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GCT: Gated Contextual Transformer for Sequential Audio Tagging

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arxiv 2210.12541 v1 pith:4QXH26YM submitted 2022-10-22 cs.SD eess.AS

GCT: Gated Contextual Transformer for Sequential Audio Tagging

classification cs.SD eess.AS
keywords audiocontextualinformationctransformereventsgatedsequentialtagging
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Audio tagging aims to assign predefined tags to audio clips to indicate the class information of audio events. Sequential audio tagging (SAT) means detecting both the class information of audio events, and the order in which they occur within the audio clip. Most existing methods for SAT are based on connectionist temporal classification (CTC). However, CTC cannot effectively capture connections between events due to the conditional independence assumption between outputs at different times. The contextual Transformer (cTransformer) addresses this issue by exploiting contextual information in SAT. Nevertheless, cTransformer is also limited in exploiting contextual information as it only uses forward information in inference. This paper proposes a gated contextual Transformer (GCT) with forward-backward inference (FBI). In addition, a gated contextual multi-layer perceptron (GCMLP) block is proposed in GCT to improve the performance of cTransformer structurally. Experiments on two real-life audio datasets show that the proposed GCT with GCMLP and FBI performs better than the CTC-based methods and cTransformer. To promote research on SAT, the manually annotated sequential labels for the two datasets are released.

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