| Literature DB >> 28587072 |
Zuojin Li1, Liukui Chen2, Jun Peng3, Ying Wu4.
Abstract
Fatigued driving is a major cause of road accidents. For this reason, the method in this paper is based on the steering wheel angles (SWA) and yaw angles (YA) information under real driving conditions to detect drivers' fatigue levels. It analyzes the operation features of SWA and YA under different fatigue statuses, then calculates the approximate entropy (ApEn) features of a short sliding window on time series. Using the nonlinear feature construction theory of dynamic time series, with the fatigue features as input, designs a "2-6-6-3" multi-level back propagation (BP) Neural Networks classifier to realize the fatigue detection. An approximately 15-h experiment is carried out on a real road, and the data retrieved are segmented and labeled with three fatigue levels after expert evaluation, namely "awake", "drowsy" and "very drowsy". The average accuracy of 88.02% in fatigue identification was achieved in the experiment, endorsing the value of the proposed method for engineering applications.Entities:
Mesh:
Year: 2017 PMID: 28587072 PMCID: PMC5492517 DOI: 10.3390/s17061212
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1SWA waveforms under different fatigue statuses: (a) Awake; (b) drowsy; and (c) very drowsy. SWA: Steering wheel angles.
Figure 2YA waveforms under different fatigue statuses: (a) Awake; (b) drowsy; and (c) very drowsy. YA: Yaw angles.
Figure 3Framework of fatigue detection system.
Driver fatigue level criteria after evaluation.
| Driving Status | Fatigue Label | Features |
|---|---|---|
| Awake | 1 | The head stays upright, and facial expressions are rich. Attentive to the environment. Eyes open widely and blink quickly and eyeballs move actively. |
| Drowsy | 2 | Attention to the outside world decreases. Drivers make gestures like scratching faces, shaking head, winking, swallowing, sighing, deep breathing, and yawning. Eyes tend to close, blink slowly with less eyeball activity. |
| Very drowsy | 3 | Eyes close further with eyelids becoming heavier. Eyes are closing for a longer time. Drivers may nap, nod, slant their heads, and then lose the ability to drive. |
Figure 4BP Network architecture.
Figure 5The driving route between Beijing and Qinhuangdao is shown on the blue line.
Sample database.
| Serial No. of Subjects | Number of Samples | Fatigue Level |
|---|---|---|
| 910_002 | 34 | (0,1) |
| 910_004 | 48 | (0,1,2) |
| 911_003 | 29 | (0,1) |
| 912_007 | 24 | (0,1) |
| 913_002 | 23 | (0,1) |
| 913_004 | 54 | (0,1,2) |
Figure 6SWA ApEn distribution.
Figure 7YA ApEn distribution.
Detection results distributed on confusion matrix for three fatigue levels “0”, “l” and “2”.
| Detection Results | ||||
|---|---|---|---|---|
| “Awake” (Level 0) | “Drowsy” (Level 1) | “Very drowsy” (Level 2) | ||
| Expert classification | “Awake” (Level 0) | 92.50% | 7.50% | 7.00% |
| “Drowsy”(Level 1) | 7.50% | 84.60% | 14.11% | |
| “Very drowsy”(Level 2) | 0.00% | 7.90% | 78.89% | |
| Samples | 112 | 72 | 28 | |
Results comparison between five methods.
| Experiment Data | Method | Average Correct Rate (%) |
|---|---|---|
| SWA for laboratory driving conditions [ | Statistical Feature + Fisher | 82.00 |
| SWA for laboratory driving conditions [ | Statistical Feature + SVM | 87.70 |
| SWA for real driving conditions [ | ApEn Feature + Designed model | 82.07 |
| SWA for real driving conditions [ | ApEn Feature + Designed model | 78.01 |
| SWA and YA for real driving conditions (presented in this paper) | ApEn Feature + BP NN | 88.02 |