AIST Dance Video Database: Multi-genre, Multi-dancer, and Multi-camera Database for Dance Information Processing
We describe the AIST Dance Video Database (AIST Dance DB), a shared database containing original street dance
videos with copyright-cleared dance music. Although dancing is highly related to dance music and dance information
can be considered an important aspect of music information, research on dance information processing has
not yet received much attention in the Music Information Retrieval (MIR) community. We therefore developed the
AIST Dance DB as the first large-scale shared database focusing on street dances to facilitate research on a variety
of tasks related to dancing to music. It consists of 13,939 dance videos covering 10 major dance genres as well as
60 pieces of dance music composed for those genres. The videos were recorded by having 40 professional dancers
(25 male and 15 female) dance to those pieces. We carefully designed this database so that it can cover both solo
dancing and group dancing as well as both basic choreography moves and advanced moves originally choreographed
by each dancer. Moreover, we used multiple cameras surrounding a dancer to simultaneously shoot from various
directions. The AIST Dance DB will foster new MIR tasks such as dance-motion genre classification, dancer identification,
and dance-technique estimation. We propose a dance-motion genre-classification task and developed four
baseline methods of identifying dance genres of videos in this database. We evaluated these methods by extracting
dancer body motions and training their classifiers on the basis of long short-term memory (LSTM) recurrent neural
network models and support-vector machine (SVM) models.
ストリートダンス動画データベース