2023
DOI: 10.3390/mi14010203
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Event-Based Optical Flow Estimation with Spatio-Temporal Backpropagation Trained Spiking Neural Network

Abstract: The advantages of an event camera, such as low power consumption, large dynamic range, and low data redundancy, enable it to shine in extreme environments where traditional image sensors are not competent, especially in high-speed moving target capture and extreme lighting conditions. Optical flow reflects the target’s movement information, and the target’s detailed movement can be obtained using the event camera’s optical flow information. However, the existing neural network methods for optical flow predicti… Show more

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Cited by 7 publications
(5 citation statements)
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“…Limited computational resources constrain many application scenarios of downstream vision tasks, and the low-power property of SNNs is well-suited. Currently, SNNs have been applied to several tasks, such as object detection [ 13 , 29 , 50 , 51 , 52 ], optical flow estimation [ 53 , 54 , 55 ], and object tracking [ 56 , 57 ]. Reference [ 58 ] is the first and currently the only SNN work on semantic segmentation.…”
Section: Related Workmentioning
confidence: 99%
“…Limited computational resources constrain many application scenarios of downstream vision tasks, and the low-power property of SNNs is well-suited. Currently, SNNs have been applied to several tasks, such as object detection [ 13 , 29 , 50 , 51 , 52 ], optical flow estimation [ 53 , 54 , 55 ], and object tracking [ 56 , 57 ]. Reference [ 58 ] is the first and currently the only SNN work on semantic segmentation.…”
Section: Related Workmentioning
confidence: 99%
“…More recently, Kosta and Roy ( 2022 ) showed that spiking neural networks can indeed compete with their analog counterparts in terms of accuracy, showing top results both in the MVSEC and in the DSEC Dataset. Finally, Zhang et al ( 2023 ) achieves a remarkable accuracy on the MVSEC Dataset with a U-Net-like architecture and a self-supervised learning rule. However, all of these models are not implementable on neuromorphic hardware, since they either use upsampling techniques which are incompatible with the spiking nature of these devices (e.g., bilinear upsampling), or re-inject intermediate, lower-scale analog optical flow predictions, thereby violating the spiking constraint by introducing floating point values in an otherwise binary model.…”
Section: Related Workmentioning
confidence: 99%
“…It plays an important role in the research of vision application tasks such as target detection, tracking and recognition. Zhang and Mueggler (Mueggler et al, 2017;Zhang et al, 2023c) proposed optical flow estimation in the pixel domain, which can evaluate targets in high-speed and high-dynamic scenes in real time. In addition, Ieng et al (Ieng et al, 2017) used 4D spatiotemporal properties to further estimate the optical flow of high-speed moving objects in 3D stereo vision.…”
Section: Optical Flow Estimationmentioning
confidence: 99%