Abstract
Recovering high-quality video from sparse event streams is a challenging task. Regression methods often blur textures, while existing generative models struggle with long-term stability. We propose LongE2V, a novel approach that leverages pre-trained video diffusion priors to jointly handle event-based video reconstruction, prediction, and frame interpolation. By fine-tuning a foundational video model, our approach achieves high data efficiency and superior perceptual quality. We introduce Autoregressive Unrolling and Adaptive Context Switching to mitigate temporal drift in extremely long sequences. We also propose Reencoding Alignment with Cross Residual Correction to ensure precise bidirectional consistency during frame interpolation. Furthermore, Event Voxel Density Augmentation ensures robustness across varying sensor resolutions. Extensive experiments on real-world benchmarks demonstrate that LongE2V outperforms state-of-the-art methods across all three tasks, exhibiting exceptional temporal coherence and zero-shot generalization.
What Can LongE2V Do?
Reconstruction Results
Prediction Results
Frame Interpolation Results
BibTeX
@inproceedings{fan2026longe2v,
title = {LongE2V: Long-Horizon Event-based Video Reconstruction, Prediction, and Frame Interpolation with Video Diffusion Models},
author = {Fan, Cheng-De and Mu, Chun-Wei Tuan and Chang, Chen-Wei and Lin, Chin-Yang and Wu, Kun-Ru and Tseng, Yu-Chee and Liu, Yu-Lun},
booktitle = {SIGGRAPH Conference Papers},
year = {2026}
}