基于熵最小化的群体乳房x线图像对齐

O. Clement, Zhili Chen, Hui Zhang
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引用次数: 0

摘要

乳腺癌是妇女特别关注的问题,是世界上妇女死亡的最主要原因之一。近年来,经典统计建模技术的采用使计算机视觉标准化。为了获得更好的识别信息,大多数识别算法依赖于仔细地将物体定位为规范姿势,这样我们就可以检查有意义的信息。目前,本文提出了一种新的统计理论方法来寻找不同患者乳房x线图像的对齐(使用熵最小化和亮度变换)。通过调整相对位置和方向来实现配准,直到像素堆栈熵的总和最小。首先对161例患者的左、右乳房影像进行数字化或数字化乳房影像的分割分析,这些影像来源于乳腺图像分析学会(MIAS)数据库。给定一组未对齐的类样本,例如乳房,我们应用了自动构建的对齐机制,不需要在数据集中对部件或姿势进行额外标记。使用这种对齐机制,类的新成员(例如来自新患者的未见过的乳房x光图像)可以精确对齐以用于识别过程。我们的对齐方法可以提高乳房异常识别任务的性能,无论是对未对齐的图像还是对与所提出的对齐算法对齐的图像。
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Group-wise mammographie image alignment based on entropy minimization
Breast cancer is especially a concern in woman and it is one of the most leading causes of death among woman in the world. The adoption of classical statistical modeling techniques has standardized computer vision in last few years. For better recognition information, most recognition algorithms depend on careful positioning of an object into a canonical pose, so that we can have meaningful information examined. Currently, a new statistical-theoretic approach is presented for finding the alignment (using entropy minimization with brightness transformation) of mammographic images of differing patients in this paper. Registration is achieved by adjusting the relative position and orientation until the sum of the pixel-stack entropies is minimized. Segmentation analysis of digital or digitized mammographic images was firstly carried out on mammographic images of left and right breast images for 161 patients, obtained from Mammographic Image Analysis Society (MIAS) database. Given a set of unaligned exemplars of a class, such as breast, we applied an automatically built alignment mechanism, no additional labeling of parts or poses in the dataset. Using this alignment mechanism, new members of the class, such as an unseen mammographic image from a new patient, can be precisely aligned for the recognition process. Our alignment method can improve the performance on a breast abnormality recognition task, both over unaligned images and over images aligned with the proposed alignment algorithm.
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