Low-Complexity Acoustic Scene Classification in DCASE 2022 Challenge
Martin Morato, Irene; Paissan, Francesco; Ancilotto, Alberto; Heittola, Toni; Mesaros, Annamaria; Farella, Elisabetta; Brutti, Alessio; Virtanen, Tuomas (2022-11-03)
URI
https://arxiv.org/abs/2206.03835https://dcase.community/documents/workshop2022/proceedings/DCASE2022Workshop_Martin-Morato_32.pdf
Martin Morato, Irene
Paissan, Francesco
Ancilotto, Alberto
Heittola, Toni
Mesaros, Annamaria
Farella, Elisabetta
Brutti, Alessio
Virtanen, Tuomas
03.11.2022
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202302021992
https://urn.fi/URN:NBN:fi:tuni-202302021992
Kuvaus
Peer reviewed
Tiivistelmä
This paper presents an analysis of the Low-Complexity Acoustic Scene Classification task in DCASE 2022 Challenge. The task was a continuation from the previous years, but the low-complexity requirements were changed to the following: the maximum number of allowed parameters, including the zero-valued ones, was 128 K, with parameters being represented using INT8 numerical format; and the maximum number of multiply-accumulate operations at inference time was 30 million. Despite using the same previous year dataset, the audio samples have been shortened to 1 second instead of 10 second for this year challenge. The provided baseline system is a convolutional neural network which employs post-training quantization of parameters, resulting in 46.5 K parameters, and 29.23 million multiply-and-accumulate operations (MMACs). Its performance on the evaluation data is 44.2% accuracy and 1.532 log-loss. In comparison, the top system in the challenge obtained an accuracy of 59.6% and a log loss of 1.091, having 121 K parameters and 28 MMACs. The task received 48 submissions from 19 different teams, most of which outperformed the baseline system.
Kokoelmat
- TUNICRIS-julkaisut [20153]