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Unsupervised Optical Flow Estimation with Dynamic Timing Representation for Spike Camera

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Efficiently selecting an appropriate spike stream data length to extract precise information is the key to the spike vision tasks. To address this issue, we propose a dynamic timing representation for spike streams. Based on multi-layers architecture, it applies dilated convolutions on temporal dimension to extract features on multi-temporal scales with few parameters. And we design layer attention to dynamically fuse these features. Moreover, we propose an unsupervised learning method for optical flow estimation in a spike-based manner to break the dependence on labeled data. In addition, to verify the robustness, we also build a spike-based synthetic validation dataset for extreme scenarios in autonomous driving, denoted as SSES dataset. It consists of various corner cases. Experiments show that our method can predict optical flow from spike streams in different high-speed scenes, including real scenes. For instance, our method gets $15\%$ and $19\%$ error reduction from the best spike-based work, SCFlow, in $\Delta t=10$ and $\Delta t=20$ respectively which are the same settings as the previous works.

Lujie Xia, Ziluo Ding, Rui Zhao, Jiyuan Zhang, Lei Ma, Zhaofei Yu, Tiejun Huang, Ruiqin Xiong• 2023

Related benchmarks

TaskDatasetResultRank
Optical Flow EstimationPHM delta_t=10 1.0 (test)
Ball Error0.43
13
Optical Flow EstimationPHM delta t = 20
AEE (Ball)0.792
9
Optical Flow EstimationPHM delta_t=20 1.0 (test)
Ball Error1.117
4
Optical Flow EstimationSSES delta t=10 (test)
Mean AEE2.967
3
Optical Flow EstimationSSES (delta t=20) (test)
Mean AEE2.234
3
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