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首页> 外文期刊>Ultrasonic Imaging: An International Journal >Semi-automatic breast ultrasound image segmentation based on mean shift and graph cuts
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Semi-automatic breast ultrasound image segmentation based on mean shift and graph cuts

机译:基于均值漂移和图割的半自动乳房超声图像分割

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Computerized tumor segmentation on breast ultrasound (BUS) images remains a challenging task. In this paper, we proposed a new method for semi-automatic tumor segmentation on BUS images using Gaussian filtering, histogram equalization, mean shift, and graph cuts. The only interaction required was to select two diagonal points to determine a region of interest (ROI) on an input image. The ROI image was shrunken by a factor of 2 using bicubic interpolation to reduce computation time. The shrunken image was smoothed by a Gaussian filter and then contrast-enhanced by histogram equalization. Next, the enhanced image was filtered by pyramid mean shift to improve homogeneity. The object and background seeds for graph cuts were automatically generated on the filtered image. Using these seeds, the filtered image was then segmented by graph cuts into a binary image containing the object and background. Finally, the binary image was expanded by a factor of 2 using bicubic interpolation, and the expanded image was processed by morphological opening and closing to refine the tumor contour. The method was implemented with OpenCV 2.4.3 and Visual Studio 2010 and tested for 38 BUS images with benign tumors and 31 BUS images with malignant tumors from different ultrasound scanners. Experimental results showed that our method had a true positive rate (TP) of 91.7%, a false positive (FP) rate of 11.9%, and a similarity (SI) rate of 85.6%. The mean run time on Intel Core 2.66 GHz CPU and 4 GB RAM was 0.49 ± 0.36 s. The experimental results indicate that the proposed method may be useful in BUS image segmentation.
机译:乳房超声(BUS)图像上的计算机肿瘤分割仍然是一项艰巨的任务。在本文中,我们提出了一种使用高斯滤波,直方图均衡,均值平移和图割的BUS图像半自动肿瘤分割新方法。唯一需要的交互是选择两个对角点以确定输入图像上的关注区域(ROI)。使用双三次插值法将ROI图像缩小2倍,以减少计算时间。通过高斯滤波器对收缩的图像进行平滑处理,然后通过直方图均衡化来增强对比度。接下来,通过金字塔均值漂移对增强图像进行滤波,以提高均匀性。用于图形切割的对象和背景种子是在过滤后的图像上自动生成的。使用这些种子,然后通过图形切割将过滤后的图像分割为包含对象和背景的二进制图像。最后,使用双三次插值法将二值图像放大2倍,并通过形态学开和关处理扩展后的图像以细化肿瘤轮廓。该方法在OpenCV 2.4.3和Visual Studio 2010中实现,并测试了来自不同超声扫描仪的38例良性肿瘤的BUS图像和31例恶性肿瘤的BUS图像。实验结果表明,该方法的真阳性率(TP)为91.7%,假阳性(FP)率为11.9%,相似度(SI)为85.6%。 Intel Core 2.66 GHz CPU和4 GB RAM的平均运行时间为0.49±0.36 s。实验结果表明,该方法可用于公交车图像分割。

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