CVSep 28, 2021

Motion Deblurring with Real Events

arXiv:2109.13695v1110 citations
Originality Incremental advance
AI Analysis

It addresses motion blur in real-world scenarios for computer vision applications, but is incremental as it builds on existing event-based methods.

The paper tackles motion deblurring using real-world events in a self-supervised framework, achieving remarkable performance by bridging the gap between synthetic and real-world data.

In this paper, we propose an end-to-end learning framework for event-based motion deblurring in a self-supervised manner, where real-world events are exploited to alleviate the performance degradation caused by data inconsistency. To achieve this end, optical flows are predicted from events, with which the blurry consistency and photometric consistency are exploited to enable self-supervision on the deblurring network with real-world data. Furthermore, a piece-wise linear motion model is proposed to take into account motion non-linearities and thus leads to an accurate model for the physical formation of motion blurs in the real-world scenario. Extensive evaluation on both synthetic and real motion blur datasets demonstrates that the proposed algorithm bridges the gap between simulated and real-world motion blurs and shows remarkable performance for event-based motion deblurring in real-world scenarios.

Foundations

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