TY - GEN
T1 - Deep net classification of drum strike location with non-uniform membrane tension
AU - Taylor, John Robert
PY - 2024
Y1 - 2024
N2 - ![CDATA[Tuning inaccuracies in snare drum membranes can cause inconsistent spectro-temporal changes (e.g. timbre differences) exacerbated by drumhead strike location. This exploratory study assesses the potential for developing a deep net classifier for strike drum location, using a Non-Uniformly Tuned Snare (NUTS) dataset, comprising 12,107 individual snare drum hits recorded in an anechoic chamber. Unique features of this dataset include its substantial size, additional novel features comprising physical attributes of the drum and a performance-based classification schema. A series of deep net classifiers are trained using Bayesian hyperparameter optimisation, on a subset of 8,685 strikes of the NUTS dataset, whose acoustic features are extracted at 9 different averaged time-windows (23ms-2000ms). A comparison is then made against similar models supplemented by domain knowledge of 15 different combinations of non-uniform membrane tension, whose measures are recorded near the sixteen tuning lugs for each strike. Results found above chance model accuracies, and some performance benefits of including the tuning information as domain knowledge between equivalent trials. Shorter window sizes performed worse than longer time windows, and per-class F1-scores suggest complex spectro-temporal time variant changes caused by dis-uniform membrane tension, which could have implications for performers wishing to broaden the sonic capabilities of the instrument.]]
AB - ![CDATA[Tuning inaccuracies in snare drum membranes can cause inconsistent spectro-temporal changes (e.g. timbre differences) exacerbated by drumhead strike location. This exploratory study assesses the potential for developing a deep net classifier for strike drum location, using a Non-Uniformly Tuned Snare (NUTS) dataset, comprising 12,107 individual snare drum hits recorded in an anechoic chamber. Unique features of this dataset include its substantial size, additional novel features comprising physical attributes of the drum and a performance-based classification schema. A series of deep net classifiers are trained using Bayesian hyperparameter optimisation, on a subset of 8,685 strikes of the NUTS dataset, whose acoustic features are extracted at 9 different averaged time-windows (23ms-2000ms). A comparison is then made against similar models supplemented by domain knowledge of 15 different combinations of non-uniform membrane tension, whose measures are recorded near the sixteen tuning lugs for each strike. Results found above chance model accuracies, and some performance benefits of including the tuning information as domain knowledge between equivalent trials. Shorter window sizes performed worse than longer time windows, and per-class F1-scores suggest complex spectro-temporal time variant changes caused by dis-uniform membrane tension, which could have implications for performers wishing to broaden the sonic capabilities of the instrument.]]
UR - https://hdl.handle.net/1959.7/uws:75230
U2 - 10.1121/2.0001828
DO - 10.1121/2.0001828
M3 - Conference Paper
SP - 1
EP - 13
BT - Proceedings of Meeting on Acoustics, Volume 52, Issue 1, Number 035002: 185th Meeting of Acoustical Society of America, 4-8 December 2023, Sydney, Australia
PB - Acoustical Society of America
T2 - Meeting of the Acoustical Society of America
Y2 - 4 December 2023
ER -