Predicting Goal-directed Attention Control Using Inverse-Reinforcement Learning
This work addresses how goal states control attention in psychology and computer vision, but it is incremental as it applies an existing machine learning method to a new behavioral dataset.
The study tackled the problem of predicting goal-directed visual attention by using inverse-reinforcement learning on a large dataset of 16,184 fixations from people searching for microwaves or clocks in images, achieving predictions of search efficiency and fixation-density maps for new searchers with multiple metrics.
Understanding how goal states control behavior is a question ripe for interrogation by new methods from machine learning. These methods require large and labeled datasets to train models. To annotate a large-scale image dataset with observed search fixations, we collected 16,184 fixations from people searching for either microwaves or clocks in a dataset of 4,366 images (MS-COCO). We then used this behaviorally-annotated dataset and the machine learning method of Inverse-Reinforcement Learning (IRL) to learn target-specific reward functions and policies for these two target goals. Finally, we used these learned policies to predict the fixations of 60 new behavioral searchers (clock = 30, microwave = 30) in a disjoint test dataset of kitchen scenes depicting both a microwave and a clock (thus controlling for differences in low-level image contrast). We found that the IRL model predicted behavioral search efficiency and fixation-density maps using multiple metrics. Moreover, reward maps from the IRL model revealed target-specific patterns that suggest, not just attention guidance by target features, but also guidance by scene context (e.g., fixations along walls in the search of clocks). Using machine learning and the psychologically-meaningful principle of reward, it is possible to learn the visual features used in goal-directed attention control.