基于矢量场分析的医学图像边缘检测处理

S. Chucherd
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引用次数: 3

摘要

超声(US)乳腺癌图像是提取所需感兴趣区域最复杂的医学图像之一。通常很难将肿瘤区域从背景组织中分离出来。因此,肿瘤分割是计算机辅助诊断的难点。在众多图像分割技术中,广义梯度矢量流(GGVF)方法是一种比较流行的图像分割技术。它是基于灰度图像边缘映射的矢量变换。GGVF引入了非均匀扩散,以保持边界区域的大梯度,并平滑由噪声和散斑引起的梯度。然而,由于GGVF的数值迭代不当,可能会导致虚假轮廓或存在噪声,最终导致蛇无法到达真实边界。本文提出了一种新的用于乳腺肿瘤US图像分割的向量场分析方法。GGVF矢量场将从原始图像的边缘图中导出。该算法根据矢量在对应窗口的角度熵对GGVF矢量进行分析。窗口将被垂直和水平翻转,然后将再次评估熵。接下来,确定翻转前后熵的比值,作为边界和非边界的分类器。该算法已经在真实的美国乳腺肿瘤图像上进行了测试,这些图像是由放射科医生手绘的一组真实图像。将该算法与传统的Sobel算子和Canny算子等边缘检测器进行了比较。数值实验表明,与传统的边缘检测方法相比,该方法具有更好的分割精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge detection of medical image processing using vector field analysis
Ultrasound (US) breast cancer images is one of the most complicated medical images to extract the desired area of interest. It is often difficult to separate the tumor region from the background tissues. Therefore, tumor segmentation is the challenging problems in the computed aided diagnosis. Among many image segmentation techniques, a generalized gradient vector flow (GGVF) method is one of the popular techniques. It is based on vector transformation of the edge map of the gray scale image. GGVF introduces a non-uniform diffusion to preserve the large gradient of the boundary area and smooth the gradients caused by noise and speckles. However, the improper numerical iteration of GGVF may lead the false contours or the existing noise and finally the snake could not reach the true boundary. In this paper, the new vector field analysis for breast tumor US image segmentation is proposed. The GGVF vector field will be derived from the edge map of the original image. The algorithm analyzes the GGVF vectors in terms of the entropy of the angle of vectors in the corresponding window. The windows will be vertically and horizontally flipped, then the entropy will be evaluated again. Next, the ratio of the entropy before and after flip will be determined to be the classifier of the boundary and non-boundary. The algorithm has been tested on the real US breast tumor images with a set of ground truth images hand-drawn by radiologists. The proposed algorithm is compared with conventional edge detectors such as Sobel and Canny operator. The numerical experiments show that the proposed techniques lead to a better segmentation accuracy with the reference to the conventional edge detection.
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