Instance-Based Transfer Learning with Similarity-Aware Subject Selection for Cross-Subject SSVEP-Based BCIs
Ziwen Wang, Yue Zhang, Zhiqiang Zhang, Sheng Quan Xie, Alexander Lanzon, William P. Heath, Zhenhong Li

TL;DR
This paper introduces a transfer learning framework for SSVEP-based BCIs that selectively leverages source subject data based on similarity, improving recognition accuracy with less target data.
Contribution
It proposes iTRCA and SS-iTRCA frameworks that extract shared and individual features and select source subjects based on similarity to enhance transfer learning in BCIs.
Findings
iTRCA effectively captures shared and individual features.
SS-iTRCA improves source subject selection accuracy.
Frameworks outperform existing methods on multiple datasets.
Abstract
Steady-state visual evoked potential (SSVEP)-based brain-computer interfaces (BCIs) can achieve high recognition accuracy with sufficient training data. Transfer learning presents a promising solution to alleviate data requirements for the target subject by leveraging data from source subjects; however, effectively addressing individual variability among both target and source subjects remains a challenge. This paper proposes a novel transfer learning framework, termed instance-based task-related component analysis (iTRCA), which leverages knowledge from source subjects while considering their individual contributions. iTRCA extracts two types of features: (1) the subject-general feature, capturing shared information between source and target subjects in a common latent space, and (2) the subject-specific feature, preserving the unique characteristics of the target subject. To mitigate…
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