CVJun 27, 2025

3D-Telepathy: Reconstructing 3D Objects from EEG Signals

arXiv:2506.21843v11 citationsh-index: 12IJCNN
Originality Incremental advance
AI Analysis

This addresses a challenging task in Brain-Computer Interfaces for applications like aiding individuals with communication disorders, though it appears incremental as it builds on existing methods like stable diffusion and neural radiation fields.

The paper tackles the problem of reconstructing 3D objects from EEG signals, which has been limited to 2D image reconstruction previously, and achieves successful generation of 3D objects with similar content and structure using a novel EEG encoder architecture and training strategy.

Reconstructing 3D visual stimuli from Electroencephalography (EEG) data holds significant potential for applications in Brain-Computer Interfaces (BCIs) and aiding individuals with communication disorders. Traditionally, efforts have focused on converting brain activity into 2D images, neglecting the translation of EEG data into 3D objects. This limitation is noteworthy, as the human brain inherently processes three-dimensional spatial information regardless of whether observing 2D images or the real world. The neural activities captured by EEG contain rich spatial information that is inevitably lost when reconstructing only 2D images, thus limiting its practical applications in BCI. The transition from EEG data to 3D object reconstruction faces considerable obstacles. These include the presence of extensive noise within EEG signals and a scarcity of datasets that include both EEG and 3D information, which complicates the extraction process of 3D visual data. Addressing this challenging task, we propose an innovative EEG encoder architecture that integrates a dual self-attention mechanism. We use a hybrid training strategy to train the EEG Encoder, which includes cross-attention, contrastive learning, and self-supervised learning techniques. Additionally, by employing stable diffusion as a prior distribution and utilizing Variational Score Distillation to train a neural radiation field, we successfully generate 3D objects with similar content and structure from EEG data.

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