segmentation. This procedure is repeated until the preset condition is met. Finally, a binary segmentation tree is formed, in which each leaf represents a class of objects with a distinctive color. To facilitate the data organization, image background is employed in segmentation and channels fusion. The bintree energy segmentation exploits color information involved in all channels data and tries to optimize the global segmentation result by choosing the "best" chan-nel for segmentation at each level. The experiments show that the method is effective in speed, accuracy and flexibility.  相似文献   

4.
A new hierarchical approach called bintree energy segmentation was presented for color image segmentation. The image features are extracted by adaptive clustering on multi-channel data at each level and used as the criteria to dynamically select the best chromatic channel, where the segmentation is carried out. In this approach, an extended direct energy computation method based on the Chan-Vese model was proposed to segment the selected channel, and the segmentation outputs are then fused with other channels into new images, from which a new channel with better features is selected for the second round segmentation. This procedure is repeated until the preset condition is met. Finally, a binary segmentation tree is formed, in which each leaf represents a class of objects with a distinctive color. To facilitate the data organization, image background is employed in segmentation and channels fusion. The bintree energy segmentation exploits color information involved in all channels data and tries to optimize the global segmentation result by choosing the "best" channel for segmentation at each level. The experiments show that the method is effective in speed, accuracy and flexibility.  相似文献   

5.
Thresholding is a popular image segmentation method that often requires as a preliminary and indispensable stage in the computer aided image process, particularly in the analysis of X-ray welding images. In this paper, a modified gray level difference-based transition region extraction and thresholding algorithm is presented for segmentation of the images that have been corrupted by intensity inhomogeneities or noise. Classical gray level difference algorithm is improved by selective output of the result of the maximum or the minimum of the gray level with the pixels in the surrounding, and multi-structuring of neighborhood window is used to represent the essence of transition region. The proposed algorithm could robustly measure the gray level changes, and accurately extract transition region of an image. Comparisons with other approaches demonstrate the superior performance of the proposed algorithm.  相似文献   

6.
车辆阴影分割是智能交通领域中车辆识别的一项重要内容,阴影分割的好坏直接影响到车辆识别的准确性以及整个智能交通监控系统的性能。针对当前基于RGB和HSV颜色空间的车辆阴影分割算法缺陷与不足,本文提出了一种新的基于YCbCr空间的车辆阴影分割算法。首先选取图像中的运动区域,运动区域包括车辆以及阴影;然后根据阴影区域出现的特点,选择初始阴影数据;最后,通过本文提出的阴影分割算法最终确定阴影区域的形状与位置。经过实际道路运行测试,该算法能提取出的车辆阴影完整性好,具有较好的鲁棒性,在智能交通领域具有一定的应用价值与前景。车辆阴影分割是智能交通领域中车辆识别的一项重要内容,阴影分割的好坏直接影响到车辆识别的准确性以及整个智能交通监控系统的性能。针对当前基于RGB和HSV颜色空间的车辆阴影分割算法缺陷与不足,本文提出了一种新的基于YCbCr空间的车辆阴影分割算法。首先选取图像中的运动区域,运动区域包括车辆以及阴影;然后根据阴影区域出现的特点,选择初始阴影数据;最后,通过本文提出的阴影分割算法最终确定阴影区域的形状与位置。经过实际道路运行测试,该算法能提取出的车辆阴影完整性好,具有较好的鲁棒性,在智能交通领域具有一定的应用价值与前景。  相似文献   

7.
图像分割是图像分析的预处理阶段,被认为是计算机视觉中的一个瓶颈.基于扩展的Otsu最优阈值图像分割方法,提出用一种改进遗传算法进行图像分割的方法,并给出了遗传算法中参数的设定.仿真结果表明,改进算法的计算速度不仅明显优于传统的Otsu方法,而且算法的分割效果也很好.  相似文献   

8.
A semiautomatic segmentation method based on active contour is proposed for computed tomography (CT) image series. First, to get initial contour, one image slice was segmented exactly by C-V method based on Mumford-Shah model. Next, the computer will segment the nearby slice automatically using the snake model one by one. During segmenting of image slices, former slice boundary, as next slice initial contour, may cross over next slice real boundary and never return to right position. To avoid contour skipping over, the distance variance between two slices is evaluated by an threshold, which decides whether to initiate again. Moreover, a new improved marching cubes (MC) algorithm based on 2D images series segmentation boundary is given for 3D image reconstruction. Compared with the standard method, the proposed algorithm reduces detecting time and needs less storing memory. The effectiveness and capabilities of the algorithm were illustrated by ,experimental results.  相似文献   

9.
基于云模糊理论的图像纹理分割   总被引:1,自引:0,他引:1  
为了处理图像纹理的模糊性和随机性,基于云模糊理论提出了纹理特征矢量云模型,并成功地应用于纹理图像分割.该方法在对纹理统计描述符模糊化处理后,逆向生成纹理特征矢量云.矢量云模型的数字特征能够很好地表达纹理的模糊性和随机性,据此通过云距离计算及纹理特征矢量云生长,完成对图像纹理的分割.实验结果表明,该方法较经典的ISODATA算法和K-means簇算法的分割精度高,并且迭代收敛速度快.  相似文献   

10.
基于主元分析和色调的彩色图像分割   总被引:1,自引:0,他引:1  
提出一种基于主元分析和色调的彩色图像分割方法.首先应用主元分析法确定分类数,将彩色图像分成几个区域,然后基于色调特征将区域再划分为若干个子区域,最后根据CIE(L*α,b*)空间的颜色差异合并具有相似颜色的子区域,得到最终的精确分割结果.  相似文献   

11.
一种基于遗传算法的最优阈值图像分割算法   总被引:1,自引:0,他引:1  
为了提高图像分割效率,提出一种基于遗传算法的最优阈值搜索方法OTSGA.OTSGA算法对图像的灰度级进行二进制编码,生成初始种群,求出每个个体的二维最大熵,然后根据设定的寻优准则进行相应的遗传操作以搜索阈值最优解.为了避免在求解过程中出现早熟现象,OTSGA算法将交叉操作得到的个体群与上一代种群混合,得到新的种群进行遗传操作,避免了个别个体在遗传运算的最初迭代时就在种群中占据主导地位,导致求解过程的过早收敛.实验结果表明,OTSGA最优阈值搜索方法不仅降低了运算开销,而且获得了满意的图像分割效果.  相似文献   

12.
PCNNģ����ϲ������Ż�������ͼ��ָ�   总被引:1,自引:0,他引:1  
脉冲耦合神经网络(PCNN)具有良好的图像分割特性,但神经网络参数的选取对分割效果有较大影响,如何自适应地选择网络参数是脉冲耦合神经网络应用研究的重要内容.本文首次从脉冲耦合神经网络的耦合特性出发,结合神经计算原理及图像局部区域的灰度特性,提出了脉冲耦合神经网络耦合参数的优化算法.首先利用Hebb学习规则对脉冲耦合神经网络模型的链接权值矩阵进行更新,然后利用图像局部区域的均方差自适应确定神经元链接强度系数,最后将优化的PCNN模型应用于运动车辆图像分割.通过耦合参数的优化,增强了神经元之间的耦合强度,与传统PCNN的车辆分割结果相比,较好地避免了过分割和欠分割现象,提高了运动车辆图像中车牌区域的分割质量,为后续车辆特征的提取奠定了良好的基础.  相似文献   

13.
IntroductionEdges are pixels where brightness changesabruptly and often used in image analysis for find-ing region boundaries.It locates sharp changes inthe intensity function.Edges detection is basic im-age features.They carry useful information aboutobject boundaries.Edges can be used for object i-dentification,image analysis and image filteringapplications as well.We shall consider as an edgethe border between two homogeneous image re-gions having different illumination.This definitionimp…  相似文献   

14.
IntroductionThere are many methods to perform imagesegmentation and edge detection tasks that incor-porate region- growing and edge detection tech-niques,for example,it is applying edge detectiontechniques to obtain Difference In Strength( DIS)map then employ region growing techniques towork on the map as in Refs.[1 ,2 ]. In the others,combining both special and intensity information inimage segmentation approach based on multi- reso-lution edge detection,region selection and intensi-ty thre…  相似文献   

15.
道路场景因其结构的多样性、纹理变化的复杂性和自然曝光的不稳定性,使得传统基于道路分割的道路检测方法大多存在信息冗余,并且存在边界丢失、模糊等质量问题.本文首先在道路图像上使用 Meanshift均值漂移算法,通过空间内的概率密度呈梯形上升去寻找局部最优,并搜索属于同一模点的像素然后生成获得超像素块.然后利用 Meanshift算法获得的聚类超像素块进行多种子点区域生长,规范生长规则,克服不能得到封闭边界的缺陷,改进道路图像的分割效果.实验结果表明,本文提出的模型适用性强,相比于传统方法有效地提升了分割准确性和实时性,可准确识别出图像中的道路信息,确保车辆能够行驶在可行驶区域上.  相似文献   

16.
Imagesegmentationplaysanimportantrolein imageanalysisaswellasinhigh levelimageinter pretationandunderstandingsuchasrobotvision, objectrecognition,andmedicalimaging.Numerous segmentationmethodshavebeendeveloped.How ever,medicalimagesareoftencorruptedbyno…  相似文献   

17.
为解决模糊C-均值聚类(FCM)算法在医学图像分割中存在计算量大、运行时间过长以及样本集不理想会导致不好的聚类结果的问题,提出了相应的改进算法.利用收敛速度快的K均值聚类法得到的聚类中心作为FCM算法的初始聚类中心,并将样本对于各个聚类的隶属度之和为1这一约束条件,改变为所有样本对各类的隶属度总和等于样本总数.实验表明,该方法用于人脑磁共振图像分割时,运行速度提高了近3倍,分割准确度明显得到提高.  相似文献   

18.
文中提出一种采用三层前馈神经网络提取车牌的方法。该方法是一种基于纹理分析的图像分割算法,适合于彩色及灰度图像。实验表明,该方法能准确地提取图像中的车牌。  相似文献   

19.
Although deep learning methods have been widely applied in medical image lesion segmentation,it is still challenging to apply them for segmenting ischemic stroke lesions,which are different from brain tumors in lesion characteristics,segmentation difficulty,algorithm maturity,and segmentation accuracy.Three main stages are used to describe the manifestations of stroke.For acute ischemic stroke,the size of the lesions is similar to that of brain tumors,and the current deep learning methods have been able to achieve a high segmentation accuracy.For sub-acute and chronic ischemic stroke,the segmentation results of mainstream deep learning algorithms are still unsatisfactory as lesions in these stages are small and diffuse.By using three scientific search engines including CNKI,Web of Science and Google Scholar,this paper aims to comprehensively understand the state-of-the-art deep learning algorithms applied to segmenting ischemic stroke lesions.For the first time,this paper discusses the current situation,challenges,and development directions of deep learning algorithms applied to ischemic stroke lesion segmentation in different stages.In the future,a system that can directly identify different stroke stages and automatically select the suitable network architecture for the stroke lesion segmentation needs to be proposed.  相似文献   

20.
Automaticbraintissuesegmentationfrommag neticresonanceimages(MRI)isofgreatimportance forresearchandclinicalstudyofmuchneurological pathology.Duringthepastdecade,theMRIhashad agreatimpactonthediagnosticimagingofmosthu manorgansystem.Thesegmentationofbrai…  相似文献   

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