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A Weighted Mean Shift, Normalized Cuts Initialized Color Gradient Based Geodesic Active Contour Model: Applications to Histopathology Image Segmentation

机译:加权均值漂移,归一化割线初始化基于颜色梯度的测地线主动轮廓模型:在组织病理学图像分割中的应用

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While geodesic active contours (GAC) have become very popular tools for image segmentation, they are sensitive to model initialization. In order to get an accurate segmentation, the model typically needs to be initialized very close to the true object boundary. Apart from accuracy, automated initialization of the objects of interest is an important pre-requisite to being able to run the active contour model on very large images (such as those found in digitized histopathology). A second limitation of GAC model is that the edge detector function is based on gray scale gradients; color images typically being converted to gray scale prior to computing the gradient. For color images, however, the gray scale gradient results in broken edges and weak boundaries, since the other channels are not exploited for the gradient determination. In this paper we present a new geodesic active contour model that is driven by an accurate and rapid object initialization scheme-weighted mean shift normalized cuts (WNCut). WNCut draws its strength from the integration of two powerful segmentation strategies-mean shift clustering and normalized cuts. WNCut involves first defining a color swatch (typically a few pixels) from the object of interest. A multi-scale mean shift coupled normalized cuts algorithm then rapidly yields an initial accurate detection of all objects in the scene corresponding to the colors in the swatch. This detection result provides the initial boundary for GAC model. The edge-detector function of the GAC model employs a local structure tensor based color gradient, obtained by calculating the local min/max variations contributed from each color channel (e.g. R,G,B or H,S,V). Our color gradient based edge-detector function results in more prominent boundaries compared to classical gray scale gradient based function. We evaluate segmentation results of our new WNCut initialized color gradient based GAC (WNCut-CGAC) model against a popular region-based model (Chan & Vese) on a total of 60 digitized histopathology images. Across a total of 60 images, the WNCut-CGAC model yielded an average overlap, sensitivity, specificity, and positive predictive value of 73%, 83%, 97%, 84%, compared to the Chan & Vese model which had corresponding values of 64%, 75%, 95%, 72%. The rapid and accurate object initialization scheme (WNCut) and the color gradient make the WNCut-CGAC scheme, an ideal segmentation tool for very large, color imagery.
机译:虽然测地线活动轮廓线(GAC)已成为非常流行的图像分割工具,但它们对模型初始化很敏感。为了获得准确的分割,通常需要非常接近真实对象边界的位置对模型进行初始化。除了准确性之外,感兴趣对象的自动初始化是能够在非常大的图像(例如在数字化组织病理学中找到的那些图像)上运行主动轮廓模型的重要先决条件。 GAC模型的第二个局限性是边缘检测器功能基于灰度梯度。彩色图像通常在计算梯度之前先转换为灰度。但是,对于彩色图像,灰度梯度会导致折边和弱边界,因为未将其他通道用于梯度确定。在本文中,我们提出了一种新的测地线活动轮廓模型,该模型由精确而快速的对象初始化方案加权均值平移归一化切割(WNCut)驱动。 WNCut从两种强大的细分策略(均值移动聚类和标准化切点)的集成中汲取了力量。 WNCut首先涉及从目标对象定义一个色样(通常为几个像素)。然后,采用多尺度均值漂移耦合归一化分割算法,可以快速准确地检测出场景中与色板中的颜色相对应的所有对象。该检测结果为GAC模型提供了初始边界。 GAC模型的边缘检测器功能采用基于局部结构张量的颜色梯度,该颜色梯度是通过计算由每个颜色通道(例如R,G,B或H,S,V)贡献的局部最小/最大变化而获得的。与基于经典灰度渐变的功能相比,基于颜色渐变的边缘检测器功能可产生更突出的边界。我们在总共60幅数字化组织病理学图像上,针对基于流行区域的模型(Chan&Vese),评估了新的基于WNCut初始化的基于颜色梯度的GAC(WNCut-CGAC)模型的分割结果。在总共60张图像中,与具有相应值的Chan&Vese模型相比,WNCut-CGAC模型产生的平均重叠度,敏感性,特异性和阳性预测值分别为73%,83%,97%,84%。 64%,75%,95%,72%。快速,准确的对象初始化方案(WNCut)和颜色梯度使WNCut-CGAC方案成为用于大型彩色图像的理想分割工具。

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