A Feature Extraction Technique for Micro-Sleep Discernment Based on Random Sampling

Reeba Jennifer R.*, Balaji V. R.**
* Department of Electrical Engineering, Sri Krishna College of Engineering and Technology, Coimbatore, Tamil Nadu, India.
** Department of Electronics and Communication Engineering, Sri Krishna College of Engineering and Technology, Coimbatore, Tamil Nadu, India.
Periodicity:January - June'2025
DOI : https://doi.org/10.26634/jpr.12.1.21913

Abstract

A micro-sleep may include head-bobbing or a blank starred eyes closed gesture which can be deadly behind the wheel. The drowsy state of the driver may lead to erratic pattern of driving typically causing a fatal accident. Several technologies that alert drivers who are drowsy behind the wheel were proposed earlier which lags in its detection time and accuracy due to the downturn in its computation performance. Hence, a novel characteristic extraction technique is suggested that fuses a packet Random Sampling (RS) medium along with ANN so as to detect the cognitive features even more accurately from the brain at a faster computation speed. The processing unit decomposes the driver's features into several packets and samples it randomly by means of the Bootstrapping Methodology and the weight of the generated features are thereby calculated by the McCulloch-Pitts neuron rule through ANN implementation. The estimated net weight aid in ascertaining the performance scores only to set up an efficient model concerning the classification accuracy which is found to be 93% followed by less than 0.5 seconds computation time. The Neural Network Plot is targeted towards the extraction of exact attribute values of the differentiated states of the driver's drowsiness, thus contributing a promising RS-ANN micro sleep discernment architecture.

Keywords

Micro-sleep, Random Sampling, Drowsiness Detection, RS-ANN, Feature Extraction.

How to Cite this Article?

Jennifer, R. R., and Balaji, V. R. (2025). A Feature Extraction Technique for Micro-Sleep Discernment Based on Random Sampling. i-manager’s Journal on Pattern Recognition, 12(1), 1-15. https://doi.org/10.26634/jpr.12.1.21913

References

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