Spiking Transformers for Event-based Single Object Tracking

Jiqing Zhang, B. Dong, Haiwei Zhang, Jianchuan Ding, Felix Heide, Baocai Yin, Xin Yang
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引用次数: 61

Abstract

Event-based cameras bring a unique capability to tracking, being able to function in challenging real-world conditions as a direct result of their high temporal resolution and high dynamic range. These imagers capture events asynchronously that encode rich temporal and spatial information. However, effectively extracting this information from events remains an open challenge. In this work, we propose a spiking transformer network, STNet, for single object tracking. STNet dynamically extracts and fuses information from both temporal and spatial domains. In particular, the proposed architecture features a transformer module to provide global spatial information and a spiking neural network (SNN) module for extracting temporal cues. The spiking threshold of the SNN module is dynamically adjusted based on the statistical cues of the spatial information, which we find essential in providing robust SNN features. We fuse both feature branches dynamically with a novel cross-domain attention fusion algorithm. Extensive experiments on three event-based datasets, FE240hz, EED and VisEvent validate that the proposed STNet outperforms existing state-of-the-art methods in both tracking accuracy and speed with a significant margin. The code and pretrained models are at https://github.com/Jee-King/CVPR2022_STNet.
基于事件的单对象跟踪的峰值变压器
基于事件的相机带来了独特的跟踪能力,能够在具有挑战性的现实条件下发挥作用,这是其高时间分辨率和高动态范围的直接结果。这些成像仪异步捕获事件,编码丰富的时间和空间信息。然而,有效地从事件中提取这些信息仍然是一个开放的挑战。在这项工作中,我们提出了一个脉冲变压器网络,STNet,用于单目标跟踪。STNet动态地提取和融合来自时空域的信息。特别是,所提出的架构具有提供全局空间信息的变压器模块和用于提取时间线索的峰值神经网络(SNN)模块。SNN模块的尖峰阈值是根据空间信息的统计线索动态调整的,这对于提供鲁棒的SNN特征至关重要。采用一种新颖的跨域注意力融合算法动态融合两个特征分支。在三个基于事件的数据集(FE240hz, EED和VisEvent)上进行的大量实验验证了所提出的STNet在跟踪精度和速度方面都优于现有的最先进的方法。代码和预训练模型在https://github.com/Jee-King/CVPR2022_STNet。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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