Event-Assisted Recurrent Network for Arbitrary-Temporal-Scale Blurry Image Unfolding
IEEE Transactions on Neural Networks and Learning Systems(2024)CCF BSCI 1区
Dalian Univ Technol
Abstract
Recovering a sequence of latent sharp frames from a motion-blurred image is a challenging task. The bio-inspired event camera, which produces an event stream with high temporal resolution, has been exploited to promote the recovery performance. However, recovering sharp sequences with arbitrary temporal scales has been ignored for a long time. Existing works can only recover a fixed number of latent frames from a blurry image once they are trained. In this work, we propose an event-assisted blurry image unfolding framework that can work across arbitrary temporal scales. A bi-directional recurrent network is employed to encode events corresponding to each latent frame, which gathers information over all events in the exposure time. Features of both the blurry image and events are fused together and fed to a bi-directional latent sequence decoder (BiLSD) to produce a sequence of latent sharp frames. Extensive experiments show that the proposed method not only performs favorably against state-of-the-art methods in recovering a fixed number of frames from a blurry image but can be well generalized to arbitrary-temporal-scale blurry image unfolding.
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Key words
Bi-directional LSTM,blurry image unfolding,event sensor,Bi-directional LSTM,blurry image unfolding,event sensor
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