A massively parallel implementation of pattern classifiers on SIMD and MIMD architectures

K. Lam
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Abstract

Parallel multi-layer classifier architectures with an increasing hierarchical order have offered much flexibility in design to deal with a wide variety of properties. The model of pipeline processing is especially appropriate for realising such architectures. This has provided hierarchical classifiers a distinct advantage in real-time applications to cope with the important demand for high operating speed, in addition to a potentially better classification performance. An example application of a cascaded form of the BWS and FWS networks, both of which are representatives of the array memory based statistical classifier is described in this paper. As with most pipelined architectures, the complex interactions between successive processing layers of the cascaded network represent a major drawback, and they impose performance bottlenecks which challenge the use of a highly parallel realisation of the classifier. This paper describes an efficient data parallel implementation of the BWS-FWS. For completeness, a brief review of the multi-layer classifiers is first presented. The new algorithm for combining the BWS and FWS networks is described and implemented on two distributed memory processor arrays, the MasPar MP-1 and a network of transputers. An analysis of the performance obtained is also presented.<>
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SIMD和MIMD架构上模式分类器的大规模并行实现
随着层次顺序的增加,并行多层分类器体系结构在设计上提供了很大的灵活性来处理各种各样的属性。管道处理模型特别适合于实现这样的体系结构。这为分层分类器在实时应用程序中提供了明显的优势,以应对对高操作速度的重要需求,以及潜在的更好的分类性能。本文给出了基于阵列存储器的统计分类器的代表——BWS和FWS网络级联形式的一个应用实例。与大多数流水线架构一样,级联网络的连续处理层之间的复杂交互代表了一个主要缺点,并且它们带来了性能瓶颈,挑战了分类器高度并行实现的使用。本文描述了一种高效的BWS-FWS数据并行实现。为了完整起见,首先简要回顾一下多层分类器。描述了结合BWS和FWS网络的新算法,并在两个分布式存储处理器阵列(MasPar MP-1和一个转发器网络)上实现。并对所获得的性能进行了分析。
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