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SpikingViT: A Multiscale Spiking Vision Transformer Model for Event-Based Object Detection

  • Lixing Yu*
  • , Hanqi Chen
  • , Ziming Wang
  • , Shaojie Zhan
  • , Jiankun Shao
  • , Qingjie Liu
  • , Shu Xu*
  • *此作品的通讯作者
  • Yunnan University
  • Zhejiang University
  • China Nanhu Academy of Electronics and Information Technology

科研成果: 期刊稿件文章同行评审

摘要

Event cameras have unique advantages in object detection, capturing asynchronous events without continuous frames. They excel in dynamic range, low latency, and high-speed motion scenarios, with lower power consumption. However, aggregating event data into image frames leads to information loss and reduced detection performance. Applying traditional neural networks to event camera outputs is challenging due to event data's distinct characteristics. In this study, we present a novel spiking neural networks (SNNs)-based object detection model, the spiking vision transformer (SpikingViT) to address these issues. First, we design a dedicated event data converting module that effectively captures the unique characteristics of event data, mitigating the risk of information loss while preserving its spatiotemporal features. Second, we introduce SpikingViT, a novel object detection model that leverages SNNs capable of extracting spatiotemporal information among events data. SpikingViT combines the advantages of SNNs and transformer models, incorporating mechanisms such as attention and residual voltage memory to further enhance detection performance. Extensive experiments have substantiated the remarkable proficiency of SpikingViT in event-based object detection, positioning it as a formidable contender. Our proposed approach adeptly retains spatiotemporal information inherent in event data, leading to a substantial enhancement in detection performance.

源语言英语
页(从-至)130-146
页数17
期刊IEEE Transactions on Cognitive and Developmental Systems
17
1
DOI
出版状态已出版 - 2025

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