论文标题
Spiking SiamFC ++:对象跟踪的深尖峰神经网络
Spiking SiamFC++: Deep Spiking Neural Network for Object Tracking
论文作者
论文摘要
尖峰神经网络(SNN)是一种具有生物学知识的模型,具有高计算能力和低功耗的优势。虽然对深SNN的培训仍然是一个空旷的问题,但它限制了深SNN的现实应用。在这里,我们提出了一个名为Spiking SiamFC ++的深SNN架构,用于对象跟踪端到端直接培训。具体而言,Alexnet网络在时域扩展以提取该功能,并采用了替代梯度功能来实现对深SNN的直接监督培训。为了检查尖峰SiamFC ++的性能,考虑了几种跟踪基准,包括OTB2013,OTB2015,Dot2015,dot2016和UAV123。发现与原始的siAMFC ++相比,精度损失很小。与现有的基于SNN的目标跟踪器相比,例如,暹罗(Siamsnn),提议的尖峰暹罗++的精度(连续)达到了85.24%(64.37%),该援助率远高于52.78%(44.32%)的精度(64.37%)。据我们所知,尖峰SiamFC ++的性能优于基于SNN的对象跟踪中现有的最新方法,该方法为目标跟踪领域中的SNN应用提供了新的路径。这项工作可能会进一步促进SNN算法和神经形态芯片的发展。
Spiking neural network (SNN) is a biologically-plausible model and exhibits advantages of high computational capability and low power consumption. While the training of deep SNN is still an open problem, which limits the real-world applications of deep SNN. Here we propose a deep SNN architecture named Spiking SiamFC++ for object tracking with end-to-end direct training. Specifically, the AlexNet network is extended in the time domain to extract the feature, and the surrogate gradient function is adopted to realize direct supervised training of the deep SNN. To examine the performance of the Spiking SiamFC++, several tracking benchmarks including OTB2013, OTB2015, VOT2015, VOT2016, and UAV123 are considered. It is found that, the precision loss is small compared with the original SiamFC++. Compared with the existing SNN-based target tracker, e.g., the SiamSNN, the precision (succession) of the proposed Spiking SiamFC++ reaches 85.24% (64.37%), which is much higher than that of 52.78% (44.32%) achieved by the SiamSNN. To our best knowledge, the performance of the Spiking SiamFC++ outperforms the existing state-of-the-art approaches in SNN-based object tracking, which provides a novel path for SNN application in the field of target tracking. This work may further promote the development of SNN algorithms and neuromorphic chips.