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UniAR: A Unified model for predicting human Attention and Responses on visual content

About

Progress in human behavior modeling involves understanding both implicit, early-stage perceptual behavior, such as human attention, and explicit, later-stage behavior, such as subjective preferences or likes. Yet most prior research has focused on modeling implicit and explicit human behavior in isolation; and often limited to a specific type of visual content. We propose UniAR -- a unified model of human attention and preference behavior across diverse visual content. UniAR leverages a multimodal transformer to predict subjective feedback, such as satisfaction or aesthetic quality, along with the underlying human attention or interaction heatmaps and viewing order. We train UniAR on diverse public datasets spanning natural images, webpages, and graphic designs, and achieve SOTA performance on multiple benchmarks across various image domains and behavior modeling tasks. Potential applications include providing instant feedback on the effectiveness of UIs/visual content, and enabling designers and content-creation models to optimize their creation for human-centric improvements.

Peizhao Li, Junfeng He, Gang Li, Rachit Bhargava, Shaolei Shen, Nachiappan Valliappan, Youwei Liang, Hongxiang Gu, Venky Ramachandran, Golnaz Farhadi, Yang Li, Kai J Kohlhoff, Vidhya Navalpakkam• 2023

Related benchmarks

TaskDatasetResultRank
Saliency PredictionSALICON (test)
NSS1.947
25
Blind Image Quality AssessmentKonIQ-10k (test)
SRCC0.905
23
Saliency PredictionOSIE Natural scene
CC0.754
7
Saliency Heatmap PredictionWS-Saliency
CC0.827
6
Saliency Heatmap PredictionSalicon 2017
CC0.9
6
Importance Heatmap PredictionImp1k
CC0.904
5
Saliency Heatmap PredictionMobile UI
CC0.879
5
Saliency Heatmap PredictionCAT2000
CC0.87
5
Scanpath PredictionCOCO-Search18 1.0 (test)
SemSS0.521
5
Scanpath PredictionWS Scanpath 1.0 (test)
Sequence Score0.267
5
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