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Image segmentation using fuzzy competitive learning based counter propagation network

机译:基于模糊竞争学习的逆传播网络的图像分割

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Image segmentation is the method of partitioning an image into some homogenous regions that are more meaningful for its better understanding and examination. Soft computing methods having the capabilities of achieving artificial intelligence are predominately used to perform the task of segmentation. Due to the variability and the uncertainty present in natural scenes, segmentation is a complicated task to perform with the help of conventional image segmentation techniques. Therefore, in this article a hybrid Fuzzy Competitive Learning based Counter Propagation Network (FCPN) is proposed for the segmentation of natural scene images. This method compromises of the uncertainty handling capabilities of the fuzzy system and proficiency of parallel learning ability of neural network. To identify the number of clusters automatically in less computational time, the instar layer of Counter propagation network (CPN) has been trained by using Fuzzy competitive learning (FCL). The outstar layer of counter propagation network is trained by using Grossberg learning for obtaining the desired output. Region growing method having the tendency to correctly identify edges with simplicity is used for initial seed point selection. Then, the most similar regions in the image are clustered and the number of clusters is estimated automatically. Finally, by identifying the cluster centers the images are segmented. Bacterial foraging algorithm is used to initialize the initial weights to the network, which helps the proposed method in achieving low convergence ratio with higher accuracy. Results validated the higher performance of proposed FCPN method when compared with other states-of-the-art methods. For future work, some other adaptive methods like the fuzzy model-based network can be used to identify multiple object regions and classifying them among separate clusters.
机译:图像分割是将图像划分为一些同质区域的方法,这些区域对于更好地理解和检查更为有意义。具有实现人工智能能力的软计算方法主要用于执行分割任务。由于自然场景中存在的可变性和不确定性,在传统图像分割技术的帮助下进行分割是一项复杂的任务。因此,本文提出了一种基于模糊竞争学习的混合逆向传播网络(FCPN),用于自然场景图像的分割。该方法损害了模糊系统的不确定性处理能力和神经网络的并行学习能力的能力。为了在更少的计算时间内自动识别群集数,已使用模糊竞争学习(FCL)对计数器传播网络(CPN)的初始层进行了训练。通过使用Grossberg学习来训练计数器传播网络的外部层,以获得所需的输出。倾向于简单地正确识别边缘的区域生长方法被用于初始种子点选择。然后,将图像中最相似的区域聚类,并自动估计聚类数。最后,通过识别聚类中心,对图像进行分割。细菌觅食算法用于初始化网络的初始权重,这有助于所提出的方法以较高的精度实现低收敛率。与其他最新方法相比,结果证明了所提出的FCPN方法具有更高的性能。对于将来的工作,可以使用其他一些自适应方法,例如基于模糊模型的网络来识别多个对象区域,并将它们分类到单独的群集中。

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