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基于脑启发的尖峰神经网络架构在气味数据分类中的应用。

Application of a Brain-Inspired Spiking Neural Network Architecture to Odor Data Classification.

机构信息

School of Engineering, Edith Cowan University, Perth 6027, Australia.

Knowledge Engineering and Discovery Research Institute, Auckland University of Technology, Auckland 1010, New Zealand.

出版信息

Sensors (Basel). 2020 May 12;20(10):2756. doi: 10.3390/s20102756.

Abstract

Existing methods in neuromorphic olfaction mainly focus on implementing the data transformation based on the neurobiological architecture of the olfactory pathway. While the transformation is pivotal for the sparse spike-based representation of odor data, classification techniques based on the bio-computations of the higher brain areas, which process the spiking data for identification of odor, remain largely unexplored. This paper argues that brain-inspired spiking neural networks constitute a promising approach for the next generation of machine intelligence for odor data processing. Inspired by principles of brain information processing, here we propose the first spiking neural network method and associated deep machine learning system for classification of odor data. The paper demonstrates that the proposed approach has several advantages when compared to the current state-of-the-art methods. Based on results obtained using a benchmark dataset, the model achieved a high classification accuracy for a large number of odors and has the capacity for incremental learning on new data. The paper explores different spike encoding algorithms and finds that the most suitable for the task is the step-wise encoding function. Further directions in the brain-inspired study of odor machine classification include investigation of more biologically plausible algorithms for mapping, learning, and interpretation of odor data along with the realization of these algorithms on some highly parallel and low power consuming neuromorphic hardware devices for real-world applications.

摘要

现有的神经嗅觉方法主要集中在基于嗅觉通路的神经生物学结构来实现数据转换。虽然转换对于基于稀疏尖峰的气味数据表示至关重要,但基于处理尖峰数据以识别气味的大脑高级区域的生物计算的分类技术在很大程度上仍未得到探索。本文认为,受大脑启发的尖峰神经网络构成了下一代用于气味数据处理的机器智能的有前途的方法。受大脑信息处理原理的启发,我们在这里提出了用于气味数据分类的第一个尖峰神经网络方法和相关的深度学习系统。本文证明,与当前最先进的方法相比,该方法具有几个优势。基于使用基准数据集获得的结果,该模型在大量气味上实现了高分类准确性,并且具有对新数据进行增量学习的能力。本文还探讨了不同的尖峰编码算法,并发现最适合该任务的是逐步编码函数。在基于大脑的气味机器分类研究中进一步的方向包括调查更具生物学合理性的映射、学习和解释气味数据的算法,以及在一些高度并行和低功耗的神经形态硬件设备上实现这些算法,以用于实际应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9da2/7294411/abd38606cce0/sensors-20-02756-g001.jpg

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