TY - JOUR
T1 - Towards Analyzing and Predicting the Experience of Live Performances with Wearable Sensing
AU - Gedik, Ekin
AU - Cabrera-Quiros, Laura
AU - Martella, Claudio
AU - Englebienne, Gwenn
AU - Hung, Hayley
PY - 2021
Y1 - 2021
N2 - We present an approach to interpret the response of audiences to live performances by processing mobile sensor data. We apply our method on three different datasets obtained from three live performances, where each audience member wore a single tri-axial accelerometer and proximity sensor embedded inside a smart sensor pack. Using these sensor data, we developed a novel approach to predict audience members’ self-reported experience of the performances in terms of enjoyment, immersion, willingness to recommend the event to others, and change in mood. The proposed method uses an unsupervised method to identify informative intervals of the event, using the linkage of the audience members’ bodily movements, and uses data from these intervals only to estimate the audience members’ experience. We also analyze how the relative location of members of the audience can affect their experience and present an automatic way of recovering neighborhood information based on proximity sensors. We further show that the linkage of the audience members’ bodily movements is informative of memorable moments which were later reported by the audience.
AB - We present an approach to interpret the response of audiences to live performances by processing mobile sensor data. We apply our method on three different datasets obtained from three live performances, where each audience member wore a single tri-axial accelerometer and proximity sensor embedded inside a smart sensor pack. Using these sensor data, we developed a novel approach to predict audience members’ self-reported experience of the performances in terms of enjoyment, immersion, willingness to recommend the event to others, and change in mood. The proposed method uses an unsupervised method to identify informative intervals of the event, using the linkage of the audience members’ bodily movements, and uses data from these intervals only to estimate the audience members’ experience. We also analyze how the relative location of members of the audience can affect their experience and present an automatic way of recovering neighborhood information based on proximity sensors. We further show that the linkage of the audience members’ bodily movements is informative of memorable moments which were later reported by the audience.
KW - 2024 OA procedure
U2 - 10.1109/TAFFC.2018.2875987
DO - 10.1109/TAFFC.2018.2875987
M3 - Article
SN - 1949-3045
VL - 12
SP - 269
EP - 276
JO - IEEE transactions on affective computing
JF - IEEE transactions on affective computing
IS - 1
ER -