Deep-Learning Enabled Assessment of Neurocognitive Performance in Object Following in Mixed Reality

Ansh Sharma,Keerthana Nallamotu, Mukhilshankar Umashankar,Shenlong Wang,Inki Kim

2022 IEEE/ACM Conference on Connected Health: Applications, Systems and Engineering Technologies (CHASE)(2022)

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摘要
The objective of this article is to develop a deep learning model to construct a comprehensive, machine-learnable representation of human performance that spans visual, cognitive, and motor-control abilities associated with an object-following task in mixed reality (MR). Compared to direct observations by trained clinical staffs, which is the current standard for clinical diagnosis, a deep learning approach is expected to detect subtle signs of neurocognitive abilities and/or impairment. If successful, the resultant representation will bring a new opportunity to be shared and communicated with humans, a first step to collaborative workflows between clinical staffs and artificial intelligence (AI) specialists for diagnosis.
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关键词
Deep Learning,Spatial-Temporal Transformer Network,Mixed Reality,Human Performance Modeling
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