NCAICVOCJul 27, 2023

Cortex Inspired Learning to Recover Damaged Signal Modality with ReD-SOM Model

arXiv:2307.15095v12 citationsh-index: 16
Originality Incremental advance
AI Analysis

This addresses the challenge of recovering damaged signals in multimodal AI systems, though it appears incremental as it combines existing techniques like VAEs and SOMs.

The paper tackles the problem of reconstructing lost data modalities using information from another modality, inspired by the McGurk Effect, and demonstrates improved signal reconstruction quality on a multimodal dataset, especially under significant distortion.

Recent progress in the fields of AI and cognitive sciences opens up new challenges that were previously inaccessible to study. One of such modern tasks is recovering lost data of one modality by using the data from another one. A similar effect (called the McGurk Effect) has been found in the functioning of the human brain. Observing this effect, one modality of information interferes with another, changing its perception. In this paper, we propose a way to simulate such an effect and use it to reconstruct lost data modalities by combining Variational Auto-Encoders, Self-Organizing Maps, and Hebb connections in a unified ReD-SOM (Reentering Deep Self-organizing Map) model. We are inspired by human's capability to use different zones of the brain in different modalities, in case of having a lack of information in one of the modalities. This new approach not only improves the analysis of ambiguous data but also restores the intended signal! The results obtained on the multimodal dataset demonstrate an increase of quality of the signal reconstruction. The effect is remarkable both visually and quantitatively, specifically in presence of a significant degree of signal's distortion.

Foundations

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