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Photorealistic Image Reconstruction from Hybrid Intensity and Event based Sensor

2019-02-11 07:30:42
Prasan A Shedligeri, Kaushik Mitra

Abstract

Event sensors output a stream of asynchronous brightness changes (called ``events'') at a very high temporal rate. Previous works on recovering the lost intensity information from the event sensor data have heavily relied on the event stream, which makes the reconstructed images non-photorealistic and also susceptible to noise in the event stream. We propose to reconstruct photorealistic intensity images from a hybrid sensor consisting of a low frame rate conventional camera, which has the scene texture information, along with the event sensor. To accomplish our task, we warp the low frame rate intensity images to temporally dense locations of the event data by estimating a spatially dense scene depth and temporally dense sensor ego-motion. The results obtained from our algorithm are more photorealistic compared to any of the previous state-of-the-art algorithms. We also demonstrate our algorithm's robustness to abrupt camera motion and noise in the event sensor data.

Abstract (translated)

URL

https://arxiv.org/abs/1805.06140

PDF

https://arxiv.org/pdf/1805.06140.pdf


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