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Back to Event Basics: Self-Supervised Learning of Image Reconstruction for Event Cameras via Photometric Constancy

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Event cameras are novel vision sensors that sample, in an asynchronous fashion, brightness increments with low latency and high temporal resolution. The resulting streams of events are of high value by themselves, especially for high speed motion estimation. However, a growing body of work has also focused on the reconstruction of intensity frames from the events, as this allows bridging the gap with the existing literature on appearance- and frame-based computer vision. Recent work has mostly approached this problem using neural networks trained with synthetic, ground-truth data. In this work we approach, for the first time, the intensity reconstruction problem from a self-supervised learning perspective. Our method, which leverages the knowledge of the inner workings of event cameras, combines estimated optical flow and the event-based photometric constancy to train neural networks without the need for any ground-truth or synthetic data. Results across multiple datasets show that the performance of the proposed self-supervised approach is in line with the state-of-the-art. Additionally, we propose a novel, lightweight neural network for optical flow estimation that achieves high speed inference with only a minor drop in performance.

F. Paredes-Vall\'es, G. C. H. E. de Croon• 2020

Related benchmarks

TaskDatasetResultRank
Video ReconstructionHQF
MSE0.082
38
Video ReconstructionMVSEC
MSE0.124
22
Optical FlowDSEC zurich_city_12_a
EPE2.62
12
Optical FlowDSEC All
EPE3.86
12
Optical FlowDSEC interlaken_00_b
EPE6.32
12
Optical FlowDSEC interlaken_01_a
EPE4.91
12
Optical FlowDSEC thun_01_a
EPE2.33
12
Optical FlowDSEC thun_01_b
EPE3.04
12
Optical FlowDSEC zurich_city_14_c
Endpoint Error (EPE)3.36
12
Optical FlowDSEC zurich_city_15_a
Endpoint Error (EPE)2.97
12
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