Event stream denoising method based on spatio-temporal density and time sequence

Author:

Jiang HaiYan1,Wang XiaoShuang1,Tang Wei1,Song QingHui1,Song QingJun1,Hao WenChao1

Affiliation:

1. Shandong University of Science and Technology

Abstract

Abstract

Event camera is a neuromimetic sensor inspired by the human retinal imaging principle, which has the advantages of high dynamic range, high temporal resolution and low power consumption. Due to the interference of hardware and software and other factors, the event stream output from the event camera usually contains a large amount of noise, and traditional denoising algorithms cannot be applied to the event stream. To better deal with different kinds of noise and enhance the robustness of the denoising algorithm, based on the spatio-temporal distribution characteristics of effective events and noise, an event stream noise reduction and visualization algorithm is proposed. The event stream enters the fine filtering after filtering the BA noise based on spatio-temporal density, the fine filtering performs temporal analysis on the event pixels and the neighboring pixels to filter out the hot noise. The proposed visualization algorithm adaptively overlaps the events of the previous frame according to the event density difference to obtain clear and coherent event frames. We conducted denoising and visualization experiments on real scenes and public datasets respectively, and the experiments show that our algorithm is effective in filtering noise and obtaining clear and coherent event frames.

Publisher

Springer Science and Business Media LLC

Reference40 articles.

1. Delbrück, T., Linares-Barranco, B., Culurciello, E., & Posch, C. Activity-driven, event-based vision sensors. Proceedings of 2010 IEEE International Symposium on Circuits and Systems, Paris, France. 2426–2429(2010).

2. Event-Based Vision: A Survey;Gallego G;IEEE Transactions on Pattern Analysis and Machine Intelligence,2022

3. Scheerlinck, C., Rebecq, H., Gehrig, D., Barnes, N., Mahony, R., & Scaramuzza, D. Fast Image Reconstruction with an Event Camera. IEEE Winter Conference on Applications of Computer Vision. 156–163(2020).

4. Pan, L., Scheerlinck, C., Yu, X., Hartley, R., Liu, M., & Dai, Y. Bringing a Blurry Frame Alive at High Frame-Rate With an Event Camera. IEEE/CVF Conference on Computer Vision and Pattern Recognition. 6813–6822(2019).

5. Scheerlinck, C., Barnes, N., & Mahony, R. Continuous-time intensity estimation using event cameras. Proc. Asian Conf. Comput. Vis. 308–324(2018).

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