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一种新的自适应水平集融合算法 被引量:2

Self-adaptive Level Set Fusing Algorithm
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摘要 在处理不均匀图像时,自适应距离保持水平集演化(ADPLS)算法速度快、不受初始轮廓影响,但精度较低;LBF算法精度高,但速度较慢同时易受初始轮廓影响。针对上述2种算法的优缺点,提出一种新的自适应融合算法。该算法根据图像信息自动调整ADPLS与局部二值拟合算法在融合算法中所占比重,实现不同算法的优势互补。实验结果证明,该融合算法在分割精度、速度及稳定性等方面有明显提高。 In intensity inhomogeneity image segmentation,the Adaptive Distance Preserving Level Set Evolution(ADPLS) algorithm can get a result with high speed,low accuracy and has no relation to initial contour,on the other hand,the Local Binary Fitting(LBF) algorithm can get a result with high accuracy,low speed and its result is sensitive to initial contour.Thus,a novel and adaptive fusing level set method is proposed to make use their advantages respectively,which can automatically adjust the proportion of ADPLS and LBF in the fusing method according to image information.Experiment results show that the comprehensive performance indicators,such as accuracy,speed and stability can be significantly improved in the fusing method
出处 《计算机工程》 CAS CSCD 北大核心 2011年第13期216-218,共3页 Computer Engineering
基金 福建省自然科学基金资助项目(2008J0312) 国家部委基金资助项目(06MA99 08Z021)
关键词 图像分割 水平集融合算法 自适应距离保持水平集演化算法 局部二值拟合算法 image segmentation level set fusing algorithm Adaptive Distance Preserving Level Set Evolution(ADPLS) algorithm Local Binary Fitting(LBF) algorithm
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  • 1何传江,唐利明.几何活动轮廓模型中停止速度场的异性扩散[J].软件学报,2007,18(3):600-607. 被引量:23
  • 2S.Osher, J.A.Sethian. Fronts propagating with curvature dependent speed: algorithms based on Hamilton-Jacobi formulations[J]. Journal of Computational Physics,1998, 79:12-49.
  • 3M. Kass, A. Within and D.Terzopoulos. Snake: active contour models[J]. Int 1 Journal Computer Vision, 1987, 1:321-331.
  • 4V. Caselles, F. Catte, T. Coil, et al. A geometric model for active contours in image processing [J].Numerical Mathematics,1993,66: 1-31.
  • 5T. Chan and L. Vese. Active contours without edges. IEEE Transactions on Image Proceessing[J], 2001, 10: 266-277.
  • 6D. Peng, B. Merriman, S. Osher, et al, A PDE-based fast local level set method [J]. Journal of Computational Physics,1999, 155: 410~438.
  • 7Chunming Li, Chenyang Xu, Chengfeng Gui ,et al. Level Set Evolution Without Re-initialization: A New Variational Formulation [J]. IEEE Computer Vision and Pattern Recognition.2005,1: 430-436.
  • 8Vovk U, Pernus F, Likar B. A Review of Methods for Correction of Intensity Inhomogeneity in MRI[J]. IEEE Trans. on Med. lmag., 2007, 26(3): 405-421.
  • 9Li Chunming, Kao C Y. Gore J C. et al. hnplicit Active Contours Driven by' Local Binary Fitting Energy[C]//Proc. of IEEE Conference on CVPR. Minneapolis, USA: [s. n.], 2007: 1-7.
  • 10Law Y N, Lee H K, Yip A M. A Multi-resolution Stochastic Level Set Method for Mumford-Shah Image Segmentation[J]. IEEE Trans. on Image Processing, 2008, 17(12): 2289-2300.

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  • 1Caselles V,Catte F, Coil F,et al.A geometric model for active cotours[J].Numerishe Mathematik, 1993,66( 1 ) : 1-31.
  • 2Li Chunming,Xu Chenyang,Konwar K M,et al.Fast dis- tance image segmentation[C]//Proc of the Int'l Conf on Control,Automation,Robotics and Vision.Singapore:[s.n.], 2006 : 1-7.
  • 3Chan T F,Vese L A.Active contours without edges[J]. IEEE Trans on Image Processing,2001,10(2):266-277.
  • 4Li Chunming, Kao chiuyen, Gore J C, et al.Minimization of region-scalable fitting energy for image segmentation[J]. IEEE Trans on Image Processing,2008,17(10):1940-1949.
  • 5Zhang K, Song H,Zhang L.Active contours driven by local image fitting energy[J].Pattern Recognition, 2010, 43(4) : 1199-1206.
  • 6Caselles V, Kimmel R, Sapiro G.Geodesic active contours[J]. International Journal of Computer Vision, 1997, 22 (1) : 61-79.
  • 7KASS M,WITKIN A,TERZOPOULOS D. Snakes:active contour models[J].International Journal of Computer Vision,1988,(04):321-331.
  • 8CASELLES V,CATTE F,COLL T. A geometric model for active contours in image processing[J].Numerische Mathematik,1993,(01):1-31.
  • 9TSAI A,YEZZI A Jr,WILLSKY A S. Curve evolution implementation of the Mumford-Shah functional for image segmentation,denoising,interpolation,and magnification[J].IEEE Transactions on Image Processing,2001,(08):1169-1186.
  • 10RONFARD R. Region-based strategies for active contour models[J].International Journal of Computer Vision,1994,(02):229-251.

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