Authors
S Pradeep Kumar, Jerritta Selvaraj, R Krishnakumar, Arun Sahayadhas
Publication date
2020/3/11
Conference
2020 fourth international conference on computing methodologies and communication (ICCMC)
Pages
635-639
Publisher
IEEE
Description
Driver distraction is considered as major factors in most of the traffic accidents. Driving errors may arise due to the distraction of the drivers. The aim of this paper is to analyze the EEG signals to detect distractive driving. Data from 10 different subjects were obtained and categorised into different frequency bands. Distractive driving is related with Theta band, so the Theta frequency band were decomposed using Discrete Wavelet Transform (DWT) and 17 different features were extracted. By enabling Principle Component Analysis (PCA) the accuracy rate was found for Cognitive Distraction and Visual Distraction using different machine learning algorithms. K Nearest Neighbour (KNN) performed well when compared to other machine learning algorithms with a better accuracy rate of 71.1%.
Total citations
20212022202320243442
Scholar articles
SP Kumar, J Selvaraj, R Krishnakumar, A Sahayadhas - 2020 fourth international conference on computing …, 2020