2021
DOI: 10.32920/ryerson.14655894.v1
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Content Based Audio Watermarking and Retrieval Using Time-Frequency Analysis

Abstract: This research focuses on the application of joint time-frequency (TF) analysis for watermarking and classifying different audio signals. Time frequency analysis which originated in the 1930s has often been used to model the non-stationary behaviour of speech and audio signals. By taking into consideration the human auditory system which has many non-linear effects and its masking properties, we can extract efficient features from the TF domain to watermark or classify signals. This novel audio watermarking… Show more

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“…In [93], authors studied two different areas of content-based audio watermarking and recovery using Time-Frequency (TF) parameters. Audio signals are non-stationary and multicomponent signals, which involve a series of sinusoids with harmonically allied frequencies.…”
Section: ) Watermarking Techniques Related To Content Characterization Applicationmentioning
confidence: 99%
“…In [93], authors studied two different areas of content-based audio watermarking and recovery using Time-Frequency (TF) parameters. Audio signals are non-stationary and multicomponent signals, which involve a series of sinusoids with harmonically allied frequencies.…”
Section: ) Watermarking Techniques Related To Content Characterization Applicationmentioning
confidence: 99%