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Image Thresholding Technique Based On Fuzzy Partition And Entropy Maximization

机译:基于模糊划分和熵最大化的图像阈值技术

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摘要

Thresholding is a commonly used technique in image segmentation because of its fast and easy application. For this reason threshold selection is an important issue. There are two general approaches to threshold selection. One approach is based on the histogram of the image while the other is based on the gray scale information located in the local small areas. The histogram of an image contains some statistical data of the grayscale or color ingredients. In this thesis, an adaptive logical thresholding method is proposed for the binarization of blueprint images first. The new method exploits the geometric features of blueprint images. This is implemented by utilizing a robust windows operation, which is based on the assumption that the objects have "e;C"e; shape in a small area. We make use of multiple window sizes in the windows operation. This not only reduces computation time but also separates effectively thin lines from wide lines. Our method can automatically determine the threshold of images. Experiments show that our method is effective for blueprint images and achieves good results over a wide range of images. Second, the fuzzy set theory, along with probability partition and maximum entropy theory, is explored to compute the threshold based on the histogram of the image. Fuzzy set theory has been widely used in many fields where the ambiguous phenomena exist since it was proposed by Zadeh in 1965. And many thresholding methods have also been developed by using this theory. The concept we are using here is called fuzzy partition. Fuzzy partition means that a histogram is parted into several groups by some fuzzy sets which represent the fuzzy membership of each group because our method is based on histogram of the image . Probability partition is associated with fuzzy partition. The probability distribution of each group is derived from the fuzzy partition. Entropy which originates from thermodynamic theory is introduced into communications theory as a commonly used criteria to measure the information transmitted through a channel. It is adopted by image processing as a measurement of the information contained in the processed images. Thus it is applied in our method as a criterion for selecting the optimal fuzzy sets which partition the histogram. To find the threshold, the histogram of the image is partitioned by fuzzy sets which satisfy a certain entropy restriction. The search for the best possible fuzzy sets becomes an important issue. There is no efficient method for the searching procedure. Therefore, expansion to multiple level thresholding with fuzzy partition becomes extremely time consuming or even impossible. In this thesis, the relationship between a probability partition (PP) and a fuzzy C-partition (FP) is studied. This relationship and the entropy approach are used to derive a thresholding technique to select the optimal fuzzy C-partition. The measure of the selection quality is the entropy function defined by the PP and FP. A necessary condition of the entropy function arriving at a maximum is derived. Based on this condition, an efficient search procedure for two-level thresholding is derived, which makes the search so efficient that extension to multilevel thresholding becomes possible. A novel fuzzy membership function is proposed in three-level thresholding which produces a better result because a new relationship among the fuzzy membership functions is presented. This new relationship gives more flexibility in the search for the optimal fuzzy sets, although it also increases the complication in the search for the fuzzy sets in multi-level thresholding. This complication is solved by a new method called the "e;Onion-Peeling"e; method. Because the relationship between the fuzzy membership functions is so complicated it is impossible to obtain the membership functions all at once. The search procedure is decomposed into several layers of three-level partitions except for the last layer which may be a two-level one. So the big problem is simplified to three-level partitions such that we can obtain the two outmost membership functions without worrying too much about the complicated intersections among the membership functions. The method is further revised for images with a dominant area of background or an object which affects the appearance of the histogram of the image. The histogram is the basis of our method as well as of many other methods. A "e;bad"e; shape of the histogram will result in a bad thresholded image. A quadtree scheme is adopted to decompose the image into homogeneous areas and heterogeneous areas. And a multi-resolution thresholding method based on quadtree and fuzzy partition is then devised to deal with these images. Extension of fuzzy partition methods to color images is also examined. An adaptive thresholding method for color images based on fuzzy partition is proposed which can determine the number of thresholding levels automatically. This thesis concludes that the "e;C"e; shape assumption and varying sizes of windows for windows operation contribute to a better segmentation of the blueprint images. The efficient search procedure for the optimal fuzzy sets in the fuzzy-2 partition of the histogram of the image accelerates the process so much that it enables the extension of it to multilevel thresholding. In three-level fuzzy partition the new relationship presentation among the three fuzzy membership functions makes more sense than the conventional assumption and, as a result, performs better. A novel method, the "e;Onion-Peeling"e; method, is devised for dealing with the complexity at the intersection among the multiple membership functions in the multilevel fuzzy partition. It decomposes the multilevel partition into the fuzzy-3 partitions and the fuzzy-2 partitions by transposing the partition space in the histogram. Thus it is efficient in multilevel thresholding. A multi-resolution method which applies the quadtree scheme to distinguish the heterogeneous areas from the homogeneous areas is designed for the images with large homogeneous areas which usually distorts the histogram of the image. The new histogram based on only the heterogeneous area is adopted for partition and outperforms the old one. While validity checks filter out the fragmented points which are only a small portion of the whole image. Thus it gives good thresholded images for human face images.
机译:阈值处理因其快速,简便的应用而成为图像分割中的一种常用技术。因此,阈值选择是一个重要的问题。阈值选择有两种通用方法。一种方法是基于图像的直方图,而另一种方法是基于位于局部小区域中的灰度信息。图像的直方图包含一些灰度或颜色成分的统计数据。本文针对蓝图图像的二值化提出了一种自适应逻辑阈值方法。新方法利用了蓝图图像的几何特征。这是通过利用健壮的Windows操作实现的,该操作基于以下假设:对象具有“ e; C” e;在较小的区域中成型。我们在Windows操作中使用多个窗口大小。这不仅减少了计算时间,而且有效地将细线与宽线分开。我们的方法可以自动确定图像的阈值。实验表明,我们的方法对于蓝图图像是有效的,并且在广泛的图像范围内都可以达到良好的效果。其次,探索了模糊集理论,以及概率划分和最大熵理论,以基于图像的直方图计算阈值。自1965年Zadeh提出模糊集理论以来,模糊集理论已广泛应用于存在模棱两可现象的许多领域。利用该理​​论,还发展了许多阈值化方法。我们在这里使用的概念称为模糊分区。模糊划分意味着直方图由代表每个组的模糊隶属关系的一些模糊集分成几组,因为我们的方法基于图像的直方图。概率划分与模糊划分相关联。每个组的概率分布是从模糊分区得出的。来自热力学理论的熵被引入到通信理论中,作为测量通过通道传输的信息的常用标准。图像处理采用它作为处理后图像中包含的信息的度量。因此,在我们的方法中将其作为选择划分直方图的最佳模糊集的标准。为了找到阈值,通过满足一定熵限制的模糊集对图像的直方图进行划分。寻找最佳的模糊集成为一个重要的问题。没有有效的搜索过程方法。因此,利用模糊划分扩展到多级阈值变得非常耗时,甚至是不可能的。本文研究了概率划分(PP)和模糊C划分(FP)之间的关系。该关系和熵方法用于导出阈值技术,以选择最佳模糊C分区。选择质量的度量是PP和FP定义的熵函数。得出熵函数达到最大值的必要条件。基于此条件,得出了用于两级阈值的有效搜索过程,这使得搜索如此有效,从而有可能扩展到多级阈值。提出了一种新的三级阈值模糊隶属度函数,由于提出了模糊隶属度函数之间的新关系,因此产生了更好的结果。这种新的关系为寻找最佳模糊集提供了更大的灵活性,尽管这也会增加在多级阈值化中搜索模糊集的复杂性。这种复杂性通过一种称为“ e;洋葱去皮” e的新方法得以解决。方法。由于模糊隶属函数之间的关系是如此复杂,因此不可能一次获得所有隶属函数。搜索过程被分解为三层分区的几层,最后一层可能是两层分区。因此,将大问题简化为三级分区,这样我们就可以获得两个最外面的隶属函数,而不必过多担心隶属函数之间的复杂交集。对于具有主要背景区域的图像或影响图像直方图外观的对象,进一步修改了该方法。直方图是我们方法以及许多其他方法的基础。 “ e; bad” e;直方图的形状将导致阈值图像质量变差。采用四叉树方案将图像分解为同质区域和异质区域。然后设计了一种基于四叉树和模糊划分的多分辨率阈值处理方法。还研究了模糊分割方法对彩色图像的扩展。提出了一种基于模糊划分的彩色图像自适应阈值方法,该方法可以自动确定阈值级别的数量。本文的结论是“ e; C” e;形状假设和用于Windows操作的窗口大小变化有助于更好地分割蓝图图像。在图像的直方图的Fuzzy-2分区中,针对最佳模糊集的有效搜索过程极大地加快了该过程,以至于可以将其扩展到多级阈值。在三级模糊分区中,三个模糊隶属度函数之间的新关系表示比常规假设更有意义,因此效果更好。一种新颖的方法,“ e;洋葱去皮” e;设计了一种方法来处理多级模糊分区中多个隶属函数之间的交集处的复杂性。通过在直方图中转置分区空间,将多级分区分解为Fuzzy-3分区和Fuzzy-2分区。因此,在多级阈值处理中它是有效的。针对具有较大均质面积的图像设计了一种多分辨率方法,该方法采用四叉树方案来区分异构区域和均质区域,通常会使图像的直方图失真。采用仅基于异构区域的新直方图进行分区,其性能优于旧的直方图。有效性检查会滤除碎片点,这些碎片只占整个图像的一小部分。因此,它为人脸图像提供了良好的阈值图像。

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    Zhao Mansuo;

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  • 年度 2005
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