AutoSIGHT: Automatic Eye Tracking-based System for Immediate Grading of Human experTise
Dowling, Byron, Probcin, Jozef, Czajka, Adam
–arXiv.org Artificial Intelligence
--Can we teach machines to assess the expertise of humans solving visual tasks automatically based on eye tracking features? This paper proposes AutoSIGHT, Automatic System for Immediate Grading of Human experTise, that classifies expert and non-expert performers, and builds upon an ensemble of features extracted from eye tracking data while the performers were solving a visual task. Results on the task of iris Presentation Attack Detection (PAD) used for this study show that with a small evaluation window of just 5 seconds, AutoSIGHT achieves an average average Area Under the ROC curve performance of 0.751 in subject-disjoint train-test regime, indicating that such detection is viable. Furthermore, when a larger evaluation window of up to 30 seconds is available, the Area Under the ROC curve (AUROC) increases to 0.8306, indicating the model is effectively leveraging more information at a cost of slightly delayed decisions. This work opens new areas of research on how to incorporate the automatic weighing of human and machine expertise into human-AI pairing setups, which need to react dynamically to nonstationary expertise distribution between the human and AI players ( e.g., when the experts need to be replaced, or the task at hand changes rapidly). Along with this paper, we offer the eye tracking data used in this study collected from 6 experts and 53 non-experts solving iris PAD visual task. As Artificial Intelligence (AI) systems become more commonplace in everyday tasks, companies and researchers alike understand that a lack of trust in a model or the validity of a model's decision is a major obstacle to wide-scale adoption [1]. This has led to the sub-field of Trustworthy Artificial Intelligence (T AI) that focuses on defining the core principles that AI systems should satisfy to increase trust and adoption. One such principle is that good models should generalize well to unseen data types (that is, operate well in an open set recognition regime). Another principle is that there should exist a seamless and effective collaboration between the AI and humans solving the tasks jointly, in which the capabilities of both sides are appropriately and automatically assessed, and incorporated into the decision-making process.
arXiv.org Artificial Intelligence
Aug-5-2025
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