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Do sound event representations generalize to other audio tasks? A case study in audio transfer learning

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Transfer learning is critical for efficient information transfer across multiple related learning problems. A simple, yet effective transfer learning approach utilizes deep neural networks trained on a large-scale task for feature extraction. Such representations are then used to learn related downstream tasks. In this paper, we investigate transfer learning capacity of audio representations obtained from neural networks trained on a large-scale sound event detection dataset. We build and evaluate these representations across a wide range of other audio tasks, via a simple linear classifier transfer mechanism. We show that such simple linear transfer is already powerful enough to achieve high performance on the downstream tasks. We also provide insights into the attributes of sound event representations that enable such efficient information transfer.

Anurag Kumar, Yun Wang, Vamsi Krishna Ithapu, Christian Fuegen• 2021

Related benchmarks

TaskDatasetResultRank
Audio ClassificationESC-50 (test)
Accuracy94.1
84
TaggingMTT Magnatagatune (test)
MTT AUC91.5
13
Sound Event RecognitionFSDKaggle Noisy set 2019 (test)
lwlrap0.51
11
Action RecognitionKinetics-700 (test)
Accuracy18
11
Sound EventsFSDKaggle (curated)
lwlrap72.8
3
Acoustic ScenesDCASE Task 1a 2019 (test)
Accuracy68
3
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