What If Image Self-Similarity Can Be Better Exploited in Data Fidelity Terms?
Ivan Pereira-S�nchez, Julia Navarro, Joan Duran
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This paper presents ?Bina-Rep?, a simple representation method that converts asynchronous streams of events from event cameras to a sequence of sparse and expressive event frames. By representing multiple binary event images as a single frame of $N$-bit numbers, our method is able to obtain sparser and more expressive event frames thanks to the retained information about event orders in the original stream. Coupled with our proposed model based on a convolutional neural network, the reported results achieve state-of-the-art performance and repeatedly outperforms other common event representation methods. Our approach also shows competitive robustness against common image corruptions, compared to other representation techniques.