基于增量类学习和隐马尔可夫模型的模式分类

Filip Lukaszewski, K. Nagorko
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引用次数: 3

摘要

增量类学习-隐马尔可夫模型(ICL-HMM)系统结合了模式识别领域采用的两种不同方法,形成了一种新的鲁棒解决方案。该系统由两个部分组成:ICL特征提取器和HMM序列识别器。前者,ICL,是一种人工神经网络,能够通过滑动的窄窗口逐步学习识别模式的特征。hmm模拟从一个隐藏状态转移到另一个隐藏状态的系统。在每个状态下,系统都会产生一些观测值。在我们的系统中,我们通过将ICL为属于其类别的模式生成的观察序列呈现给它,为每一类模式训练一个HMM。在测试阶段,每个HMM都会检查它对为未知模式生成的观察序列的建模效果。我们将ICL-HMM系统应用于印刷拉丁字符识别任务中,取得了令人满意的结果。
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Pattern classification with incremental class learning and Hidden Markov models
Incremental class learning - Hidden Markov models (ICL-HMM) system combines two different approaches adopted in pattern recognition area to form a new, robust solution. Our system is composed of two parts - ICL feature extractor and HMM sequence recognizer. The former, ICL, is an artificial neural network capable of incrementally learning to recognize features of patterns from a narrow window sliding over them. HMMs simulate systems that transfer from one hidden state to another. In every state the system generates some observations. In our system we train one HMM for every class of patterns by presenting to it the sequences of observations generated by ICL for patterns belonging to its class. In the testing phase, every HMM checks how well it models the sequence of observations generated for an unknown pattern. We present promising results of applying ICL-HMM system to printed Latin character recognition task.
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