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Future Optical Flow Prediction Improves Robot Control & Video Generation

Published: January 15, 2026 | arXiv ID: 2601.10781v1

By: Kanchana Ranasinghe , Honglu Zhou , Yu Fang and more

Potential Business Impact:

Predicts future movement in videos using words.

Business Areas:
Image Recognition Data and Analytics, Software

Future motion representations, such as optical flow, offer immense value for control and generative tasks. However, forecasting generalizable spatially dense motion representations remains a key challenge, and learning such forecasting from noisy, real-world data remains relatively unexplored. We introduce FOFPred, a novel language-conditioned optical flow forecasting model featuring a unified Vision-Language Model (VLM) and Diffusion architecture. This unique combination enables strong multimodal reasoning with pixel-level generative fidelity for future motion prediction. Our model is trained on web-scale human activity data-a highly scalable but unstructured source. To extract meaningful signals from this noisy video-caption data, we employ crucial data preprocessing techniques and our unified architecture with strong image pretraining. The resulting trained model is then extended to tackle two distinct downstream tasks in control and generation. Evaluations across robotic manipulation and video generation under language-driven settings establish the cross-domain versatility of FOFPred, confirming the value of a unified VLM-Diffusion architecture and scalable learning from diverse web data for future optical flow prediction.

Page Count
19 pages

Category
Computer Science:
CV and Pattern Recognition