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Autoencoder-based transfer learning in braina??computer interface for rehabilitation robot

机译:康复机器人脑接口中基于自动编码器的转移学习

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The braina??computer interface-based rehabilitation robot has quickly become a very important research area due to its natural interaction. One of the most important problems in braina??computer interface is that large-scale annotated electroencephalography data sets required by advanced classifiers are almost impossible to acquire because biological data acquisition is challenging and quality annotation is costly. Transfer learning relaxes the hypothesis that the training data must be independent and identically distributed with the test data. It can be considered a powerful tool for solving the problem of insufficient training data. There are two basic issues with transfer learning, under transfer and negative transfer. We proposed a novel braina??computer interface framework by using autoencoder-based transfer learning, which includes three main components: an autoencoder framework, a joint adversarial network, and a regularized manifold constraint. The autoencoder framework automatically encodes and reconstructs data from source and target domains and forces the neural network to learn to represent these domains reliably. The joint adversarial network aims to force the network to learn to encode more appropriately for the source domain and target domain simultaneously, thereby overcoming the problem of under transfer. The regularized manifold constraint aims to avoid the problem of negative transfer by avoiding geometric manifold structure in the target domain being destroyed by the source domain. Experiments show that the braina??computer interface framework proposed by us can achieve better results than state-of-the-art approaches in electroencephalography signal classification tasks. This is helpful in aiding our rehabilitation robot to understand the intention of patients and can help patients to carry out rehabilitation exercises effectively.
机译:由于其自然的相互作用,基于Braina计算机接口的康复机器人已迅速成为一个非常重要的研究领域。 Braina计算机接口中最重要的问题之一是,高级分类器所需的大规模带注释的脑电图数据集几乎无法获取,因为生物数据获取具有挑战性且质量注释成本很高。转移学习放松了这样的假设,即训练数据必须独立并且与测试数据相同地分布。它可以被认为是解决训练数据不足问题的有力工具。转移学习有两个基本问题,转移和负转移。通过使用基于自动编码器的转移学习,我们提出了一个新颖的Braina计算机接口框架,该框架包括三个主要组件:自动编码器框架,联合对抗网络和规则化流形约束。自动编码器框架会自动编码和重构来自源域和目标域的数据,并强制神经网络学习可靠地表示这些域。联合对抗网络旨在迫使网络学习同时针对源域和目标域进行更适当的编码,从而克服传输不足的问题。正则化流形约束旨在通过避免目标域中的几何流形结构被源域破坏来避免负转移问题。实验表明,在脑电信号分类任务中,我们提出的braina计算机接口框架比最新方法能获得更好的结果。这有助于帮助我们的康复机器人了解患者的意图,并可以帮助患者有效地进行康复锻炼。

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