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http://dx.doi.org/10.5909/JBE.2012.17.4.659

Audio Fingerprint Based on Combining Binary Fingerprints  

Jang, Dal-Won (Digital Media Research Center, KETI)
Lee, Seok-Pil (Digital Media Research Center, KETI)
Publication Information
Journal of Broadcast Engineering / v.17, no.4, 2012 , pp. 659-669 More about this Journal
Abstract
This paper proposes the method to extract a binary audio fingerprint by combining several base binary fingerprints. Based on majority voting of base fingerprints, which are designed by mimicking the fingerprint used in Philips fingerprinting system, the proposed fingerprint is determined. In the matching part, the base fingerprints are extracted from the query, and distance is computed using the sum of them. In the experiments, the proposed fingerprint outperforms the base binary fingerprints. The method can be used for enhancing the existing binary fingerprint or for designing a new fingerprint.
Keywords
audio identification; audio fingerprinting; fingerprint matching; fingerprint combination; binary fingerprint;
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