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Adapt DB-PSO patterns clustering algorithms and its applications in image segmentation

机译:适应DB-PSO模式聚类算法及其在图像分割中的应用

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Clustering algorithm is a crucial step before to analysis object's feature in image applications. The adapt DB-PSO patterns clustering algorithms (ADPCA) combined the particle swarm optimization (PSO) clustering algorithm and adapt DB_index measuring methodology to efficiently decide the real number of clusters, cluster centers, and then to recognize the correct catalog even if there are exiting some cases in various shapes, multi-dimension, real life training patterns and image datasets. In general, the PSO is adapted for dealing complex and global optimization problems. The population-based evolutional PSO learning algorithm with the self-adapt mathematic index can fit the data vibration to perform the real criterion of homogeneity of neighboring pixels in many image vision and understanding cases. Owing to the purpose of generating automatic clustering algorithms, the specific fitness function contains the DB_validity measure to significantly improve resolutions of spatial information among the given training patterns. The computation of image DB_index is delivered to retrieve the specific objects by evaluating the characters of given patterns. The novel ADPCA actually indicate the homogeneity region of interesting pictures and eliminate small pieces of elements by the supports of DB index measure, which can be used to dynamically compute the maximal similarity and small difference of the discussed image patterns. Several artificial datasets include the three-dimensional dataset with five spherical clusters, two-dimensional patterns with three different sizes circles, one Chtree Fractal image patterns, one real life IRIS data and one grey level image data, which are given as training patterns to demonstrate the adaptation and efficiency of the ADPCA learning method. It presents that ADPCA determine the correct clustering number and suitable cluster position in different data clustering examples. Two image segmentation applications also show that ADPCA can achieve correct detection of subjects. In conclusion, several simulations compared with the traditional k-means algorithm demonstrate the great results of ADPCA learning machine.
机译:聚类算法是分析图像应用程序中对象特征之前的关键步骤。适应性DB-PSO模式聚类算法(ADPCA)结合了粒子群优化(PSO)聚类算法和适应性DB_index测量方法,可以有效地确定集群的真实数量,集群中心,即使存在的目录也能识别出正确的目录一些情况,包括各种形状,多维,现实生活中的训练模式和图像数据集。通常,PSO适用于处理复杂的全局优化问题。具有自适应数学指标的基于种群的进化PSO学习算法可以拟合数据振动,以在许多图像视觉和理解情况下执行相邻像素均匀性的真实标准。由于生成自动聚类算法的目的,特定的适应度函数包含DB_validity量度,以显着提高给定训练模式中空间信息的分辨率。通过评估给定图案的字符来传递图像DB_index的计算以检索特定对象。新颖的ADPCA实际上指示了有趣图片的均匀性区域,并通过DB索引度量的支持消除了小块元素,可用于动态计算所讨论图像模式的最大相似性和小差异。几个人工数据集包括具有五个球形簇的三维数据集,具有三个不同大小的圆的二维模式,一个Chtree分形图像模式,一个现实IRIS数据和一个灰度图像数据,它们被作为训练模式进行演示ADPCA学习方法的适应性和效率。它提出了ADPCA在不同的数据聚类示例中确定正确的聚类数量和合适的聚类位置。两个图像分割应用程序还表明,ADPCA可以正确检测对象。总而言之,与传统的k均值算法相比,一些仿真证明了ADPCA学习机的出色结果。

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