论文标题

暹罗:用于节能对象跟踪的暹罗尖峰神经网络

SiamSNN: Siamese Spiking Neural Networks for Energy-Efficient Object Tracking

论文作者

Luo, Yihao, Xu, Min, Yuan, Caihong, Cao, Xiang, Zhang, Liangqi, Xu, Yan, Wang, Tianjiang, Feng, Qi

论文摘要

最近,神经网络的第三代神经网络(SNNS)显示出出色的能量计算能力,这是高能量消耗的深神经网络(DNN)的有希望的替代方法。与相对简单的任务和小型数据集(例如图像分类和MNIST/CIFAR)中的DNN相比,SNN已达到竞争成果,而对复杂数据集上更具挑战性的视觉任务的研究很少。在本文中,我们专注于将深SNN扩展到对象跟踪,具有嵌入式应用程序和节能要求的更先进的视觉任务,并提出了一个基于尖峰的暹罗网络,称为Siamsnn。具体而言,我们提出了一种优化的混合相似性估计方法来利用SNN中的时间信息,并引入了一种新颖的两层状态编码方案,以优化输出峰值列车的时间分布以进一步改进。 Siamsnn是第一个在视觉对象跟踪基准OTB2013/2015,dot2016/2018和GOT-100上实现短延迟且精确损失的第一个Deep SNN跟踪器。此外,Siamsnn在神经形态芯片Truenorth上实现了低能源消耗和实时的实时消耗。

Recently spiking neural networks (SNNs), the third-generation of neural networks has shown remarkable capabilities of energy-efficient computing, which is a promising alternative for deep neural networks (DNNs) with high energy consumption. SNNs have reached competitive results compared to DNNs in relatively simple tasks and small datasets such as image classification and MNIST/CIFAR, while few studies on more challenging vision tasks on complex datasets. In this paper, we focus on extending deep SNNs to object tracking, a more advanced vision task with embedded applications and energy-saving requirements, and present a spike-based Siamese network called SiamSNN. Specifically, we propose an optimized hybrid similarity estimation method to exploit temporal information in the SNNs, and introduce a novel two-status coding scheme to optimize the temporal distribution of output spike trains for further improvements. SiamSNN is the first deep SNN tracker that achieves short latency and low precision loss on the visual object tracking benchmarks OTB2013/2015, VOT2016/2018, and GOT-10k. Moreover, SiamSNN achieves notably low energy consumption and real-time on Neuromorphic chip TrueNorth.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源