基于局部中值的鲁棒图像分割

Jundong Liu
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引用次数: 6

摘要

近年来,基于区域的活动轮廓模型在解决图像分割问题方面得到了广泛的应用。这些模型通常有两个关于图像像素属性的假设:1)在每个区域/对象内,强度值符合高斯分布;2)不同区域的“全局平均值”(平均强度值)是不同的,因此可以用来区分像素。现实中经常违反这两个假设,导致分割泄漏或误分类。本文提出了一种鲁棒分割框架,克服了大多数基于区域的活动轮廓模型存在的上述缺陷。我们的框架由两个部分组成:1)我们使用局部中值作为区域代表性度量,而不是使用全局平均强度值(平均值)来表示特定区域,以更好地表征图像的局部属性;2)利用中值和绝对值的和(L1范数)来制定能量最小化函数,以便更好地处理强度变化和异常值。在几张真实图像上进行了实验,并将我们的解决方案与一种流行的基于区域的模型进行了比较,以显示改进。
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Robust Image Segmentation using Local Median
In recent years, region-based active contour models have gained great popularity in solving image segmentation problem. Those models usually share two assumptions regarding the image pixel properties: 1) within each region/ object, the intensity values conform to a Gaussian distribution; 2) the "global mean" (average intensity value) for different regions are distinct, therefore can be used in discriminating pixels. These two assumptions are often violated in reality, which results in segmentation leakage or misclassification. In this paper, we propose a robust segmentation framework that overcomes the above mentioned drawback existing in most region-based active contour models. Our framework consists of two components: 1) instead of using a global average intensity value (mean) to represent certain region, we use local medians as the region representative measure to better characterize the local property of the image; 2) median and sum of absolute values (L1 norm) is used to formulate the energy minimization functional for better handling intensity variations and outliers. Experiments are conducted on several real images, and we compare our solution with a popular region-based model to show the improvements.
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