A generalized expansion matching based feature extractor
نویسندگان
چکیده
A novel and eecient generalized feature extraction method is presented based on the Expansion Matching (EXM) method and the Karhunen-Loueve (KL) transform. The EXM method is used to design optimal detectors for diierent features. The KL representation is used to deene an optimal basis for representing these EXM feature detectors with minimum truncation error. Input images are then analyzed with the resulting KL basis set. The KL coeecients obtained from the analysis are used to eeciently reconstruct the response due to any combination of feature detectors. The method is applied to real images and successfully extracts a variety of arc and edge features as well as complex junction features formed by combining two or more arc or line features.
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