posted on 2009-04-23, 13:18authored byPinar Boyraz, Memis Acar, David Kerr
A system for driver drowsiness monitoring is proposed, using multi-sensor data
acquisition and investigating two decision-making algorithms, namely a fuzzy inference system
(FIS) and an artificial neural network (ANN), to predict the drowsiness level of the driver.
Drowsiness indicator signals are selected allowing non-intrusive measurements. The experimental
set-up of a driver-drowsiness-monitoring system is designed on the basis of the soughtafter
indicator signals. These selected signals are the eye closure via pupil area measurement,
gaze vector and head motion acquired by a monocular computer vision system, steering wheel
angle, vehicle speed, and force applied to the steering wheel by the driver. It is believed that, by
fusing these signals, driver drowsiness can be detected and drowsiness level can be predicted.
For validation of this hypothesis, 30 subjects, in normal and sleep-deprived conditions, are
involved in a standard highway simulation for 1.5 h, giving a data set of 30 pairs. For designing a
feature space to be used in decision making, several metrics are derived using histograms and
entropies of the signals. An FIS and an ANN are used for decision making on the drowsiness
level. To construct the rule base of the FIS, two different methods are employed and compared
in terms of performance: first, linguistic rules from experimental studies in literature and,
second, mathematically extracted rules by fuzzy subtractive clustering. The drowsiness levels
belonging to each session are determined by the participants before and after the experiment,
and videos of their faces are assessed to obtain the ground truth output for training the
systems. The FIS is able to predict correctly 98 per cent of determined drowsiness states
(training set) and 89 per cent of previously unknown test set states, while the ANN has a correct
classification rate of 90 per cent for the test data. No significant difference is observed between
the FIS and the ANN; however, the FIS might be considered better since the rule base can be
improved on the basis of new observations.
History
School
Mechanical, Electrical and Manufacturing Engineering
Citation
BOYRAZ, P., ACAR, M. and KERR, D., 2008. Multi-sensor driver drowsiness monitoring. Proceedings of the IMechE, Part D: Journal of Automobile Engineering, 222 (11), pp. 2041-2062