Robust and Interpretable Temporal Convolution Network for Event Detection in Lung Sound Recordings
Tharindu Fernando, Sridha Sridharan, Simon Denman, Houman, Ghaemmaghami, Clinton Fookes

TL;DR
This paper introduces a lightweight, interpretable Temporal Convolution Network framework for accurate, real-time lung sound event detection, outperforming existing methods and suitable for deployment on end-user devices.
Contribution
The paper presents a novel multi-branch TCN architecture with a fusion strategy, enhancing interpretability and robustness in lung sound event detection.
Findings
Outperforms state-of-the-art in multiple benchmarks
Provides real-time predictions on end-user devices
Offers a comprehensive interpretability pipeline
Abstract
This paper proposes a novel framework for lung sound event detection, segmenting continuous lung sound recordings into discrete events and performing recognition on each event. Exploiting the lightweight nature of Temporal Convolution Networks (TCNs) and their superior results compared to their recurrent counterparts, we propose a lightweight, yet robust, and completely interpretable framework for lung sound event detection. We propose the use of a multi-branch TCN architecture and exploit a novel fusion strategy to combine the resultant features from these branches. This not only allows the network to retain the most salient information across different temporal granularities and disregards irrelevant information, but also allows our network to process recordings of arbitrary length. Results: The proposed method is evaluated on multiple public and in-house benchmarks of irregular and…
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Taxonomy
TopicsPhonocardiography and Auscultation Techniques · Music and Audio Processing · Respiratory and Cough-Related Research
MethodsConvolution
