首页 /研究 /Bioinspired multisensory neural network with crossmodal integration and recognition
PERCEPTION

Bioinspired multisensory neural network with crossmodal integration and recognition

Hongwei Tan, Yifan Zhou, Quanzheng Tao, Johanna Rosén, Sebastiaan van Dijken

发表年份
2021
引用次数
217
访问权限
开放获取

摘要

The integration and interaction of vision, touch, hearing, smell, and taste in the human multisensory neural network facilitate high-level cognitive functionalities, such as crossmodal integration, recognition, and imagination for accurate evaluation and comprehensive understanding of the multimodal world. Here, we report a bioinspired multisensory neural network that integrates artificial optic, afferent, auditory, and simulated olfactory and gustatory sensory nerves. With distributed multiple sensors and biomimetic hierarchical architectures, our system can not only sense, process, and memorize multimodal information, but also fuse multisensory data at hardware and software level. Using crossmodal learning, the system is capable of crossmodally recognizing and imagining multimodal information, such as visualizing alphabet letters upon handwritten input, recognizing multimodal visual/smell/taste information or imagining a never-seen picture when hearing its description. Our multisensory neural network provides a promising approach towards robotic sensing and perception.

关键词

CrossmodalMultisensory integrationComputer scienceSensory systemPerceptionArtificial neural networkHuman–computer interactionArtificial intelligenceVisual perceptionNeuroscience

相关论文

查看 PERCEPTION 分类全部论文