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Research on the novel pattern clustering algorithm based on particle swarm optimized adaptive wavelet neural network model

机译:基于粒子群优化的自适应小波神经网络模型的新型模式聚类算法研究

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Image segmentation is an integral part of critical image processing applications. Segmentation involves removal of a region of interest from the background. Recent researches in segmentation incorporate clustering algorithms for separation or removal of regions of interest. Prominent segmentation algorithms include K - means which segment the region from the background and further median filtering could be utilized to remove the unwanted regions in the segmented image. This research paper utilizes an adaptive wavelet neural network model with training or learning process optimized by the particle swarm optimization algorithm. The proposed algorithm has been tested and experimental results indicate a high precision of segmentation when compared with the conventional techniques.
机译:图像分割是关键图像处理应用程序不可或缺的一部分。分割涉及从背景中移除感兴趣区域。分割方面的最新研究结合了用于分离或去除目标区域的聚类算法。突出的分割算法包括K-表示从背景分割区域的手段,并且可以使用进一步的中值滤波来去除分割图像中不需要的区域。该研究论文利用自适应小波神经网络模型,通过粒子群优化算法对训练或学习过程进行了优化。与常规技术相比,该算法已经过测试,实验结果表明该算法具有很高的分割精度。

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