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A Hopfield Neural Network for combining classifiers applied to textured images.

机译:Hopfield神经网络,用于组合应用于纹理图像的分类器。

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In this paper we propose a new method for combining simple classifiers through the analogue Hopfield Neural Network (HNN) optimization paradigm for classifying natural textures in images. The base classifiers are the Fuzzy clustering (FC) and the parametric Bayesian estimator (BP). An initial unsupervised training phase determines the number of clusters and estimates the parameters for both FC and BP. Then a decision phase is carried out, where we build as many Hopfield Neural Networks as the available number of clusters. The number of nodes at each network is the number of pixels in the image which is to be classified. Each node at each network is initially loaded with a state value, which is the membership degree (provided by FC) that the node (pixel) belongs to the cluster associated to the network. Each state is later iteratively updated during the HNN optimization process taking into account the previous states and two types of external influences exerted by other nodes in its neighborhood. The external influences are mapped as consistencies. One is embedded in an energy term which considers the states of the node to be updated and the states of its neighbors. The other is mapped as the inter-connection weights between the nodes. From BP, we obtain the probabilities that the nodes (pixels) belong to a cluster (network). We define these weights as a relation between states and probabilities between the nodes in the neighborhood of the node which is being updated. This is the classifier combination, making the main finding of this paper. The proposed combined strategy based on the HNN outperforms the simple classifiers and also classical combination strategies.
机译:在本文中,我们提出了一种通过模拟Hopfield神经网络(HNN)优化范例将简单分类器进行组合的新方法,以对图像中的自然纹理进行分类。基本分类器是模糊聚类(FC)和参数贝叶斯估计量(BP)。初始的无监督训练阶段确定群集的数量,并估计FC和BP的参数。然后执行决策阶段,在此阶段,我们将构建与可用簇数一样多的Hopfield神经网络。每个网络上的节点数是图像中要分类的像素数。每个网络上的每个节点最初都加载有一个状态值,该状态值是该节点(像素)属于与该网络关联的群集的隶属度(由FC提供)。考虑到以前的状态以及附近其他节点施加的两种外部影响,每个状态随后会在HNN优化过程中进行迭代更新。外部影响映射为一致性。一个嵌入在能量项中,能量项考虑要更新的节点的状态及其邻居的状态。另一个映射为节点之间的互连权重。从BP中,我们获得节点(像素)属于群集(网络)的概率。我们将这些权重定义为状态与要更新的节点附近节点之间的概率之间的关系。这是分类器的组合,这是本文的主要发现。提出的基于HNN的组合策略优于简单的分类器,也优于传统的组合策略。

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