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Split and Merge Based Quantitative Approach to Select Filter Combination for Image Segmentation

机译:基于分割和合并的量化方法选择用于图像分割的滤波器组合

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With the advent of image analysis and computation in different domains, image segmentation has emerged as the most crucial step to achieve a compact segment-based description of image scene by decomposing it into meaningful segments of similar attributes. The pre-and-post filtering operation reduces the effect of noise from the segmented image. The Cameraman image is pre-filtered using Laplacian, Median and Min filter. The Split and Merge method for Region based image segmentation which guarantees to connected regions are now applied on the filtered image. The Median, Laplacian and Sobel filter is then used to post-filter the segmented image. The PSNR and MSE values are calculated to quantitative evaluation of segmented images. The quantitative evaluation of post-filtered segmented image shows that median filter produces most effective result with lowest MSE of 84.89 dB and highest PSNR of 5.72 dB.
机译:随着不同领域中图像分析和计算的出现,图像分割已成为通过将图像场景分解为相似属性的有意义片段来实现基于片段的紧凑描述的最关键步骤。前后过滤操作减少了来自分割图像的噪声影响。使用Laplacian,中值和最小滤镜对Cameraman图像进行预滤。现在,将基于区域的图像分割的分割和合并方法应用于已过滤图像,该方法可确保对连接区域的连接。然后使用中值,拉普拉斯算子和Sobel滤波器对分割后的图像进行后滤波。计算PSNR和MSE值以定量评估分割的图像。后滤波后的分割图像的定量评估表明,中值滤波器产生的最有效结果是最低MSE为84.89 dB,最高PSNR为5.72 dB。

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