Scientific Reports (Apr 2021)

COCO-Search18 fixation dataset for predicting goal-directed attention control

  • Yupei Chen,
  • Zhibo Yang,
  • Seoyoung Ahn,
  • Dimitris Samaras,
  • Minh Hoai,
  • Gregory Zelinsky

DOI
https://doi.org/10.1038/s41598-021-87715-9
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 11

Abstract

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Abstract Attention control is a basic behavioral process that has been studied for decades. The currently best models of attention control are deep networks trained on free-viewing behavior to predict bottom-up attention control – saliency. We introduce COCO-Search18, the first dataset of laboratory-quality goal-directed behavior large enough to train deep-network models. We collected eye-movement behavior from 10 people searching for each of 18 target-object categories in 6202 natural-scene images, yielding $$\sim$$ ∼ 300,000 search fixations. We thoroughly characterize COCO-Search18, and benchmark it using three machine-learning methods: a ResNet50 object detector, a ResNet50 trained on fixation-density maps, and an inverse-reinforcement-learning model trained on behavioral search scanpaths. Models were also trained/tested on images transformed to approximate a foveated retina, a fundamental biological constraint. These models, each having a different reliance on behavioral training, collectively comprise the new state-of-the-art in predicting goal-directed search fixations. Our expectation is that future work using COCO-Search18 will far surpass these initial efforts, finding applications in domains ranging from human-computer interactive systems that can anticipate a person’s intent and render assistance to the potentially early identification of attention-related clinical disorders (ADHD, PTSD, phobia) based on deviation from neurotypical fixation behavior.