竞争层模型的一些性质及其在目标区域提取中的应用

Bochuan Zheng, Yi Zhang
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引用次数: 1

摘要

Lotka-Volterra递归神经网络(LV RNNs)实现的竞争层模式(CLM)可以用于特征绑定。一组具有相似性质的特征可以绑定到同一层,但是不知道可以绑定到哪一层。这在一些实际应用中是一个缺点,因为它可能需要知道一组特征可以绑定到哪一层。此外,在使用LV rnn的CLM进行大数据集聚类时,很难设置合适的网络参数以获得良好的聚类效果。针对这两个问题,本文提出了一种划分固定群的方法。该方法包含两个步骤。首先,将一个大数据集划分为几个相邻子数据集之间存在重叠的小子数据集;第二步,将LV rnn的CLM应用于每个子数据集,通过将处理子数据集中重叠元素的神经元值初始化为处理子数据集中相同元素的神经元的最终值,将一组中的所有特征绑定到同一层。作为该方法的一个应用,它被用于提取某些图像中的目标区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Some properties of the Competitive Layer Model with application to object regions extraction
It is known that the competitive layer mode (CLM) implemented by Lotka-Volterra recurrent neural networks (LV RNNs) can be used for feature binding. A group of features with similar property can be bound into same layer, however, it is not known which layer a group can be bound to. This is a drawback in some practical applications since it may be required to know which layer a group of features can be bound to. In addition, while using the CLM of LV RNNs for large data set clustering, it is difficult to set appropriate parameters of the network to achieve good clustering results. In this paper, a method called dividing and fixing group method is proposed to overcome this two problems. This method contains two steps. In the first step, it divides a large data set into several small sub data sets with overlapping among neighborhood sub data sets. In the second step, the CLM of LV RNNs is applied to each sub data sets, all features in one group can be bound to same layer by initializing the value of neurons for overlap elements in processing sub data set with the final value of neurons for same elements in processed sub data sets. As one application of this method, it is used to extract object regions in some images.
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