QTI Submission to DCASE 2021: residual normalization for device-imbalanced acoustic scene classification with efficient design
This technical report describes the details of our TASK1A submission of the DCASE2021 challenge. The goal of the task is to design an audio scene classification system for device-imbalanced datasets under the constraints of model complexity. This report introduces four methods to achieve the goal. F...
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Zusammenfassung: | This technical report describes the details of our TASK1A submission of the
DCASE2021 challenge. The goal of the task is to design an audio scene
classification system for device-imbalanced datasets under the constraints of
model complexity. This report introduces four methods to achieve the goal.
First, we propose Residual Normalization, a novel feature normalization method
that uses instance normalization with a shortcut path to discard unnecessary
device-specific information without losing useful information for
classification. Second, we design an efficient architecture, BC-ResNet-Mod, a
modified version of the baseline architecture with a limited receptive field.
Third, we exploit spectrogram-to-spectrogram translation from one to multiple
devices to augment training data. Finally, we utilize three model compression
schemes: pruning, quantization, and knowledge distillation to reduce model
complexity. The proposed system achieves an average test accuracy of 76.3% in
TAU Urban Acoustic Scenes 2020 Mobile, development dataset with 315k
parameters, and average test accuracy of 75.3% after compression to 61.0KB of
non-zero parameters. We extend this work to [1]. |
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DOI: | 10.48550/arxiv.2206.13909 |