Abstract

Human activity recognition and neural activity analysis are the basis for human computational neureoethology research dealing with the simultaneous analysis of behavioral ethogram descriptions and neural activity measurements. Wireless electroencephalography (EEG) and wireless inertial measurement units (IMU) allow the realization of experimental data recording with improved ecological validity where the subjects can be carrying out natural activities while data recording is minimally invasive. Specifically, we aim to show that EEG and IMU data fusion allows improved human activity recognition in a natural setting. We have defined an experimental protocol composed of natural sitting, standing and walking activities, and we have recruited subjects in two sites: in-house ([Formula: see text]) and out-house ([Formula: see text]) populations with different demographics. Experimental protocol data capture was carried out with validated commercial systems. Classifier model training and validation were carried out with scikit-learn open source machine learning python package. EEG features consist of the amplitude of the standard EEG frequency bands. Inertial features were the instantaneous position of the body tracked points after a moving average smoothing to remove noise. We carry out three validation processes: a 10-fold cross-validation process per experimental protocol repetition, (b) the inference of the ethograms, and (c) the transfer learning from each experimental protocol repetition to the remaining repetitions. The in-house accuracy results were lower and much more variable than the out-house sessions results. In general, random forest was the best performing classifier model. Best cross-validation results, ethogram accuracy, and transfer learning were achieved from the fusion of EEG and IMUs data. Transfer learning behaved poorly compared to classification on the same protocol repetition, but it has accuracy still greater than 0.75 on average for the out-house data sessions. Transfer leaning accuracy among repetitions of the same subject was above 0.88 on average. Ethogram prediction accuracy was above 0.96 on average. Therefore, we conclude that wireless EEG and IMUs allow for the definition of natural experimental designs with high ecological validity toward human computational neuroethology research. The fusion of both EEG and IMUs signals improves activity and ethogram recognition.

Highlights

  • There is a plethora of approaches for human activity measurement and recognition using diverse sensors

  • Computational ethology uses a wide variety of sensors, such as structured light,[20] X-ray imaging for animals embedded in the soil, thermal imaging for video shooting in darkness,[26] sonar signals for underwater monitoring, sensitive pressure sensors for micro-motion detection,[27] catwalk systems for animal gait analysis,[28] as well as innovative machine learning for automated construction of ethograms, such as the convolutional neural networks (CNN),[29,30,31] spatiotemporal bags of words,[26] and data compression.[32]

  • Robust and sensitive dry electrodes[41,47] are easier to deploy on inexperienced subjects. We benefit from these resources in order to improve the ecological validity of our activity recognition experiments based on EEG and inertial measurement units (IMU) recordings

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Summary

Introduction

There is a plethora of approaches for human activity measurement and recognition using diverse sensors. Monitoring neural activity while wandering in an art museum has been reported.[46] robust and sensitive dry electrodes[41,47] are easier to deploy on inexperienced subjects We benefit from these resources in order to improve the ecological validity of our activity recognition experiments based on EEG and IMUs recordings. Recognition Combining Inertial Motion Sensors and Electroencephalogram Signals devices allow much more natural experiences such as joint recording of body motion and the EEG of piano player while performing a simple tune.[57] We postulate that the experimental works reported in this paper fall near the domain of human computational neuroethology

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