ObjectVisA-120: Object-based Visual Attention Prediction in Interactive Street-crossing Environments
Igor Vozniak, Philipp Müller, Nils Lipp, Janis Sprenger, Konstantin Poddubnyy, Davit Hovhannisyan, Christian Müller, Andreas Bulling, Philipp Slusallek
Proc. IEEE Intelligent Vehicles Symposium (IV), 2026.
Abstract
The object-based nature of human visual attention is well-known in cognitive science, but has only played a minor role in computational visual attention models so far. This is mainly due to a lack of suitable datasets and evaluation metrics for object-based attention. To address these limitations, we present ObjectVisA-120 - a novel 120-participant dataset of spatial street-crossing navigation in virtual reality specifically geared to object-based attention evaluations. The uniqueness of the presented dataset lies in the ethical and safety affiliated challenges that make collecting comparable data in real-world environments highly difficult. ObjectVisA-120 not only features accurate gaze data and a complete state-space representation of objects in the virtual environment, but it also offers variable scenario complexities and rich annotations, including panoptic segmentation, depth information, and vehicle keypoints. We further propose object-based similarity (oSIM) as a novel metric to evaluate the performance of object-based visual attention models, a previously unexplored performance characteristic. Our evaluations show that explicitly optimising for object-based attention not only improves oSIM performance but also leads to an improved model performance on common metrics. In addition, we present SUMGraph, a Mamba U-Net-based model, which explicitly encodes critical scene objects (vehicles) in a graph representation, leading to further performance improvements over several state-of-the-art visual attention prediction methods. The dataset, code and models will be publicly released.Links
BibTeX
@inproceedings{vozniak26_iv,
title = {{{ObjectVisA-120}}: {{Object-based Visual Attention Prediction in Interactive Street-crossing Environments}}},
booktitle = {Proc. IEEE Intelligent Vehicles Symposium (IV)},
author = {Vozniak, Igor and Müller, Philipp and Lipp, Nils and Sprenger, Janis and Poddubnyy, Konstantin and Hovhannisyan, Davit and Müller, Christian and Bulling, Andreas and Slusallek, Philipp},
year = {2026},
doi = {}
}