Department of Electronics, Cochin University of Science & Technology, Kochi, Kerala, Pin-682022, India.
J Digit Imaging. 2010 Oct;23(5):538-46. doi: 10.1007/s10278-009-9224-6. Epub 2009 Jul 18.
In this paper, a novel fast method for modeling mammograms by deterministic fractal coding approach to detect the presence of microcalcifications, which are early signs of breast cancer, is presented. The modeled mammogram obtained using fractal encoding method is visually similar to the original image containing microcalcifications, and therefore, when it is taken out from the original mammogram, the presence of microcalcifications can be enhanced. The limitation of fractal image modeling is the tremendous time required for encoding. In the present work, instead of searching for a matching domain in the entire domain pool of the image, three methods based on mean and variance, dynamic range of the image blocks, and mass center features are used. This reduced the encoding time by a factor of 3, 89, and 13, respectively, in the three methods with respect to the conventional fractal image coding method with quad tree partitioning. The mammograms obtained from The Mammographic Image Analysis Society database (ground truth available) gave a total detection score of 87.6%, 87.6%, 90.5%, and 87.6%, for the conventional and the proposed three methods, respectively.
本文提出了一种通过确定性分形编码方法对乳腺 X 线图像建模的新快速方法,用于检测微钙化的存在,微钙化是乳腺癌的早期迹象。使用分形编码方法获得的建模乳腺 X 线图像在视觉上与包含微钙化的原始图像相似,因此,当从原始乳腺 X 线图像中取出时,可以增强微钙化的存在。分形图像建模的局限性在于编码所需的时间非常长。在本工作中,不是在图像的整个域池中搜索匹配域,而是使用基于均值和方差、图像块的动态范围和质心特征的三种方法。与使用四叉树分区的传统分形图像编码方法相比,这三种方法分别将编码时间减少了 3、89 和 13 倍。使用来自乳腺 X 线图像分析学会数据库(提供真实数据)的乳腺 X 线图像,对于传统方法和提出的三种方法,总检测评分分别为 87.6%、87.6%、90.5%和 87.6%。