Scientific Reports (Jan 2022)

Modulating human memory for complex scenes with artificially generated images

  • Cameron Kyle-Davidson,
  • Adrian G. Bors,
  • Karla K. Evans

DOI
https://doi.org/10.1038/s41598-022-05623-y
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 15

Abstract

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Abstract Visual memory schemas (VMS) are two-dimensional memorability maps that capture the most memorable regions of a given scene, predicting with a high degree of consistency human observer’s memory for the same images. These maps are hypothesized to correlate with a mental framework of knowledge employed by humans to encode visual memories. In this study, we develop a generative model we term ‘MEMGAN’ constrained by extracted visual memory schemas that generates completely new complex scene images that vary based on their degree of predicted memorability. The generated populations of high and low memorability images are then evaluated for their memorability using a human observer experiment. We gather VMS maps for these generated images from participants in the memory experiment and compare these with the intended target VMS maps. Following the evaluation of observers’ memory performance through both VMS-defined memorability and hit rate, we find significantly superior memory performance by human observers for the highly memorable generated images compared to poorly memorable. Implementing and testing a construct from cognitive science allows us to generate images whose memorability we can manipulate at will, as well as providing a tool for further study of mental schemas in humans.