SDAIASSPMay 30, 2023

E-PANNs: Sound Recognition Using Efficient Pre-trained Audio Neural Networks

arXiv:2305.18665v19 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This work addresses deployment challenges for audio tagging on resource-constrained devices, such as edge sensors, but is incremental as it builds on existing PANNs with pruning.

The paper tackled the problem of high computational complexity and large storage requirements in pre-trained audio neural networks (PANNs) by pruning redundant parameters, resulting in E-PANNs that require 36% less computations and 70% less memory while slightly improving sound recognition performance.

Sounds carry an abundance of information about activities and events in our everyday environment, such as traffic noise, road works, music, or people talking. Recent machine learning methods, such as convolutional neural networks (CNNs), have been shown to be able to automatically recognize sound activities, a task known as audio tagging. One such method, pre-trained audio neural networks (PANNs), provides a neural network which has been pre-trained on over 500 sound classes from the publicly available AudioSet dataset, and can be used as a baseline or starting point for other tasks. However, the existing PANNs model has a high computational complexity and large storage requirement. This could limit the potential for deploying PANNs on resource-constrained devices, such as on-the-edge sound sensors, and could lead to high energy consumption if many such devices were deployed. In this paper, we reduce the computational complexity and memory requirement of the PANNs model by taking a pruning approach to eliminate redundant parameters from the PANNs model. The resulting Efficient PANNs (E-PANNs) model, which requires 36\% less computations and 70\% less memory, also slightly improves the sound recognition (audio tagging) performance. The code for the E-PANNs model has been released under an open source license.

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