General spiking neural network framework for the learning trajectory from a noisy mmWave radar

Xin Liu, Mingyu Yan, Lei Deng, Yujie Wu, De Han, Guoqi Li, Xiaochun Ye, Dongrui Fan
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引用次数: 4

Abstract

Emerging usages for millimeter wave (mmWave) radar have drawn extensive attention and inspired the exploration of learning mmWave radar data. To be effective, instead of using conventional approaches, recent works have employed modern neural network models to process mmWave radar data. However, due to some inevitable obstacles, e.g., noise and sparsity issues in data, the existing approaches are generally customized for specific scenarios. In this paper, we propose a general neuromorphic framework, termed mm-SNN, to process mmWave radar data with spiking neural networks (SNNs), leveraging the intrinsic advantages of SNNs in processing noisy and sparse data. Specifically, we first present the overall design of mm-SNN, which is adaptive and easily expanded for multi-sensor systems. Second, we introduce general and straightforward attention-based improvements into the mm-SNN to enhance the data representation, helping promote performance. Moreover, we conduct explorative experiments to certify the robustness and effectiveness of the mm-SNN. To the best of our knowledge, mm-SNN is the first SNN-based framework that processes mmWave radar data without using extra modules to alleviate the noise and sparsity issues, and at the same time, achieve considerable performance in the task of trajectory estimation.
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噪声毫米波雷达学习轨迹的通用尖峰神经网络框架
毫米波(mmWave)雷达的新用途引起了广泛的关注,并激发了对毫米波雷达数据学习的探索。为了提高效率,最近的研究工作采用现代神经网络模型来处理毫米波雷达数据,而不是使用传统的方法。然而,由于一些不可避免的障碍,例如数据中的噪声和稀疏性问题,现有的方法通常是针对特定场景定制的。在本文中,我们提出了一个通用的神经形态框架,称为mm-SNN,利用snn在处理噪声和稀疏数据方面的固有优势,用尖峰神经网络(snn)处理毫米波雷达数据。具体来说,我们首先提出了mm-SNN的总体设计,它具有自适应能力,易于扩展,适用于多传感器系统。其次,我们在mm-SNN中引入了一般和直接的基于注意力的改进,以增强数据表示,帮助提高性能。此外,我们还进行了探索性实验,以验证mm-SNN的鲁棒性和有效性。据我们所知,mm-SNN是第一个基于snn的框架,它在处理毫米波雷达数据时不使用额外的模块来缓解噪声和稀疏性问题,同时在弹道估计任务中取得了相当大的性能。
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