大脑引导的流形转移提高了尖峰神经网络在图像分类中的性能。

IF 1.5 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Journal of Computational Neuroscience Pub Date : 2023-11-01 Epub Date: 2023-09-18 DOI:10.1007/s10827-023-00861-z
Zahra Imani, Mehdi Ezoji, Timothée Masquelier
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引用次数: 0

摘要

Spiking神经网络作为第三代神经网络,是基于人脑神经元的生物学模型。在这项工作中,浅SNN在图像分类中扮演着显式图像解码器的角色。基于LSTM的EEG编码器用于构建基于EEG的特征空间,从SVM分类精度的角度来看,这是一个判别空间。然后,通过基于互k近邻的流形转移(Mk-NN-MT)将从SNN中提取的视觉特征向量映射到基于EEG的判别特征空间。这种提出的“大脑引导系统”提高了基于SNN的视觉特征空间的可分性。在测试阶段,SNN从输入图像中提取的尖峰模式被映射到基于LSTM的EEG特征空间,然后在不需要EEG信号的情况下进行分类。通过转换方法对基于SNN的图像编码器进行训练,并在具有挑战性的小型ImageNet EEG数据集上对结果进行评估,并与其他训练方法进行比较。实验结果表明,所提出的将基于SNN的特征空间的流形转移到基于LSTM的EEG特征空间的方法使图像分类的准确率提高了14.25%。因此,将SNN嵌入在小集合上训练的大脑引导系统中,提高了其在图像分类中的性能。
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Brain-guided manifold transferring to improve the performance of spiking neural networks in image classification.

Spiking neural networks (SNNs), as the third generation of neural networks, are based on biological models of human brain neurons. In this work, a shallow SNN plays the role of an explicit image decoder in the image classification. An LSTM-based EEG encoder is used to construct the EEG-based feature space, which is a discriminative space in viewpoint of classification accuracy by SVM. Then, the visual feature vectors extracted from SNN is mapped to the EEG-based discriminative features space by manifold transferring based on mutual k-Nearest Neighbors (Mk-NN MT). This proposed "Brain-guided system" improves the separability of the SNN-based visual feature space. In the test phase, the spike patterns extracted by SNN from the input image is mapped to LSTM-based EEG feature space, and then classified without need for the EEG signals. The SNN-based image encoder is trained by the conversion method and the results are evaluated and compared with other training methods on the challenging small ImageNet-EEG dataset. Experimental results show that the proposed transferring the manifold of the SNN-based feature space to LSTM-based EEG feature space leads to 14.25% improvement at most in the accuracy of image classification. Thus, embedding SNN in the brain-guided system which is trained on a small set, improves its performance in image classification.

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来源期刊
CiteScore
2.00
自引率
8.30%
发文量
32
审稿时长
3 months
期刊介绍: The Journal of Computational Neuroscience provides a forum for papers that fit the interface between computational and experimental work in the neurosciences. The Journal of Computational Neuroscience publishes full length original papers, rapid communications and review articles describing theoretical and experimental work relevant to computations in the brain and nervous system. Papers that combine theoretical and experimental work are especially encouraged. Primarily theoretical papers should deal with issues of obvious relevance to biological nervous systems. Experimental papers should have implications for the computational function of the nervous system, and may report results using any of a variety of approaches including anatomy, electrophysiology, biophysics, imaging, and molecular biology. Papers investigating the physiological mechanisms underlying pathologies of the nervous system, or papers that report novel technologies of interest to researchers in computational neuroscience, including advances in neural data analysis methods yielding insights into the function of the nervous system, are also welcomed (in this case, methodological papers should include an application of the new method, exemplifying the insights that it yields).It is anticipated that all levels of analysis from cognitive to cellular will be represented in the Journal of Computational Neuroscience.
期刊最新文献
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