AI RESEARCH

Infinite Gaze Generation for Videos with Autoregressive Diffusion

arXiv CS.CV

ArXi:2603.24938v1 Announce Type: new Predicting human gaze in video is fundamental to advancing scene understanding and multimodal interaction. While traditional saliency maps provide spatial probability distributions and scanpaths offer ordered fixations, both abstractions often collapse the fine-grained temporal dynamics of raw gaze. Furthermore, existing models are typically constrained to short-term windows ($\approx$ 3-5s), failing to capture the long-range behavioral dependencies inherent in real-world content.