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Vector Semiotic Model for Visual Question Answering

Authors :
Aleksandr I. Panov
Alexey K. Kovalev
Evgeny Osipov
Makhmud Shaban
Source :
Cognitive Systems Research. 71:52-63
Publication Year :
2022
Publisher :
Elsevier BV, 2022.

Abstract

In this paper, we propose a Vector Semiotic Model as a possible solution to the symbol grounding problem in the context of Visual Question Answering. The Vector Semiotic Model combines the advantages of a Semiotic Approach implemented in the Sign-Based World Model and Vector Symbolic Architectures. The Sign-Based World Model represents information about a scene depicted on an input image in a structured way and grounds abstract objects in an agent’s sensory input. We use the Vector Symbolic Architecture to represent the elements of the Sign-Based World Model on a computational level. Properties of a high-dimensional space and operations defined for high-dimensional vectors allow encoding the whole scene into a high-dimensional vector with the preservation of the structure. That leads to the ability to apply explainable reasoning to answer an input question. We conducted experiments are on a CLEVR dataset and show results comparable to the state of the art. The proposed combination of approaches, first, leads to the possible solution of the symbol-grounding problem and, second, allows expanding current results to other intelligent tasks (collaborative robotics, embodied intellectual assistance, etc.).

Details

ISSN :
13890417
Volume :
71
Database :
OpenAIRE
Journal :
Cognitive Systems Research
Accession number :
edsair.doi...........f8bdacb421617b266ca98bea9cfc0098