[results,template,target] = reijniers2014(template,target,'num_exp',20,'sig_S',4.2);
doa | directions of arrival in spherical coordinates |
params | additional model's data computed for estimations |
reijniers2014 accepts the following optional parameters:
'num_exp',num_exp | Set the number of localization trials. Default is num_exp = 500. |
'SNR',SNR | Set the signal to noise ratio corresponding to different sound source intensities. Default value is SNR = 75 [dB] |
'sig_itd',sig | Set standard deviation for the noise on the itd. Default value is sig_itd = 0.569. |
'sig_I',sig | Set standard deviation for the internal noise. Default value is sig_I = 3.5. |
'sig_S',sig | Set standard deviation for the variation on the source spectrum. Default value is sig_I = 3.5. |
Further, cache flags (see amt_cache) can be specified.
reijniers2014(...) is an ideal-observer model of human sound localization, by which we mean a model that performs optimal information processing within a Bayesian context. The model considers all available spatial information contained within the acoustic signals encoded by each ear. Parameters for the optimal Bayesian model are determined based on psychoacoustic discrimination experiments on interaural time difference and sound intensity.
R. Barumerli, P. Majdak, R. Baumgartner, J. Reijniers, M. Geronazzo, and F. Avanzini. Predicting directional sound-localization of human listeners in both horizontal and vertical dimensions. In Audio Engineering Society Convention 148. Audio Engineering Society, 2020.
R. Barumerli, P. Majdak, R. Baumgartner, M. Geronazzo, and F. Avanzini. Evaluation of a human sound localization model based on bayesian inference. In Forum Acusticum, 2020.
J. Reijniers, D. Vanderleist, C. Jin, C. S., and H. Peremans. An ideal-observer model of human sound localization. Biological Cybernetics, 108:169--181, 2014.