Domain Generalization in Biosignal Classification
Theekshana Dissanayake, Tharindu Fernando, Simon Denman, Houman, Ghaemmaghami, Sridha Sridharan, Clinton Fookes

TL;DR
This paper introduces a novel domain generalization approach for biosignal classification, using classifier fusion to improve performance on unseen domains, demonstrated on heart sound data with significant accuracy gains.
Contribution
It presents the first study on domain generalization for biosignal data, employing a basis domain representation and classifier fusion to handle domain shifts effectively.
Findings
Achieves up to 16% accuracy improvement on unseen domains.
Effectively simplifies domain generalization for biosignals.
Demonstrates robustness across multiple heart sound databases.
Abstract
Objective: When training machine learning models, we often assume that the training data and evaluation data are sampled from the same distribution. However, this assumption is violated when the model is evaluated on another unseen but similar database, even if that database contains the same classes. This problem is caused by domain-shift and can be solved using two approaches: domain adaptation and domain generalization. Simply, domain adaptation methods can access data from unseen domains during training; whereas in domain generalization, the unseen data is not available during training. Hence, domain generalization concerns models that perform well on inaccessible, domain-shifted data. Method: Our proposed domain generalization method represents an unseen domain using a set of known basis domains, afterwhich we classify the unseen domain using classifier fusion. To demonstrate our…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network
