Word recognition with the feature finding neural network (FFNN)

T. Gramß
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引用次数: 18

Abstract

An overview of the architecture and capabilities of the work recognizer FFNN ('feature finding neural network') is given. FFNN finds features in a self-organizing way which are relatively invariant in the presence of time distortions and changes in speaker characteristics. Fast and optimal feature selection rules have been developed to perform this task. With FFNN, essential problems of word recognition can be solved, among them a special case of the figure ground problem. FFNN is faster than the classical DTW and HMM recognizers and yields similar recognition rates.<>
基于特征寻找神经网络的词识别
概述了工作识别器FFNN(“特征查找神经网络”)的结构和功能。FFNN以自组织的方式寻找特征,这些特征在存在时间扭曲和说话人特征变化的情况下相对不变。快速和最优的特征选择规则已经被开发来执行这项任务。使用FFNN可以解决单词识别的基本问题,其中一个特殊的例子是图形背景问题。FFNN比经典的DTW和HMM识别器更快,并产生相似的识别率。
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