We present two new data sets for automatic evaluation of tempo estimation and key detection algorithms. In con-trast to existing collections, both released data sets focus on electronic dance music (EDM). The data sets have been automatically created from user feedback and annotations extracted from web sources. More precisely, we utilize user corrections submitted to an online forum to report wrong tempo and key annotations on the Beatport website. Beatport is a digital record store targeted at DJs and focus-ing on EDM genres. For all annotated tracks in the data sets, samples of at least one-minute-length can be freely downloaded. For key detection, further ground truth is ex-tracted from expert annotations manually assigned to Beat-port ...
We describe a computer program which is able to estimate the tempo and the times of musical beats in...
Comunicació presentada a la 17th International Society for Music Information Retrieval Conference (I...
In this paper we establish a threshold for perceptually ac-ceptable beat tracking based on the mutua...
Comunicació presentada a: the 16th International Society for Music Information Retrieval Conference ...
Relative to other datasets, state-of-the-art tempo estimation algorithms perform poorly on the Giant...
Relative to other datasets, state-of-the-art tempo estimation algorithms perform poorly on the Giant...
The Beatport EDM Key Dataset includes 1,486 two-minute sound excerpts from various EDM subgenres, an...
The GiantSteps+ EDM Key Dataset includes 600 two-minute sound excerpts from various EDM subgenres, a...
Large digital archives of ethnic music require automatic tools to provide musical content descriptio...
The automatic analysis of musical rhythm from audio, and more specifically tempo and beat tracking, ...
Comunicació presentada a la 38th European Conference on IR Research (ECIR 2016), celebrada els dies ...
Beat detection is an important MIR research area. Due to its growing usage in multimedia application...
We describe a novel tempo estimation method based on decomposing musical audio into sources using pr...
In this paper we establish a threshold for perceptually acceptable beat tracking based on the mutual...
Most people follow the music to hum or follow the rhythm to tap sometimes. We may get differ-ent mea...
We describe a computer program which is able to estimate the tempo and the times of musical beats in...
Comunicació presentada a la 17th International Society for Music Information Retrieval Conference (I...
In this paper we establish a threshold for perceptually ac-ceptable beat tracking based on the mutua...
Comunicació presentada a: the 16th International Society for Music Information Retrieval Conference ...
Relative to other datasets, state-of-the-art tempo estimation algorithms perform poorly on the Giant...
Relative to other datasets, state-of-the-art tempo estimation algorithms perform poorly on the Giant...
The Beatport EDM Key Dataset includes 1,486 two-minute sound excerpts from various EDM subgenres, an...
The GiantSteps+ EDM Key Dataset includes 600 two-minute sound excerpts from various EDM subgenres, a...
Large digital archives of ethnic music require automatic tools to provide musical content descriptio...
The automatic analysis of musical rhythm from audio, and more specifically tempo and beat tracking, ...
Comunicació presentada a la 38th European Conference on IR Research (ECIR 2016), celebrada els dies ...
Beat detection is an important MIR research area. Due to its growing usage in multimedia application...
We describe a novel tempo estimation method based on decomposing musical audio into sources using pr...
In this paper we establish a threshold for perceptually acceptable beat tracking based on the mutual...
Most people follow the music to hum or follow the rhythm to tap sometimes. We may get differ-ent mea...
We describe a computer program which is able to estimate the tempo and the times of musical beats in...
Comunicació presentada a la 17th International Society for Music Information Retrieval Conference (I...
In this paper we establish a threshold for perceptually ac-ceptable beat tracking based on the mutua...