CVLGFeb 11, 2020

Toward Improving the Evaluation of Visual Attention Models: a Crowdsourcing Approach

arXiv:2002.04407v26 citations
AI Analysis

This work addresses the evaluation methodology for visual attention models, which is incremental as it builds on existing metrics but introduces new measures for temporal and dynamic aspects.

The paper tackled the problem of evaluating visual attention models by highlighting limitations in current metrics and introducing a new statistical measure for eye movement dynamics, finding that unsupervised gravitational models outperform deep learning models in capturing dynamics.

Human visual attention is a complex phenomenon. A computational modeling of this phenomenon must take into account where people look in order to evaluate which are the salient locations (spatial distribution of the fixations), when they look in those locations to understand the temporal development of the exploration (temporal order of the fixations), and how they move from one location to another with respect to the dynamics of the scene and the mechanics of the eyes (dynamics). State-of-the-art models focus on learning saliency maps from human data, a process that only takes into account the spatial component of the phenomenon and ignore its temporal and dynamical counterparts. In this work we focus on the evaluation methodology of models of human visual attention. We underline the limits of the current metrics for saliency prediction and scanpath similarity, and we introduce a statistical measure for the evaluation of the dynamics of the simulated eye movements. While deep learning models achieve astonishing performance in saliency prediction, our analysis shows their limitations in capturing the dynamics of the process. We find that unsupervised gravitational models, despite of their simplicity, outperform all competitors. Finally, exploiting a crowd-sourcing platform, we present a study aimed at evaluating how strongly the scanpaths generated with the unsupervised gravitational models appear plausible to naive and expert human observers.

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