Context-empowered Visual Attention Prediction in Pedestrian Scenarios
Igor Vozniak, Philipp Mueller, Lorena Hell, Nils Lipp, Ahmed, Abouelazm, Christian Mueller

TL;DR
This paper introduces Context-SalNET, a novel neural network architecture that models pedestrian attention considering context factors like urgency and safety, improving prediction accuracy in VR scenarios.
Contribution
The paper presents Context-SalNET, explicitly modeling context factors and uncertainty in pedestrian attention prediction, along with a new VR dataset for evaluation.
Findings
Context-SalNET outperforms existing saliency models.
The ew-MSE loss improves handling of sparse saliency maps.
The dataset enables better understanding of pedestrian attention in VR.
Abstract
Effective and flexible allocation of visual attention is key for pedestrians who have to navigate to a desired goal under different conditions of urgency and safety preferences. While automatic modelling of pedestrian attention holds great promise to improve simulations of pedestrian behavior, current saliency prediction approaches mostly focus on generic free-viewing scenarios and do not reflect the specific challenges present in pedestrian attention prediction. In this paper, we present Context-SalNET, a novel encoder-decoder architecture that explicitly addresses three key challenges of visual attention prediction in pedestrians: First, Context-SalNET explicitly models the context factors urgency and safety preference in the latent space of the encoder-decoder model. Second, we propose the exponentially weighted mean squared error loss (ew-MSE) that is able to better cope with the…
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Videos
Context-empowered Visual Attention Prediction in Pedestrian Scenarios· youtube
Taxonomy
TopicsVisual Attention and Saliency Detection · Advanced Neural Network Applications · Video Surveillance and Tracking Methods
