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Encoder-Decoder Optimization for Brain-Computer Interfaces

机译:脑机接口的编码器-解码器优化

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摘要

Neuroprosthetic brain-computer interfaces are systems that decode neural activity into useful control signals for effectors, such as a cursor on a computer screen. It has long been recognized that both the user and decoding system can adapt to increase the accuracy of the end effector. Co-adaptation is the process whereby a user learns to control the system in conjunction with the decoder adapting to learn the user's neural patterns. We provide a mathematical framework for co-adaptation and relate co-adaptation to the joint optimization of the user's control scheme ("encoding model") and the decoding algorithm's parameters. When the assumptions of that framework are respected, co-adaptation cannot yield better performance than that obtainable by an optimal initial choice of fixed decoder, coupled with optimal user learning. For a specific case, we provide numerical methods to obtain such an optimized decoder. We demonstrate our approach in a model brain-computer interface system using an online prosthesis simulator, a simple human-in-the-loop pyschophysics setup which provides a non-invasive simulation of the BCI setting. These experiments support two claims: that users can learn encoders matched to fixed, optimal decoders and that, once learned, our approach yields expected performance advantages.
机译:人工神经假体计算机接口是一种将神经活动解码为有用的控制信号的系统,这些控制信号用于效应器,例如计算机屏幕上的光标。早就认识到,用户和解码系统都可以适应以增加末端执行器的精度。协同适应是一个过程,在此过程中,用户将学习如何与适用于学习用户神经模式的解码器一起学习来控制系统。我们提供了用于共同适应的数学框架,并将共同适应与用户控制方案(“编码模型”)和解码算法参数的联合优化相关联。当遵守该框架的假设时,与自适应解码器的最佳初始选择以及最佳用户学习相结合所获得的协同适应性能无法达到更好的性能。对于特定情况,我们提供了数值方法来获得这种优化的解码器。我们在使用在线假体模拟器的模型脑计算机接口系统中演示了我们的方法,该模型是一种简单的人在回路中的心理物理学装置,可提供BCI设置的非侵入性模拟。这些实验支持两个主张:用户可以学习与固定的最佳解码器匹配的编码器,并且一旦学会,我们的方法将产生预期的性能优势。

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