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Sound Event Detection with Adaptive Frequency Selection

17 May 2021
Zhepei Wang
Jonah Casebeer
Adam Clemmitt
Efthymios Tzinis
Paris Smaragdis
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Abstract

In this work, we present HIDACT, a novel network architecture for adaptive computation for efficiently recognizing acoustic events. We evaluate the model on a sound event detection task where we train it to adaptively process frequency bands. The model learns to adapt to the input without requesting all frequency sub-bands provided. It can make confident predictions within fewer processing steps, hence reducing the amount of computation. Experimental results show that HIDACT has comparable performance to baseline models with more parameters and higher computational complexity. Furthermore, the model can adjust the amount of computation based on the data and computational budget.

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