An experimental evaluation of echo state network for colour image segmentation

Abdelkerim Souahlia, A. Belatreche, A. Benyettou, K. Curran
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引用次数: 10

Abstract

Image segmentation refers to the process of dividing an image into multiple regions which represent meaningful areas. Image segmentation is an essential step for most image analysis tasks such as object recognition and tracking, pattern recognition, content-based image retrieval, etc. In recent years, a large number of image segmentation algorithms have been developed, but achieving accurate segmentation still remains a challenging task. Recently, reservoir computing (RC) has drawn much attention in machine learning as a new model of recurrent neural networks (RNN). Echo State Network (ESN) represents one efficient realization of RC, which is initially designed to facilitate learning in Recurrent Neural Networks. In this paper we investigate the viability of ESN as feature extractor for pixel classification based colour image segmentation. Extensive experiments are conducted on real world colour image datasets and the global ESN reservoir parameters are varied to identify their operating ranges that allow the use of the reservoir nodes internal activations as new pixel features for the colour image segmentation task. A simple feed forward neural network is used to realize the ESN readout function and classify these new features. The experimental results show that the proposed method achieves high performance image segmentation comparing with state-of-the-art techniques. In addition, a set of empirically derived guidelines for setting the reservoir global parameters are proposed.
回声状态网络在彩色图像分割中的实验评价
图像分割是指将图像分割成多个代表有意义区域的区域的过程。图像分割是物体识别与跟踪、模式识别、基于内容的图像检索等大多数图像分析任务的重要步骤。近年来,人们开发了大量的图像分割算法,但实现准确的分割仍然是一项具有挑战性的任务。储层计算(RC)作为递归神经网络(RNN)的一种新模型,近年来在机器学习领域备受关注。回声状态网络(回声状态网络,ESN)是RC的一种有效实现,最初是为了促进递归神经网络的学习。本文研究了回声状态网络作为基于像素分类的彩色图像分割的特征提取器的可行性。在真实世界的彩色图像数据集上进行了大量的实验,并改变了全局ESN库参数,以确定其操作范围,从而允许使用库节点内部激活作为彩色图像分割任务的新像素特征。采用简单的前馈神经网络实现ESN读出功能,并对这些新特征进行分类。实验结果表明,与现有的图像分割方法相比,该方法具有较高的分割性能。此外,还提出了一套经验推导的储层整体参数设置准则。
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