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A multiverse optimization based colour image segmentation using variational mode decomposition

机译:基于多界优化的基于多界优化使用变分模式分解的彩色图像分割

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Multilevel thresholding using the histogram is the most popular and accepted technique of image segmentation. The computational time of multilevel thresholding rises exponentially as the number of the thresholds increases. Histogram suffers from irregularities and sharp details which leads to stagnation. In this article, a newly developed multiverse optimization is combined with variational mode decomposition to overcome this problem. The histogram of an input image divided into several band-limit modes using VMD then reconstruct histogram using meaningful modes. The reconstructed histogram is free from the high-frequency fluctuation which causes local optima. The proposed method utilized two entropy function to develop image segmentation by determining the optimal threshold. The result of the proposed algorithm is analyzed with other evolutionary algorithms such as artificial bee colony, sine cosine algorithm, and salp swarm algorithm. Comparison is made based on comparative parameters such as peak signal to noise ratio, structural similarity index, feature similarity index, uniformity, normalized absolute error, quality index based on local variance, computational time, and mean square error. The test results validate that the proposed algorithm presents more reliable results than other existing techniques.
机译:使用直方图的多级阈值阈值是最流行的图像分割技术和可接受的技术。随着阈值的数量增加,多级阈值阈值阈值的计算时间呈指数上。直方图遭受违规性和尖锐细节,导致停滞不前。在本文中,新开发的多层次优化与变分模式分解组合以克服此问题。输入图像的直方图除以使用VMD的几种带限制模式,然后使用有意义的模式重建直方图。重建的直方图没有引起本地Optima的高频波动。该方法利用两个熵函数来通过确定最佳阈值来开发图像分割。用其他演化算法分析所提出的算法的结果,如人造群落,正弦余弦算法和SALP群算法。比较基于比较参数,例如峰值信号到噪声比,结构相似性指数,特征相似性指数,均匀性,归一化绝对误差,质量指数,基于局部方差,计算时间和均方误差。测试结果验证所提出的算法呈现比其他现有技术更可靠的结果。

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