We present a distance measure between audio files designed to identify cover songs, which are new renditions of previously recorded songs. For each song we compute the chromagram, remove phase information and apply exponentially distributed bands in order to obtain a feature matrix that compactly describes a song and is insensitive to changes in instrumentation, tempo and time shifts. As distance between two songs, we use the Frobenius norm of the difference between their feature matrices normalized to unit norm. When computing the distance, we take possible transpositions into account. In a test collection of 80 songs with two versions of each, 38% of the covers were identified. The system was also evaluated on an independent, internationa...
Cover song identification is a field of music information retrieval where the task is to determine w...
Describes the problem of cover songs, how to calculate chroma features and track beats with dynamic ...
This work is licensed under a Creative Commons Attribution 3.0 License. For more information, see ht...
In the context of music, a cover version is a remake of a song, often with significant stylistic var...
Large music collections, ranging from thousands to millions of tracks, are unsuited to manual search...
In the following, we describe the refined version of our 2007 cover song identification algorithm [3...
Part 3: Data Analysis and Information RetrievalInternational audienceCover song identification has b...
In this paper, we propose a method to integrate the results of different cover song identification a...
13 pages, 5 figures, 4 tables. v3: Accepted version13 pages, 5 figures, 4 tables. v3: Accepted versi...
We present a new technique for audio signal comparison based on tonal subsequence alignment and its ...
A beat-synchronous chroma representation enables the matching of cover versions of popular music usi...
Beat-synchronous chroma features capture melodic-harmonic content of music audio, and successfully d...
Large-scale cover song recognition involves calculating item-to-item similarities that can accommoda...
We describe our cover song detection system, as submitted to the MIREX 2007 Cover Song Detection eva...
Music is incorporated into our daily lives whether intentional or unintentional. It evokes respons...
Cover song identification is a field of music information retrieval where the task is to determine w...
Describes the problem of cover songs, how to calculate chroma features and track beats with dynamic ...
This work is licensed under a Creative Commons Attribution 3.0 License. For more information, see ht...
In the context of music, a cover version is a remake of a song, often with significant stylistic var...
Large music collections, ranging from thousands to millions of tracks, are unsuited to manual search...
In the following, we describe the refined version of our 2007 cover song identification algorithm [3...
Part 3: Data Analysis and Information RetrievalInternational audienceCover song identification has b...
In this paper, we propose a method to integrate the results of different cover song identification a...
13 pages, 5 figures, 4 tables. v3: Accepted version13 pages, 5 figures, 4 tables. v3: Accepted versi...
We present a new technique for audio signal comparison based on tonal subsequence alignment and its ...
A beat-synchronous chroma representation enables the matching of cover versions of popular music usi...
Beat-synchronous chroma features capture melodic-harmonic content of music audio, and successfully d...
Large-scale cover song recognition involves calculating item-to-item similarities that can accommoda...
We describe our cover song detection system, as submitted to the MIREX 2007 Cover Song Detection eva...
Music is incorporated into our daily lives whether intentional or unintentional. It evokes respons...
Cover song identification is a field of music information retrieval where the task is to determine w...
Describes the problem of cover songs, how to calculate chroma features and track beats with dynamic ...
This work is licensed under a Creative Commons Attribution 3.0 License. For more information, see ht...