论文标题

基于稀疏学习峰值的海马记忆模型的生物启发的实现

A bio-inspired implementation of a sparse-learning spike-based hippocampus memory model

论文作者

Casanueva-Morato, Daniel, Ayuso-Martinez, Alvaro, Dominguez-Morales, Juan P., Jimenez-Fernandez, Angel, Jimenez-Moreno, Gabriel

论文摘要

更具体地说,神经系统能够简单有效地解决复杂的问题,超过现代计算机。在这方面,神经形态工程是一个研究领域,重点是模仿控制大脑的基本原理,以开发实现此类计算能力的系统。在该领域中,生物启发的学习和记忆系统仍然是要解决的挑战,这就是海马涉及的地方。正是大脑的区域充当短期记忆,从而可以从大脑皮层的所有感觉核中学习,非结构化和快速存储信息及其随后的回忆。在这项工作中,我们提出了一种基于海马的新型生物启发的记忆模型,具有学习记忆的能力,从提示(与其他内容相关的记忆的一部分)中回忆它们,甚至在尝试通过相同的提示学习其他人时忘记记忆。该模型已在使用尖峰神经网络上在大型摩托车硬件平台上实现,并进行了一组实验和测试以证明其正确且预期的操作。所提出的基于SPIKE的内存模型仅在接收输入,能节能时才生成SPIKES,并且需要7个时间段来进行学习步骤,而6个时间步则需要回忆以前存储的存储器。这项工作介绍了功能齐全的基于生物启发的海马记忆模型的第一个硬件实现,为开发未来更复杂的神经形态系统的发展铺平了道路。

The nervous system, more specifically, the brain, is capable of solving complex problems simply and efficiently, far surpassing modern computers. In this regard, neuromorphic engineering is a research field that focuses on mimicking the basic principles that govern the brain in order to develop systems that achieve such computational capabilities. Within this field, bio-inspired learning and memory systems are still a challenge to be solved, and this is where the hippocampus is involved. It is the region of the brain that acts as a short-term memory, allowing the learning and unstructured and rapid storage of information from all the sensory nuclei of the cerebral cortex and its subsequent recall. In this work, we propose a novel bio-inspired memory model based on the hippocampus with the ability to learn memories, recall them from a cue (a part of the memory associated with the rest of the content) and even forget memories when trying to learn others with the same cue. This model has been implemented on the SpiNNaker hardware platform using Spiking Neural Networks, and a set of experiments and tests were performed to demonstrate its correct and expected operation. The proposed spike-based memory model generates spikes only when it receives an input, being energy efficient, and it needs 7 timesteps for the learning step and 6 timesteps for recalling a previously-stored memory. This work presents the first hardware implementation of a fully functional bio-inspired spike-based hippocampus memory model, paving the road for the development of future more complex neuromorphic systems.

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