Egilea
Hitz-gakoak
Abstract

In this article, we propose Multi-Entity Bayesian Networks (MEBNs) as the probabilistic ontological framework for the analysis of the Tsamiko and Salsa dances. More specifically, our analysis has the objective of the dancer assessment with respect to both choreography execution accuracy and the synchronization of the dance movements with the musical rhythm. For this task, we make use of the explicit, expert-provided knowledge on dance movements and their relations to the musical beat. Due to the complexity of this knowledge, the MEBNs were used as the probabilistic ontological framework in which the knowledge is formalized. The reason we opt for MEBNs for this task is that they combine Bayesian and formal (first-order) logic into a single model. In this way, the Bayesian probabilistic part of MEBNs was used to capture, using example data and training, the implicit part of the expert knowledge about dances, i.e., this part of the knowledge that cannot be formalized and explicitly defined accurately enough, while the logical maintains the explicit knowledge representation in the same way ontologies do. Moreover, we present in detail the MEBN models we built for Tsamiko and Salsa, using expert-provided explicit knowledge. Last, we conduct experiments that demonstrate the effectiveness of the proposed MEBN-based methodology we employ to achieve our analysis objectives. The results of the experiments demonstrate the superiority of MEBNs to conventional models, such as BNs, in terms of the dancer assessment accuracy.

Year of Publication
2018
Revista académica
ACM Journal on Computing and Cultural Heritage
Volume
11
Zenbakia
3
Publisher: Association for Computing Machinery
Date Published
sep
Publication Language
English
ISSN Number
15564673 (ISSN)
URL
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85051823861&doi=10.1145%2f3131610&partnerID=40&md5=62211d3ac16aa6c3bea8708652d2c706
DOI
10.1145/3131610
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