Joint use of dynamical classifiers and ambiguity plane features

ICASSP '01). 2001 IEEE International Conference(2001)

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摘要
This paper argues for using ambiguity plane features within dynamic statistical models for classification problems. The relative contribution of the two model components are investigated in the context of acoustically monitoring cutter wear during milling of titanium, an application where it is known that standard static classification techniques work poorly. Experiments show that explicit modeling of long-term context via a hidden Markov model state improves performance, but mainly by using this to augment sparsely labelled training data. An additional performance gain is achieved by using the shorter-term context of ambiguity plane features
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关键词
acoustic signal processing,cutting,hidden Markov models,machining,mechanical engineering computing,signal classification,statistical analysis,titanium,acoustic monitoring,ambiguity plane features,classification problems,cutter wear,dynamic statistical models,dynamical classifiers,hidden Markov model,shorter-term context,titanium milling
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