AJILE Movement Prediction: Multimodal Deep Learning for Natural Human Neural Recordings and Video
Nancy Xin Ru Wang, Ali Farhadi, Rajesh Rao, Bingni Brunton

TL;DR
This paper introduces a large multimodal dataset and deep learning models to predict natural human arm movements from neural recordings and video, achieving early prediction and robustness.
Contribution
It presents the AJILE dataset and a novel multimodal deep learning approach for predicting natural movements from intracranial neural signals and video data.
Findings
Models predict movements up to 800 ms before initiation.
Multimodal models outperform unimodal approaches.
Robustness to neural signal ablation demonstrates resilience.
Abstract
Developing useful interfaces between brains and machines is a grand challenge of neuroengineering. An effective interface has the capacity to not only interpret neural signals, but predict the intentions of the human to perform an action in the near future; prediction is made even more challenging outside well-controlled laboratory experiments. This paper describes our approach to detect and to predict natural human arm movements in the future, a key challenge in brain computer interfacing that has never before been attempted. We introduce the novel Annotated Joints in Long-term ECoG (AJILE) dataset; AJILE includes automatically annotated poses of 7 upper body joints for four human subjects over 670 total hours (more than 72 million frames), along with the corresponding simultaneously acquired intracranial neural recordings. The size and scope of AJILE greatly exceeds all previous…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Muscle activation and electromyography studies · Functional Brain Connectivity Studies
