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1、精选优质文档-倾情为你奉上A high speed tri-vision system for automotive applicationsMarc Anthony Azzopardi & Ivan Grech & Jacques LeconteAbstractPurpose Cameras are excellent ways of non-invasively monitoring the interior and exterior of vehicles. In particular, high speed stereovision and multivision systems ar
2、e important for transport applications such as driver eye tracking or collision avoidance. This paper addresses the synchronisation problem which arises when multivision camera systems are used to capture the high speed motion common in such applications. MethodsAn experimental, high-speed tri-visio
3、n camera system intended for real-time driver eye-blink and saccade measurement was designed, developed, implemented and tested using prototype, ultra-high dynamic range, automotive- grade image sensors specifically developed by E2V (formerly Atmel) Grenoble SA as part of the European FP6 project SE
4、NSATION (advanced sensor development for attention stress, vigilance and sleep/wakefulness monitoring). Results The developed system can sustain frame rates of 59.8 Hz at the full stereovision resolution of 1280 480 but this can reach 750 Hz when a 10 k pixel Region of Interest (ROI) is used, with a
5、 maximum global shutte speed of 1/48000 s and a shutter efficiency of 99.7%. The data can be reliably transmitted uncompressed over standard copper Camera-Link cables over 5 metres. The synchronisation error between the left and right stereo images is less than 100 ps and this has been verified both
6、 electrically and optically. Synchronisation is auto- matically established at boot-up and maintained during resolution changes. A third camera in the set can be configured independently. The dynamic range of the 10bit sensors exceeds 123 dB with a spectral sensitivity extending well into the infra-
7、red range. Conclusion The system was subjected to a comprehensive testing protocol, which confirms that the salient require- ments for the driver monitoring application are adequately met and in some respects, exceeded. The synchronization technique presented may also benefit several other auto- mot
8、ive stereovision applications including near and far- field obstacle detection and collision avoidance, road condition monitoring and others.KeywordsSynchronisation . High-speed automotive multivision . Active safety . Driver monitoring . Sensors1 IntroductionOver the coming years, one of the areas
9、of greatest research and development potential will be that of automotive sensor systems and telematics , . In particular, there is a steeply growing interest in the utilisation of multiple cameras within vehicles to augment vehicle Human-Machine Interfacing (HMI) for safety, comfort and security.Fo
10、r external monitoring applications, cameras are emerging as viable alternatives to systems such Radio, Sound and Light/Laser Detection and Ranging (RADAR, SODAR, LADAR/LIDAR). The latter are typically rather costly and either have poor lateral resolution or require mechanical moving parts.For vehicl
11、e cabin applications, cameras outshine other techniques with their ability to collect large amounts of information in a highly unobtrusive way. Moreover, cameras can be used to satisfy several applications at once by re-processing the same vision data in multiple ways, thereby reducing the total num
12、ber of sensors required to achieve equivalent functionality. However, automotive vision still faces several open challenges in terms of optoelectronic-performance, size, reliability, power con- sumption, sensitivity, multi-camera synchronisation, inter- facing and cost.In this paper, several of thes
13、e problems are addressed. As an example, driver head localisation, point of gaze detection and eye blink rate measurement is considered for which the design of a dash-board-mountable automotive stereovision camera system is presented. This was developed as part of a large FP6 Integrated Project - SE
14、NSATION (Advanced Sensor Development for Attention, Stress, Vigilance and Sleep/Wakefulness Monitoring). The overarching goal of extendable to multivision systems .The camera system is built around a matched set of prototype, ultra-high dynamic range, automotive-grade, image sensors specifically dev
15、eloped and fabricated by E2V Grenoble SA for this application. The sensor which is a novelty in its own right, is the AT76C410ABA CMOS monochrome automotive image sensor. This sensor imple- ments a global shutter to allow distortion-free capture of fast motion. It also incorporates an on- chipMulti-
16、ROI feature with up to eight Regions Of Interest (ROI) with pre- programming facility and allows fast switching from one image to another. In this way, several real-time parallel imaging processing tasks can be carried out with one sensor. Each ROI is independently programmableon-the-flywith respect
17、 to integration time, gain, sub-sampling/binning, position, width and height.A fairly comprehensive series of“bench tests”were conducted in order to test the validity of the new concepts and to initially verify the reliability of the system across various typical automotive operating conditions. Add
18、itional rigorous testing would of course be needed to guarantee a mean time before failure (MTBF) and to demonstrate the efficacy of the proposed design techniques over statistically significant production quantities.2 Application backgroundThe set of conceivable automotive camera applications is an
19、 ever-growing list with some market research reports claiming over 10 cameras will be required per vehicle The incomplete list includes occupant detection, occupant classification, driver recognition, driver vigilance and drowsiness monitoring , road surface condition moni- toring, intersection assi
20、stance lane-departure warning , blind spot warning, surround view, collision warning, mitigation or avoidance, headlamp control, accident record-ing, vehicle security, parking assistance, traffic sign detection adaptive cruise control and night/synthetic vision (Fig. 2.1 Cost considerationsThe autom
21、otive sector is a very cost-sensitive one and the monetary cost per subsystem remains an outstanding issue which could very well be the biggest hurdle in the way of full deployment of automotive vision. The supply-chain industry has been actively addressing the cost dilemma by introducing Field Prog
22、rammable Gate Array (FPGA) vision processing and by moving towards inexpensive image sensors based on Complementary Metal Oxide Semiconductor (CMOS) technology Much has been borrowed from other very large embedded vision markets which are also highly cost-sensitive: These are mobile telephony and po
23、rtable computing. However, automotive vision pushes the bar substantially higher in terms of performance requirements. The much wider dynamic range, higher speed, global shuttering, and excellent infra-red sensitivity are just a few of the characteristics that set most automotive vision applications
24、 apart. This added complex- ity increases cost. However, as the production volume picks up, unit cost is expected to drop quite dramatically by leveraging on the excellent economies of scale afforded by the CMOS manufacturing process.Some groups have been actively developing and pro- moting ways of
25、reducing the number of cameras required per vehicle. Some of these methods try to combine disparate applications to re-use the same cameras. Other techniques (and products) have emerged that trade-off some accuracy and reliability to enable the use of monocular vision in scenarios which traditionall
26、y required two or more cameras , . Distance estimation for 3D obstacle localisation is one such example. Such tactics will serve well to contain cost in the interim. However, it is expected that the cost of the imaging devices will eventually drop to a level where it will no longer be the determinin
27、g factor in the overall cost of automotive vision systems. At this point, we argue that Fig. 1Some automotive vision applicationsreliability, performance and accuracy consid- erations will again reach the forefront.In this paper the cost issue is addressed, but in a different way. Rather than discar
28、ding stereo- and multi-vision altogether, a low-cost (but still high-performance) technique for synchronously combining multiple cameras is pre- sented. Cabling requirements are likewise shared, resulting in a reduction in the corresponding cost and cable harness weight savings.2.2 The role of high
29、speed visionA number of automotive vision applications require high frame-rate video capture. External applications involving high relative motion such as traffic sign, oncoming traffic or obstacle detection are obvious candidates. The need for high speed vision is perhaps less obvious in the interi
30、or of a vehicle. However, some driver monitoring applications can get quite demanding in this respect. Eye-blink and saccade measurement, for instance, is one of the techniques that may be employed to measure a drivers state of vigilance and to detect the onset of sleep , It so happens that these ar
31、e also some of the fastest of all human motion and accurate rate of change measurements may require frame rates running up to several hundred hertz. Other applica- tions such as occupant detection and classification can be accommodated with much lower frame rates but then the same cameras may occasi
32、onally be required to capture high speed motion for visual-servoing such as when modulating airbag release or seatbelt tensioning during a crash situation.2.3 A continued case for stereovision/multivisionSeveral of the applications mentioned, stand to benefit from the use of stereovision or multivis
33、ion sets of cameras operating in tandem. This may be necessary to extend the field of view or to increase diversity and ruggedness and also to allow accurate stereoscopic depth estimation Then, of course, multivision is indeed one of the most effective ways of counteracting optical occlusions.Monocu
34、lar methods have established a clear role (alongside stereoscopy) but they rely on assumptions that may not always be true or consistently valid. Assumptions such as uniform parallel road marking, continuity of road texture, and operational vehicle head or tail lights are somewhat utopian and real w
35、orld variability serves to diminish reliability. Often, what is easily achievable with stereoscopy can prove to be substantially complex with monocular approaches . The converse may also be true, because stereovision depends on the ability to unambigu- ously find corresponding features in multiple v
36、iews. Stereovision additionally brings a few challenges of its own, such as the need for a large baseline camera separation, sensitivity to relative camera positioning and sensitivity to inter-camera synchronisation.Not surprisingly, it has indeed been shown that better performance (than any single
37、method) can be obtained by combining the strengths of both techniques , . As the cost issue fades away, monovision and multivision should therefore be viewed as complimentary rather than competing techniques. This is nothing but yet another example of how vision data can be processed and interpreted
38、 in multiple ways to improve reliability and obtain additional information.In this paper, the benefit of combining stereo and monocular methods is demonstrated at the hardware level. A tri-vision camera is presented that utilises a synchronized stereovision pair of cameras for 3D head localisation a
39、nd orientation measurement. Using this information, a third monocular high-speed camera can then be accurately controlled to rapidly track both eyes of the driver using the multi-ROI feature. Such a system greatly economises on bandwidth by limiting the high speed capture to very small and specific
40、regions of interest. This compares favourably to the alternative method of running a stereovision system at high frame rate and at full resolution.2.4 The importance for high synchronisationOne of the basic tenets of multivision systems is the accurate temporal correspondence between frames captured
41、 by the different cameras in the set. Even a slight frequency or phase difference between the image sampling processes of the cameras would lead to difficulties during transmis- sion and post processing. Proper operation usually rests on the ability to achieve synchronised, low latency video capture
42、 between cameras in the same multivision set. Moreover, this requirement extends to the video transport mechanism which must also ensure synchronous delivery to the central processing hubs. The need for synchronization depends on the speed of the motion to be captured rather than the actual frame ra
43、te employed, but in general, applications which require high speed vision will often also require high synchronisation.Interestingly, even preliminary road testing of automo- tive vision systems reveals another sticky problem camera vibration. This is a problem that has already been faced many years
44、 ago by the first optical systems to enter mainstream vehicle use The optical tracking mechanisms used in car-entertainment CDROM/DVD drives are severely affected by automotive vibration and fairly complex (and fairly expensive) schemes are required to mitigate these effects . The inevitable vibrati
45、on essentially converts nearly all mobile application scenarios into high speed vision problems because even low amplitude camera motion translates into significant image motion. The problem gets worse as the subject distance and/or optical focal length increases.Mounting the cameras more rigidly he
46、lps by reducing the vibration amplitude, but it also automatically increases the vibration frequency which negates some of the gain. Active cancellation of vibration is no new topic ; however, this usually comes at a disproportionate cost. Thus, while high frame rates may not be important in all sit
47、uations, short aperture times and high synchronization remain critically important to circumvent the vibration problem.A small numerical example quickly puts the problem into perspective. Consider a forward looking camera for in- lane obstacle monitoring based on a inch, 1024512 image sensor array w
48、ith an active area of 5.72.9 mm behind a 28 mm (focal length) lens. If such a system is subjected to a modest 10 mrad amplitude, sinusoidal, angular vibration at 100 Hz, simple geometric optics implies a peak pixel shift rate of around 32,000 pixels/sec.Thus, if the error in correspondence between l
49、eft and right stereo frames is to be limited to a vertical shift comparable to one pixel, a stereovision system would require a frame synchronisation accuracy which is better than 30 microseconds. Then on the road, the levels of vibration can get significantly worse and this does not yet take into account the additional high speed motion that may be present in the field of view. In summary, synchronization is a problem that has been largely overlooked and will become mor
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