IEEE Trans Neural Syst Rehabil Eng. 2021;29:103-112. doi: 10.1109/TNSRE.2020.3035786. Epub 2021 Feb 26.
Brainprint is a new type of biometric in the form of EEG, directly linking to intrinsic identity. Currently, most methods for brainprint recognition are based on traditional machine learning and only focus on a single brain cognition task. Due to the ability to extract high-level features and latent dependencies, deep learning can effectively overcome the limitation of specific tasks, but numerous samples are required for model training. Therefore, brainprint recognition in realistic scenes with multiple individuals and small amounts of samples in each class is challenging for deep learning. This article proposes a Convolutional Tensor-Train Neural Network (CTNN) for the multi-task brainprint recognition with small number of training samples. Firstly, local temporal and spatial features of the brainprint are extracted by the convolutional neural network (CNN) with depthwise separable convolution mechanism. Afterwards, we implement the TensorNet (TN) via low-rank representation to capture the multilinear intercorrelations, which integrates the local information into a global one with very limited parameters. The experimental results indicate that CTNN has high recognition accuracy over 99% on all four datasets, and it exploits brainprint under multi-task efficiently and scales well on training samples. Additionally, our method can also provide an interpretable biomarker, which shows specific seven channels are dominated for the recognition tasks.
脑纹是一种新型的 EEG 形式的生物特征,直接与内在身份相关联。目前,大多数脑纹识别方法都是基于传统的机器学习,只关注单一的脑认知任务。由于深度学习能够提取高级特征和潜在的依赖关系,因此可以有效地克服特定任务的局限性,但模型训练需要大量的样本。因此,对于具有多个人和每个类别少量样本的现实场景中的脑纹识别,深度学习具有挑战性。本文提出了一种用于小样本多任务脑纹识别的卷积张量-张量神经网络(CTNN)。首先,通过具有深度可分离卷积机制的卷积神经网络(CNN)提取脑纹的局部时空特征。然后,我们通过低秩表示来实现 TensorNet(TN),以捕获多线性相互关系,将局部信息集成到一个具有非常有限参数的全局信息中。实验结果表明,CTNN 在所有四个数据集上的识别准确率都超过 99%,并且能够有效地利用多任务下的脑纹,并且在训练样本上具有良好的扩展性。此外,我们的方法还可以提供可解释的生物标志物,表明特定的七个通道对于识别任务具有主导作用。