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Interpretable Visual Reasoning via Induced Symbolic Space
[article]
2021
arXiv
pre-print
We study the problem of concept induction in visual reasoning, i.e., identifying concepts and their hierarchical relationships from question-answer pairs associated with images; and achieve an interpretable model via working on the induced symbolic concept space. To this end, we first design a new framework named object-centric compositional attention model (OCCAM) to perform the visual reasoning task with object-level visual features. Then, we come up with a method to induce concepts of
arXiv:2011.11603v2
fatcat:wbpsqkoeovf6hmjc53dttump6u