Novelty Detection Based on Spectral Similarity of Songs
نویسندگان
چکیده
We are introducing novelty detection, i.e. the automatic identification of new or unknown data not covered by the training data, to the field of music information retrieval. Two methods for novelty detection one based solely on the similarity information and one also utilizing genre label information are evaluated within the context of genre classification based on spectral similarity. Both are shown to perform equally well.
منابع مشابه
Novelty Detection for Spectral Similarity of Songs
We are introducing novelty detection, i.e. the automatic identification of new or unknown data not covered by the training data, to the field of music information retrieval. Two methods for novelty detection are evaluated within the context of genre classification based on spectral similarity. Both the method based solely on the similarity information and the one also utilizing genre label info...
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