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Distributed Multi-Feature Recognition Scheme for Greyscale Images

机译:灰度图像的分布式多特征识别方案

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摘要

Contemporary image recognition schemes either rely on single-feature recognition or focus on solving multi-feature recognition using complex computational approaches. Furthermore these approaches tend to be of tightly-coupled nature, thus not readily deploy-able within computational networks. Distributed Hierarchical Graph Neuron (DHGN) is a distributed single-cycle learning pattern recognition algorithm that can scale from coarse-grained to fine-grained networks and it has comparable accuracy to contemporary image recognition schemes. In this paper, we present an implementation of DHGN that works for multi-feature recognition of images. Our scheme is able to disseminate recognition of each feature within an image to a separate computational subnetwork. Thereby allowing a number of features being analysed simultaneously using a uniform recognition process. We have conducted tests on a collection of greyscale facial images. The results show that our approach produces high recognition accuracy through a simple distributed process. Furthermore, our approach implements single-cycle learning known as collaborative-comparison learning where new patterns are continuously stored using collaborative approach without affecting previously stored patterns. Our proposed scheme demonstrates higher classification accuracy in comparison with Back-Propagation Neural Network for multi-class images.
机译:当代图像识别方案要么依赖于单一特征识别,要么着重于使用复杂的计算方法解决多重特征识别。此外,这些方法趋于具有紧密耦合的性质,因此不容易在计算网络内部署。分布式层次图神经元(DHGN)是一种分布式单周期学习模式识别算法,可以从粗粒度网络扩展到细粒度网络,并且具有与当代图像识别方案相当的准确性。在本文中,我们提出了DHGN的实现,该实现可用于图像的多特征识别。我们的方案能够将图像中每个特征的识别传播到单独的计算子网中。从而允许使用统一的识别过程同时分析多个特征。我们已经对一系列灰度面部图像进行了测试。结果表明,我们的方法通过简单的分布式过程产生了较高的识别精度。此外,我们的方法实现了称为协作比较学习的单周期学习,其中使用协作方法连续存储新模式,而不影响以前存储的模式。与针对多类图像的反向传播神经网络相比,我们提出的方案展示了更高的分类精度。

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