1. Field of the Invention
The present invention relates to an apparatus, a system, and a method for detecting whether a driver of a vehicle is impaired, for example by drowsiness.
2. Background of the Invention
If a driver of a vehicle becomes sleepy or is impaired in other ways, this can adversely affect driving performance. Although various methods and systems have been proposed for addressing this problem, none are satisfactory. Some of the current methods involve sensing the driver's state of awareness using a sensor that has contact with the driver's body. Other methods require the driver's head to be in a certain orientation. Still other methods require visualization of the driver's eyes. However, each of these methods has significant drawbacks.
The invention provides, among other things, a method of detecting impairment of a driver of a vehicle. The method includes sensing, using a sensor, a position of the driver's head at a plurality of time points; determining, using a microprocessor, changes in the position of the driver's head between the plurality of time points; evaluating, using a microprocessor, whether the changes in the position of the driver's head between the plurality of time points exhibit at least one of a periodic and a quasi-periodic pattern; determining whether the driver is impaired based on the pattern of the changes in the position of the driver's head; and if the driver is impaired, alerting the driver using an alarm.
The invention also provides a system for detecting impairment of a driver of a vehicle. The system includes a sensor for sensing a position of the driver's head at a plurality of time points, an alarm for altering the driver, and a microprocessor. The microprocessor is configured to determine changes in the position of the driver's head between the plurality of time points, evaluate whether the changes in the position of the driver's head between the plurality of time points exhibit at least one of a periodic and a quasi-periodic pattern, determine whether the driver is impaired based on the pattern of the changes in the position of the driver's head, and, if the driver is impaired, alert the driver using the alarm.
Various aspects of the invention will become apparent by consideration of the detailed description and accompanying drawings.
Before any embodiments of the invention are explained in detail, it is to be understood that the invention is not limited in its application to the details of construction and the arrangement of components set forth in the following description or illustrated in the following drawings. The invention is capable of other embodiments and of being practiced or of being carried out in various ways.
In various embodiments the present invention provides apparatus, systems, and methods to detect impaired drivers, including drowsy drivers. In one embodiment, an ultrasonic transceiver is positioned inside of the car headrest and aimed at the back of the driver's head in order to detect changes in the driver's head position. Statistical signal processing algorithms are then applied in both time and frequency domains to the acquired data to analyze the patterns of head motion to determine whether the driver is drowsy.
A driver who is not impaired, for example a driver who is not drowsy, does not show a regular pattern of head motions. Once the driver falls into a state of fatigue, however, head motion patterns such as nods become apparent. Accordingly, in various embodiments of the present invention, the above-mentioned statistical signal processing analysis is used to analyze and judge a driver's state and degree of fatigue or other impairment.
The unique intrinsic feature of head motion indicating occupant drowsiness is its quasi-periodicity or periodicity, which means, for example, that the drowsy driver's head will show a regular motion from front to back or vice versa, as opposed to the irregularity of other random head motions that occur when the driver is in an unimpaired driving state.
Simulation results such as those disclosed herein indicate that the auto-correlation function is a good metric for showing periodic head motions even with a low signal-to-noise ratio, i.e., if a signal is a periodic or quasi-periodic signal, its auto-correlation function will show its periodicity or quasi-periodicity. In addition, the variance and dispersion coefficients also display this unique feature.
Data analysis can also be performed in the frequency domain. The main metrics are power spectrum density and high-order spectrum estimation theory.
The data analysis methods disclosed herein have sufficient capabilities to describe the features of the signals corresponding to random head movements that are collected in embodiments of the present invention. From simulation results generated by the present inventors, it has been determined that power spectral density and high-order spectrum estimation can discern a periodic or quasi-periodic signal in the frequency domain that is consistent with previous results obtained from analyses in the time domain. Experimental results show that the preceding methods can obtain satisfying results using the comprehensive information mining techniques in both the time and frequency domains.
Embodiments of the present invention utilize ultrasonic detection of a vehicle driver's head motion to measure, analyze and judge the driver's fatigue state and degree of impairment. The principle of the method is to use ultrasonic sensors to continuously detect the relative distance of a certain fixed small area on the subject driver's head from a particular location, such as the head rest of the driver's seat. The ultrasonic sensors may be located in, on, or near various places in the vehicle, including for example in the headrest or other portions of the seat or seatback, the dashboard, the steering wheel, the visor, or the roof, to name a few possibilities. In various embodiments, the same fixed point on the back of the driver's head is detected throughout the measurements. The acquired relative distance data is then analyzed using a digital signal processor (DSP) to compute, analyze, and determine motion law of the point in time and frequency domains.
In various embodiments, the algorithms disclosed herein are applied in either the time domain or the frequency domain, and simulation data were obtained from actual measurement values.
In some embodiments, data analyses were performed in the time domain, which includes calculating variance, standard deviation, dispersion coefficient, and auto-correlation function. These metrics were selected because they can extract the characteristic values of random signals according to statistical signal processing theory, where the characteristic values are indicative of the distinctions between different signals.
In particular, the dispersion coefficient and the auto-correlation function are important metrics for these time domain analyses. The dispersion coefficient reflects the relative degree of dispersion of a group of data by itself, which is comparable with other distinct group data, because the metric unit is uniform. The greater the value is, the higher the dispersion degree. The purpose of the auto-correlation function is to analyze and judge whether or not a group of discrete data hold periodicity or quasi-periodicity dependent on the signal power.
Performance comparisons and analyses are also conducted in the frequency domain. The main frequency-domain metrics that are considered are power spectrum analysis, frequency spectrum analysis, and high-order spectrum estimation theory. The methods disclosed herein have sufficient capabilities to describe the features of random processes and random signals in the data that is collected according to the present invention.
The examples disclosed herein are based on four different driving cases: regular normal driving, random normal driving, drowsy driving and normal-drowsy driving. These are organized into two sections according to sample rate and measurement time.
In
Another factor that can contribute to noise is that the measurement point of the ultrasonic sensors may fluctuate in space. These fluctuations may be due to factors such as changes in air temperature (affecting the speed of the ultrasonic energy), in which case including a temperature sensor can be used to compensate for air temperature variations.
In some embodiments, data were collected for one minute at 3.8 Hz and the measurements from the first twenty seconds (1st group), middle twenty seconds (2nd group), and last twenty seconds (3rd group) were analyzed. In other embodiments, data were collected for two or three minutes, in which case the groups were divided up into 40-second or 60-second intervals, respectively. Other time-based divisions of the data are also possible.
Dispersion coefficients were calculated using the data of
As for the random normal driving condition (i.e. head movements of an unimpaired driver), it shows the similar curve and characteristics of a regular case. Our emphasis will be placed on drowsy driving condition.
From the graph in
This feature is unique to periodic signals. Below is a discussion of determining the specific threshold value and range.
The difference between the highest and lowest dispersion coefficient is 0.004, compared to the previous value 0.05 in regular normal driving condition (i.e. unimpaired). The extreme difference of the quasi-periodic signal in the drowsy state is much less than that of random signals obtained from a driver's head movements in the regular normal driving state.
The signal regularity will be disclosed below by means of further experimental result simulations. As for the normal-fatigue driving condition (i.e. a driver who is fatigued but not drowsy), its curve and dispersion coefficient is located between the other situations, i.e. the unimpaired driver and the drowsy driver.
The second group of simulation data comes from three different time ranges (1 min, 2 min, 3 min respectively), with four different driving simulation cases for each time range (regular normal, random normal, normal-fatigue, and fatigue driving), where the sampling rate for each group data are set to 14.4 Hz, which satisfies the Shannon Sample theorem. In this experiment, the window average filtering is removed when implementing the similar procedure. The details of the technical proposal are listed in Table 2 below.
For the 1 min regular normal driving analyzed in the time domain data, the conclusions are similar to the foregoing regular normal driving state, i.e., dispersion coefficients obtained in this latter simulation were comparable to those obtained in the simulations described above. As for the auto-correlation function, it shows no periodic signal.
Similar conclusions were reached for simulations obtained when collecting simulation data for 1 min, 2 min, and 3 min for regular normal driving and analyzed in the time domain.
For 1 min simulation data for drowsy driving analyzed in the time domain, the conclusions are similar to those discussed above for the drowsy driving state. In this simulation, the extreme difference of the dispersion comparison is 0.0085, which is far less than that of regular normal driving signal. From
For simulations of 1 min, 2 min, and 3 min of drowsy driving analyzed in the time domain, the conclusions are similar to the foregoing drowsy driving state. This data also shows that if the head motion only shows a certain quasi-periodicity or periodicity, the disclosed algorithms are likely to be able to detect the signal in both the time domain and the frequency domain.
From
From the graph, although the 1st 20 s spectrum estimation has two spectrum peaks, neither is very strong and thus it is difficult to judge whether one or both is significant. Thus, further analyses may be needed to determine the threshold.
From the graph in
From the data of
From data such as that shown above, in particular the data of
As discussed above, the detector may be an ultrasonic detector and may be situated at one or more locations in the vehicle where the system is employed, including on or in the headrest or other portions of the seat or seatback, the dashboard, the steering wheel, the visor, or the roof (
The autocorrelation function as used in embodiments of the present invention is achieved by taking the cross-correlation of a dataset with itself. The cross-correlation serves to accentuate similarities between datasets. In the case of the autocorrelation function, it serves to accentuate periodicity in a data set. Take for example a simple sine wave, as shown in
When the signal-to-noise ratio is small, it is difficult to distinguish the desired signal from the background noise, as shown in
However, the autocorrelation function brings out the periodicity in the data, as shown in
The autocorrelation function has the same period as the underlying signal, with an improved signal-to-noise ratio. In the case of the head nod associated with drowsiness, the autocorrelation looks more like what is shown in
There is in fact a broad background signal established by the non-zero rest position of the occupant's head, illustrated here by the dashed line, as shown in
In order to correctly extract the head nod this baseline must be first subtracted from the data. This is accomplished by first looking for local minima (valley detection) in the dataset and fitting these minima with a polynomial in order to subtract from the entire data set, as shown in
The baseline-corrected dataset is then searched for local maxima (peak detection) to determine the quasi-periodicity of the dataset. If the data meet the proper criteria (amplitude of movement, periodicity, etc.) then a series of head nods has been detected and the proper flag is set.
This application is the United States National Stage of International Patent Application No. PCT/US2010/039701, filed on Jun. 23, 2010, which claims priority to U.S. Provisional Application No. 61/219,639, filed Jun. 23, 2009, the contents of which are incorporated herein by reference in their entirety.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/US2010/039701 | 6/23/2010 | WO | 00 | 3/13/2012 |
Publishing Document | Publishing Date | Country | Kind |
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WO2010/151603 | 12/29/2010 | WO | A |
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