利用黎曼网络对引导视觉搜索任务中注视相关电位的单次分类

Junjie Shen, Xiao Li, Hong Zeng, Aiguo Song
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引用次数: 1

摘要

大脑对视觉刺激的反应可以提供有关认知过程或意图的信息。一些研究表明,利用注视运动后引起的大脑反应的刺激依赖性调节(即注视相关电位,FRP)来预测人类感兴趣的物体是可行的。然而,目前用于FRP分类的浅层模型的性能还远远不能令人满意。近年来,基于深度学习的黎曼几何在许多图像和视频处理任务中得到了普及,这得益于它们能够在尊重这些领域数据的黎曼几何的同时学习适当的统计表示。本文研究了一种基于黎曼网络的导航视觉搜索任务玻璃钢分类方法。实验结果表明,与浅层方法相比,黎曼网络显著提高了分类性能。
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Single-trial Classification of Fixation-related Potentials in Guided Visual Search Tasks using A Riemannian Network
Brain responses to visual stimulus can provide information about cognitive process or intentions. Several studies show that it is feasible to use stimulus-dependent modulation of the evoked brain responses after gaze movements (i.e., Fixation Related Potential, FRP) to predict the interested object of human. However, the performance of the state-of the-art shallow models for FRP classification is still far from satisfactory. Recent years, Riemannian geometry based on deep learning has gained its popularity in many image and video processing tasks, thanks to their ability to learn appropriate statistical representations while respecting Riemannian geometry of the data in such fields. In this paper, we have investigated a Riemannian network for classifying FRP in guided visual search task. Experiment results showed that the Riemannian network improved classification performance significantly in comparison to the shallow methods.
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