CVHCAug 13, 2024

Visual Neural Decoding via Improved Visual-EEG Semantic Consistency

arXiv:2408.06788v122 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the challenge of improving decoding accuracy for visual experiences from brain activity, which is an incremental advance in brain-computer interfaces and neuroscience applications.

The paper tackled the problem of mapping bias and semantic inconsistency in visual neural decoding from EEG signals by constructing a joint semantic space and using a decoupling framework to align visual and EEG features, achieving state-of-the-art results in zero-shot decoding tasks.

Visual neural decoding refers to the process of extracting and interpreting original visual experiences from human brain activity. Recent advances in metric learning-based EEG visual decoding methods have delivered promising results and demonstrated the feasibility of decoding novel visual categories from brain activity. However, methods that directly map EEG features to the CLIP embedding space may introduce mapping bias and cause semantic inconsistency among features, thereby degrading alignment and impairing decoding performance. To further explore the semantic consistency between visual and neural signals. In this work, we construct a joint semantic space and propose a Visual-EEG Semantic Decouple Framework that explicitly extracts the semantic-related features of these two modalities to facilitate optimal alignment. Specifically, a cross-modal information decoupling module is introduced to guide the extraction of semantic-related information from modalities. Then, by quantifying the mutual information between visual image and EEG features, we observe a strong positive correlation between the decoding performance and the magnitude of mutual information. Furthermore, inspired by the mechanisms of visual object understanding from neuroscience, we propose an intra-class geometric consistency approach during the alignment process. This strategy maps visual samples within the same class to consistent neural patterns, which further enhances the robustness and the performance of EEG visual decoding. Experiments on a large Image-EEG dataset show that our method achieves state-of-the-art results in zero-shot neural decoding tasks.

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