Wavelet based transition region extraction for image segmentation

Priyadarsan Parida, Nilamani Bhoi
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引用次数: 27

Abstract

Transition region based approaches are recent hybrid segmentation techniques well known for its simplicity and effectiveness. Here, the segmentation effectiveness depends on robust extraction of transition regions. So, we have proposed a transition region method which initially decomposes the gray image in wavelet domain. Two existing transition region approaches are applied on approximate coefficients to extract transition region feature matrix. Using this feature matrix the corresponding prominent wavelet coefficients of different bands are found. Inverse wavelet transform are then applied on the modified coefficients to get edge image with more than one pixel width. Otsu thresholding is applied on it to get transition regions. Further, morphological operations are applied to extract the object regions. Finally, the objects are extracted using the object regions. The wavelet domain approach extracts robust transition regions resulting in better segmentation. The proposed method is compared with different existing image segmentation methods. Experimental results reveal that the proposed method achieve 0.95 overall segmentation accuracy. It also works well for extraction of single as well as multiple objects from images.

基于小波变换的图像分割过渡区提取
基于过渡区域的分割方法是一种新的混合分割方法,以其简单有效而著称。在这里,分割的有效性取决于对过渡区域的鲁棒提取。为此,提出了一种在小波域对灰度图像进行初始分解的过渡区域方法。利用现有的两种近似系数过渡区方法提取过渡区特征矩阵。利用该特征矩阵找到了不同波段对应的显著小波系数。然后对修正系数进行小波反变换,得到宽度大于1像素的边缘图像。对其进行Otsu阈值分割,得到过渡区域。在此基础上,应用形态学操作提取目标区域。最后,使用对象区域提取对象。小波域方法提取鲁棒过渡区域,得到更好的分割效果。将该方法与现有的图像分割方法进行了比较。实验结果表明,该方法总体分割精度达到0.95。它也可以很好地从图像中提取单个和多个对象。
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