Potential Barriers to Music Fingerprinting Algorithms in the Presence of Background Noise
Title | Potential Barriers to Music Fingerprinting Algorithms in the Presence of Background Noise |
Publication Type | Conference Paper |
Year of Publication | 2020 |
Authors | Mehmood, Z., Qazi, K. Ashfaq, Tahir, M., Yousaf, R. Muhammad, Sardaraz, M. |
Conference Name | 2020 6th Conference on Data Science and Machine Learning Applications (CDMA) |
Date Published | March 2020 |
Publisher | IEEE |
ISBN Number | 978-1-7281-2746-0 |
Keywords | acoustic feature modeling, Acoustic Fingerprint, Acoustic Fingerprints, Acoustic signal processing, audio sample identification, audio signal, audio signal processing, classification, composability, condensed signature, deep learning techniques, digital signature, digital signatures, Hashing curve detection, Human Behavior, iKala dataset, image processing, learning (artificial intelligence), MFP, MIR-1K dataset, music, music fingerprint classification, music fingerprinting algorithms, MusicBrainz dataset, pubcrawl, resilience, Resiliency, Shazam, signal classification, song identification |
Abstract | An acoustic fingerprint is a condensed and powerful digital signature of an audio signal which is used for audio sample identification. A fingerprint is the pattern of a voice or audio sample. A large number of algorithms have been developed for generating such acoustic fingerprints. These algorithms facilitate systems that perform song searching, song identification, and song duplication detection. In this study, a comprehensive and powerful survey of already developed algorithms is conducted. Four major music fingerprinting algorithms are evaluated for identifying and analyzing the potential hurdles that can affect their results. Since the background and environmental noise reduces the efficiency of music fingerprinting algorithms, behavioral analysis of fingerprinting algorithms is performed using audio samples of different languages and under different environmental conditions. The results of music fingerprint classification are more successful when deep learning techniques for classification are used. The testing of the acoustic feature modeling and music fingerprinting algorithms is performed using the standard dataset of iKala, MusicBrainz and MIR-1K. |
URL | https://ieeexplore.ieee.org/document/9044274 |
DOI | 10.1109/CDMA47397.2020.00010 |
Citation Key | mehmood_potential_2020 |
- iKala dataset
- song identification
- signal classification
- Shazam
- Resiliency
- resilience
- pubcrawl
- MusicBrainz dataset
- music fingerprinting algorithms
- music fingerprint classification
- music
- MIR-1K dataset
- MFP
- learning (artificial intelligence)
- Image Processing
- acoustic feature modeling
- Human behavior
- Hashing curve detection
- digital signatures
- digital signature
- deep learning techniques
- condensed signature
- composability
- classification
- audio signal processing
- audio signal
- audio sample identification
- Acoustic signal processing
- Acoustic Fingerprints
- Acoustic Fingerprint