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See, Imagine, Plan: Discovering and Hallucinating Tasks from a Single Image

Neural Information Processing Systems (NeurIPS), 2024
18 March 2024
Chenyang Ma
Kai Lu
Ta-Ying Cheng
Niki Trigoni
Andrew Markham
    LRM
ArXiv (abs)PDFHTML
Abstract

Humans can not only recognize and understand the world in its current state but also envision future scenarios that extend beyond immediate perception. To resemble this profound human capacity, we introduce zero-shot task hallucination -- given a single RGB image of any scene comprising unknown environments and objects, our model can identify potential tasks and imagine their execution in a vivid narrative, realized as a video. We develop a modular pipeline that progressively enhances scene decomposition, comprehension, and reconstruction, incorporating VLM for dynamic interaction and 3D motion planning for object trajectories. Our model can discover diverse tasks, with the generated task videos demonstrating realistic and compelling visual outcomes that are understandable by both machines and humans. Project Page: https://dannymcy.github.io/zeroshot_task_hallucination/

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