TY - GEN
T1 - Çok bakişli i̇şitsel-görsel dans verilerinin analizi ve sentezi
AU - Ofli, F.
AU - Demir, Y.
AU - Canton-Ferrer, C.
AU - Tilmanne, J.
AU - Balci, K.
AU - Bozkurt, E.
AU - Kizoǧlu, I.
AU - Yemez, Y.
AU - Erzin, E.
AU - Tekalp, A. M.
AU - Akarun, L.
AU - Erdem, A. T.
PY - 2008
Y1 - 2008
N2 - This paper presents a framework for audio-driven human body motion analysis and synthesis. The video is analyzed to capture the time-varying posture of the dancer's body whereas the musical audio signal is processed to extract the beat information. The human body posture is extracted from multiview video information without any human intervention using a novel marker-based algorithm based on annealing particle filtering. Body movements of the dancer are characterized by a set of recurring semantic motion patterns, i.e., dance figures. Each dance figure is modeled in a supervised manner with a set of HMM (Hidden Markov Model) structures and the associated beat frequency. In synthesis, given an audio signal of a learned musical type, the motion parameters of the corresponding dance figures are synthesized via the trained HMM structures in synchrony with the input audio signal based on the estimated tempo information. Finally, the generated motion parameters are animated along with the musical audio using a graphical animation tool. Experimental results demonstrate the effectiveness of the proposed framework.
AB - This paper presents a framework for audio-driven human body motion analysis and synthesis. The video is analyzed to capture the time-varying posture of the dancer's body whereas the musical audio signal is processed to extract the beat information. The human body posture is extracted from multiview video information without any human intervention using a novel marker-based algorithm based on annealing particle filtering. Body movements of the dancer are characterized by a set of recurring semantic motion patterns, i.e., dance figures. Each dance figure is modeled in a supervised manner with a set of HMM (Hidden Markov Model) structures and the associated beat frequency. In synthesis, given an audio signal of a learned musical type, the motion parameters of the corresponding dance figures are synthesized via the trained HMM structures in synchrony with the input audio signal based on the estimated tempo information. Finally, the generated motion parameters are animated along with the musical audio using a graphical animation tool. Experimental results demonstrate the effectiveness of the proposed framework.
UR - http://www.scopus.com/inward/record.url?scp=56449084971&partnerID=8YFLogxK
U2 - 10.1109/SIU.2008.4632725
DO - 10.1109/SIU.2008.4632725
M3 - Conference contribution
AN - SCOPUS:56449084971
SN - 9781424419999
T3 - 2008 IEEE 16th Signal Processing, Communication and Applications Conference, SIU
BT - 2008 IEEE 16th Signal Processing, Communication and Applications Conference, SIU
T2 - 2008 IEEE 16th Signal Processing, Communication and Applications Conference, SIU
Y2 - 20 April 2008 through 22 April 2008
ER -