Sg-snn:基于时间信息的自组织尖峰神经网络。

IF 3.1 3区 工程技术 Q2 NEUROSCIENCES Cognitive Neurodynamics Pub Date : 2025-12-01 Epub Date: 2025-01-09 DOI:10.1007/s11571-024-10199-6
Shouwei Gao, Ruixin Zhu, Yu Qin, Wenyu Tang, Hao Zhou
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引用次数: 0

摘要

神经动力学观察表明,大脑皮层是通过自组织成功能网络而进化的,这些网络或分布式区域集群会根据输入显示不同程度的注意力图谱。传统的网络自组织研究主要依赖静态数据,忽略了动态神经形态数据中的时间信息。本文提出了利用尖峰神经网络进行神经形态数据处理的时序自组织(TSO)方法。TSO 方法将多个时间步骤的信息纳入最佳匹配单元(BMU)神经元的选择策略。它能使耦合的 BMU 将权重辐射到同一层神经元,最终形成一个分层自组织关注地形图。此外,我们还模拟了真实的神经元动态,引入了神经胶质细胞介导的神经胶质细胞-LIF(漏电整合与发射)模型,并调整了多层 BMU,以优化注意力拓扑图。实验证明,所提出的自组织神经胶质细胞尖峰神经网络(SG-SNN)可以为动态事件数据生成从粗到细的注意力拓扑图。基于认知科学的启发式方法有效地指导了网络兴奋区域的分布。此外,SG-SNN 在三个标准神经形态数据集上显示出更高的准确性:在 DVS128-Gesture、CIFAR10-DVS 和 N-Caltech 101 这三个标准神经形态数据集上,SG-SNN 的准确率分别提高了 0.3%、2.4% 和 0.54%。值得注意的是,DVS128-Gesture 数据集的识别准确率达到了 99.3%,实现了最先进(SOTA)的性能。
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Sg-snn: a self-organizing spiking neural network based on temporal information.

Neurodynamic observations indicate that the cerebral cortex evolved by self-organizing into functional networks, These networks, or distributed clusters of regions, display various degrees of attention maps based on input. Traditionally, the study of network self-organization relies predominantly on static data, overlooking temporal information in dynamic neuromorphic data. This paper proposes Temporal Self-Organizing (TSO) method for neuromorphic data processing using a spiking neural network. The TSO method incorporates information from multiple time steps into the selection strategy of the Best Matching Unit (BMU) neurons. It enables the coupled BMUs to radiate the weight across the same layer of neurons, ultimately forming a hierarchical self-organizing topographic map of concern. Additionally, we simulate real neuronal dynamics, introduce a glial cell-mediated Glial-LIF (Leaky Integrate-and-fire) model, and adjust multiple levels of BMUs to optimize the attention topological map.Experiments demonstrate that the proposed Self-organizing Glial Spiking Neural Network (SG-SNN) can generate attention topographies for dynamic event data from coarse to fine. A heuristic method based on cognitive science effectively guides the network's distribution of excitatory regions. Furthermore, the SG-SNN shows improved accuracy on three standard neuromorphic datasets: DVS128-Gesture, CIFAR10-DVS, and N-Caltech 101, with accuracy improvements of 0.3%, 2.4%, and 0.54% respectively. Notably, the recognition accuracy on the DVS128-Gesture dataset reaches 99.3%, achieving state-of-the-art (SOTA) performance.

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来源期刊
Cognitive Neurodynamics
Cognitive Neurodynamics 医学-神经科学
CiteScore
6.90
自引率
18.90%
发文量
140
审稿时长
12 months
期刊介绍: Cognitive Neurodynamics provides a unique forum of communication and cooperation for scientists and engineers working in the field of cognitive neurodynamics, intelligent science and applications, bridging the gap between theory and application, without any preference for pure theoretical, experimental or computational models. The emphasis is to publish original models of cognitive neurodynamics, novel computational theories and experimental results. In particular, intelligent science inspired by cognitive neuroscience and neurodynamics is also very welcome. The scope of Cognitive Neurodynamics covers cognitive neuroscience, neural computation based on dynamics, computer science, intelligent science as well as their interdisciplinary applications in the natural and engineering sciences. Papers that are appropriate for non-specialist readers are encouraged. 1. There is no page limit for manuscripts submitted to Cognitive Neurodynamics. Research papers should clearly represent an important advance of especially broad interest to researchers and technologists in neuroscience, biophysics, BCI, neural computer and intelligent robotics. 2. Cognitive Neurodynamics also welcomes brief communications: short papers reporting results that are of genuinely broad interest but that for one reason and another do not make a sufficiently complete story to justify a full article publication. Brief Communications should consist of approximately four manuscript pages. 3. Cognitive Neurodynamics publishes review articles in which a specific field is reviewed through an exhaustive literature survey. There are no restrictions on the number of pages. Review articles are usually invited, but submitted reviews will also be considered.
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