Structural pattern recognition systems are difficult to apply to new domains because implementation of both the description and classification tasks requires domain knowledge. Knowledge acquisition techniques necessary to obtain domain knowledge from experts are tedious and often fail to produce a complete and accurate knowledge base. Consequently, applications of structural pattern recognition have been primarily restricted to domains in which the set of useful morphological features has been established in the literature (e.g., speech recognition and character recognition) and the syntactic grammars can be composed by hand (e.g., electrocardiogram diagnosis). To overcome this limitation, a domain-independent approach to structural pattern recognition is needed that is capable of extracting morphological features and performing classification without relying on domain knowledge. A hybrid system that employs a statistical classification technique to perform discrimination based on structural features is a natural solution. While a statistical classifier is inherently domain independent, the domain knowledge necessary to support the description task can be eliminated with a set of generally-useful morphological features. Such a set of morphological features is suggested as the foundation for the development of a suite of structure detectors to perform generalized feature extraction for structural pattern recognition in time-series data.
The ability of the suite of structure detectors to generate features
useful for structural pattern recognition is evaluated by comparing the
classification accuracies achieved when using the structure detectors
versus commonly-used statistical feature extractors. Two real-world
databases with markedly different characteristics and established
ground truth serve as sources of data for the evaluation. The
classification accuracies achieved using the features extracted by the
structure detectors were consistently as good as or better than the
classification accuracies achieved when using the features generated by
the statistical feature extractors, thus demonstrating that the suite
of structure detectors effectively performs generalized feature
extraction for structural pattern recognition in time-series data.
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