| Literature DB >> 23223151 |
Arun Sahayadhas1, Kenneth Sundaraj, Murugappan Murugappan.
Abstract
In recent years, driver drowsiness has been one of the major causes of road accidents and can lead to severe physical injuries, deaths and significant economic losses. Statistics indicate the need of a reliable driver drowsiness detection system which could alert the driver before a mishap happens. Researchers have attempted to determine driver drowsiness using the following measures: (1) vehicle-based measures; (2) behavioral measures and (3) physiological measures. A detailed review on these measures will provide insight on the present systems, issues associated with them and the enhancements that need to be done to make a robust system. In this paper, we review these three measures as to the sensors used and discuss the advantages and limitations of each. The various ways through which drowsiness has been experimentally manipulated is also discussed. We conclude that by designing a hybrid drowsiness detection system that combines non-intrusive physiological measures with other measures one would accurately determine the drowsiness level of a driver. A number of road accidents might then be avoided if an alert is sent to a driver that is deemed drowsy.Entities:
Mesh:
Year: 2012 PMID: 23223151 PMCID: PMC3571819 DOI: 10.3390/s121216937
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.(a) MiniSim; (b) NADS 2; (c) NADS 1. Reproduced with permission from (Mini Sim: http://news-releases.uiowa.edu/2010/april/041210mini-sim.html; NADS 1: http://www.popsci.com/cars/gallery/2009-07/nads-1-worlds-most-advanced-driving-sim; NADS 2: http://www.nads-sc.uiowa.edu/sim_nads2.php).
Karolinska sleepiness scale (KSS).
| 1 | Extremely alert |
| 2 | Very alert |
| 3 | Alert |
| 4 | Fairly alert |
| 5 | Neither alert nor sleepy |
| 6 | Some signs of sleepiness |
| 7 | Sleepy, but no effort to keep alert |
| 8 | Sleepy, some effort to keep alert |
| 9 | Very sleepy, great effort to keep alert, fighting sleep |
List of previous works on driver drowsiness detection using behavioral measures.
| [ | CCD micro camera with Infra-Red Illuminator | Pupil | Ada-boost | Red eye effect, Texture detection method | Ratio of eye-height and eye-width | 92% |
| [ | Camera and Infra-Red Illuminator | PERCLOS, eye closure duration, blink frequency, and 3 other | Two Kalman filters for pupil detection | Modification of the algebraic distance algorithm for conics Approximation & Finite State Machine | Fuzzy Classifier | Close to 100% |
| [ | CCD camera | Yawning | Gravity-center template and grey projection | Gabor wavelets | LDA | 91.97% |
| [ | Digital Video camera | Facial action | Gabor filter | Wavelet Decomposition | SVM | 96% |
| [ | Fire wire camera and webcam | Eye Closure Duration & Freq of eye closure | Hough Transform | Discrete Wavelet Transform | Neural Classifier | 95% |
| [ | Camera | Multi Scale dynamic features | Gabor filter | Local Binary Pattern | Ada boost | 98.33% |
| [ | IR Camera | Eye State | Gabor filter | Condensation algorithm | SVM | 93% |
| [ | Simple Camera | Eye blink | Cascaded Classifiers Algorithm detects face and Diamond searching lgorithm to trace the face | Duration of eyelid closure, No. of continuous blinks, Frequency of eye blink | Region Mark Algorithm | 98% |
| [ | Camera with IR Illuminator | PERCLOS | Haar Algorithm to detect face | Unscented Kalman filter algorithm | SVM | 99% |
List of previous works on driver drowsiness detection using physiological signals.
| [ | EEG, ECG, EoG | Optimal Wavelet Packet, Fuzzy Wavelet Packet | The Fuzzy MI-based Wavelet-Packet Algorithm | LDA, LIBLINEAR, KNN, SVM | 95–97% (31 drivers) |
| [ | ECG | Band Pass Filter | Fast Fourier Transform (FFT) | Neural Network | 90% (12 drivers) |
| [ | EEG | Independent Component Analysis Decomposition | Fast Fourier Transform | Self-organizing Neural Fuzzy Inference Network | 96.7% (6 drivers) |
| [ | EEG, EMG | Band Pass Filter & Visual Inspection | Discrete Wavelet Transform (DWT) | Artificial Neural Network (ANN) Back Propogation Algorithm (Awake, Drowsy, Sleep) | 98–99% (30 subjects) |
| [ | EEG | Low pass filter 32 Hz | 512 point Fast Fourier Transform with 448 point overlap | Mahalanobis distance | 88.7% (10 subjects) |
| [ | EoG, EMG | Filtering & Thresholding | Neighborhood search | SVM | 90% (37 subjects) |
| [ | EEG, EoG, EMG | Low pass pre Filter and Visual Inspection | Discrete Wavelet Transform | ANN | 97–98% (10 subjects) |
| [ | EEG | Least mean square algorithm and Visual Inspection | Wavelet packet analysis with Daubechies 10 as mother wavelet | Hidden Markov Model | 84% (50 subjects) |
Advantages and limitations of various measures.
| [ | Subjective measures | Questionnaire | Subjective | Not possible in real time |
| [ | Vehicle based measures | Deviation from the lane position | Nonintrusive | Unreliable |
| [ | Behavioral Measures | Yawning | Non-intrusive; Ease of use | Lighting condition Background |
| [ | Physiological measures | Statistical & energy features derived from ECG EoG EEG | Reliable; Accurate | Intrusive |
Figure 2.A sample hybrid drowsiness detection system using multiple sensors.