M. Muzammel, M. Z. Yusoff, and F. Meriaudeau, Event-Related Potential Responses of Motorcyclists towards Rear End Collision Warning System
URL : https://hal.archives-ouvertes.fr/hal-01862733

M. Muzammel, M. Z. Yusoff, and F. Meriaudeau, Rear-end vision-based collision detection system for motorcyclists, Journal of Electronic Imaging, vol.26, pp.33002-033002, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01577302

M. Muzammel, M. Z. Yusoff, M. N. Saad, and A. S. Malik, Audio Visual Tracking of a Speaker Based on FFT and Kalman Filter, ARPN Journal of Engineering and Applied Sciences, vol.11, pp.8947-8951, 2016.

M. Muzammel, M. Z. Yusoff, and F. Meriaudeau, Motorcycle rear end collision detections based on audio and visual information

M. Muzammel, M. Z. Yusoff, A. S. Malik, M. N. Saad, and F. Meriaudeau, Motorcyclists safety system to avoid rear end collisions based on acoustic signatures, Thirteenth International Conference on Quality Control by Artificial Vision, p.1033818, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01577015

M. Muzammel, M. Z. Yusoff, A. S. Malik, M. N. Saad, and F. Meriaudeau, Studying the response of drivers against different collision warning systems: a review, Thirteenth International Conference on Quality Control by Artificial Vision, p.1033816, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01794291

M. T. Muslim, H. Selamat, A. J. Alimin, N. M. Rohi, and M. F. Hushim, A review on retrofit fuel injection technology for small carburetted motorcycle engines towards lower fuel consumption and cleaner exhaust emission, Renewable and Sustainable Energy Reviews, vol.35, pp.279-284, 2014.

W. H. Organization, Global status report on road safety 2015, 2015.

M. M. Manan, A. Várhelyi, A. K. Çelik, and H. H. Hashim, Road characteristics and environment factors associated with motorcycle fatal crashes in Malaysia, IATSS Research, 2017.

A. Ariffin, A. Hamzah, N. Paiman, M. Solah, S. Husin et al., Risk factors identification and issues pertaining to road collisions involving pedestrian and motorcycle, 2017.

M. Manan, Factors Associated with Motorcylists' Safety at Access Points along Primary Roads in Malaysia, Bulletin, vol.290, 2014.

S. Helman, M. Palmer, C. Haines, and C. Reeves, The effect of two novel lighting configurations on the conspicuity of motorcycles: a roadside observation study in New Zealand, p.682, 2014.

R. B. Noland and Y. Zhou, Has the great recession and its aftermath reduced traffic fatalities?, Accident Analysis & Prevention, vol.98, pp.130-138, 2017.

S. Islam and J. Brown, A comparative injury severity analysis of motorcycle at-fault crashes on rural and urban roadways in Alabama, Accident Analysis & Prevention, vol.108, pp.163-171, 2017.

M. Lin and J. F. Kraus, A review of risk factors and patterns of motorcycle injuries, Accident Analysis & Prevention, vol.41, pp.710-722, 2009.

N. H. Rahman, K. A. Baharuddin, and S. M. Mohamad, Burden of motorcycle-related injury in Malaysia, International journal of emergency medicine, vol.8, pp.1-6, 2015.

T. A. Trinh and T. P. Le, Motorcycle Helmet Usage among Children Passengers: Role of Parents as Promoter, Procedia Engineering, vol.142, pp.10-17, 2016.

M. M. Manan, J. S. Ho, S. T. Arif, M. R. Ghani, and A. Várhelyi, Factors associated with motorcyclists' speed behaviour on Malaysian roads, Transportation research part F: traffic psychology and behaviour, vol.50, pp.109-127, 2017.

A. K. Abbas, A. F. Hefny, and F. M. Abu-zidan, Does wearing helmets reduce motorcycle-related death? A global evaluation, Accident Analysis & Prevention, vol.49, pp.249-252, 2012.

A. L. Demarco, D. D. Chimich, J. C. Gardiner, R. W. Nightingale, and G. P. Siegmund, The impact response of motorcycle helmets at different impact severities, Accident Analysis & Prevention, vol.42, pp.1778-1784, 2010.

L. De-rome, R. Ivers, M. Fitzharris, W. Du, N. Haworth et al., Motorcycle protective clothing: protection from injury or just the weather?, Accident Analysis & Prevention, vol.43, pp.1893-1900, 2011.

A. H. Ariffin, M. S. Solah, A. Hamzah, M. H. Isa, Z. M. Jawi et al.,

. Yusoff, Exploratory study on airbag suitability for low engine capacity motorcycles, Jurnal Teknologi, vol.78, pp.65-69, 2016.

G. F. Fowler, R. M. Ray, S. Huang, K. Zhao, and T. A. Frank, An Examination of Motorcycle Antilock Brake Systems in Reducing Crash Risk

. Asce-asme, Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering, vol.2, pp.21006-21007, 2016.

P. Kalaiselvan, K. Ramarethinam, and P. Pandiaraj, Design of Stability Control Motorbike with Abs and Crash Location Sensing, International Journal of Science and Research (IJSR), vol.3, pp.281-285, 2014.

P. D. Filippi, M. Tanelli, M. Corno, S. M. Savaresi, and M. D. Santucci, Electronic stability control for powered two-wheelers, IEEE transactions on control systems technology, vol.22, pp.265-272, 2014.

E. D. Bekiaris, A. Spadoni, and S. I. Nikolaou, SAFERIDER Project: new safety and comfort in Powered Two Wheelers, 2nd Conference on Human System Interactions (HSI'09, pp.600-602, 2009.

F. Biral, M. Da-lio, R. Lot, and R. Sartori, An intelligent curve warning system for powered two wheel vehicles, European transport research review, vol.2, pp.147-156, 2010.

C. Fang, W. Hsu, C. Ma, and S. Chen, A vision-based safety driver assistance system for motorcycles on a smartphone, IEEE 17th International Conference on Intelligent Transportation Systems (ITSC), pp.328-333, 2014.

S. Keng, Helmet use and motorcycle fatalities in Taiwan, Accident Analysis & Prevention, vol.37, pp.349-355, 2005.

P. Savolainen and F. Mannering, Probabilistic models of motorcyclists' injury severities in single-and multi-vehicle crashes, Accident Analysis & Prevention, vol.39, pp.955-963, 2007.

C. Sorbie, Angels on the Catwalk?, Orthopedics, vol.27, pp.549-549, 2004.

T. Allen, S. Newstead, M. Lenné, R. Mcclure, P. Hillard et al., Contributing factors to motorcycle injury crashes in Victoria, Australia, Transportation research part F: traffic psychology and behaviour, vol.45, pp.157-168, 2017.

N. M. Rogers and J. W. Zellner, Factors and status of motorcycle airbag feasibility research, Seventeenth international technical conference on experimental safety of vehicles, 2001.

Y. Kobayashi and T. Makabe, Crash detection method for motorcycle airbag system with sensors on the front fork, 23rd International Technical Conference on the Enhanced Safety of Vehicles, 2013.

Y. Aikyo, Y. Kobayashi, T. Sato, T. Akashi, and M. Ishiwatari, Study on Airbag Concept for Motorcycles Using Opposing Vehicle as Reaction Structure, SAE International Journal of Engines, vol.9, pp.473-482, 2015.

G. Savino, M. Pierini, and N. Baldanzini, Decision logic of an active braking system for powered two wheelers, Proceedings of the Institution of Mechanical Engineers, Part D: Journal of automobile engineering, vol.226, pp.1026-1036, 2012.

F. Giovannini, G. Savino, M. Pierini, and N. Baldanzini, Analysis of the minimum swerving distance for the development of a motorcycle autonomous braking system, Accident Analysis & Prevention, vol.59, pp.170-184, 2013.

N. Ghatwai, V. Harpale, and M. Kale, Vehicle to vehicle communication for crash avoidance system, International Conference on Computing Communication Control and automation (ICCUBEA), pp.1-3, 2016.

R. Zhang, L. Cao, S. Bao, and J. Tan, A method for connected vehicle trajectory prediction and collision warning algorithm based on V2V communication, International Journal of Crashworthiness, vol.22, pp.15-25, 2017.

F. Meinl, M. Stolz, M. Kunert, and H. Blume, An experimental high performance radar system for highly automated driving, IEEE MTT-S International Conference on Microwaves for Intelligent Mobility (ICMIM, pp.71-74, 2017.

X. Zhang, W. Xu, C. Dong, and J. M. Dolan, Efficient L-shape fitting for vehicle detection using laser scanners, IEEE Intelligent Vehicles Symposium, pp.54-59, 2017.

F. Jiménez, J. E. Naranjo, O. Gómez, and J. J. Anaya, Vehicle tracking for an evasive manoeuvres assistant using low-cost ultrasonic sensors, Sensors, vol.14, pp.22689-22705, 2014.

Y. Kuo, N. Pai, and Y. Li, Vision-based vehicle detection for a driver assistance system, Computers & Mathematics with Applications, vol.61, pp.2096-2100, 2011.

S. Sivaraman and M. M. Trivedi, Looking at vehicles on the road: A survey of vision-based vehicle detection, tracking, and behavior analysis, IEEE Transactions on Intelligent Transportation Systems, vol.14, pp.1773-1795, 2013.

M. I. Arenado, J. M. Oria, C. Torre-ferrero, and L. A. Rentería, Monovision-based vehicle detection, distance and relative speed measurement in urban traffic, IET Intelligent Transport Systems, vol.8, pp.655-664, 2014.

L. Tsai, J. Hsieh, and K. Fan, Vehicle detection using normalized color and edge map, IEEE transactions on Image Processing, vol.16, pp.850-864, 2007.

S. S. Teoh and T. Bräunl, Symmetry-based monocular vehicle detection system, Machine Vision and Applications, pp.1-12, 2012.

T. Kalinke, C. Tzomakas, and W. V. Seelen, A texture-based object detection and an adaptive model-based classification, Procs. IEEE Intelligent Vehicles Symposium '98, 1998.

C. Wang, S. Huang, and L. Fu, Driver assistance system for lane detection and vehicle recognition with night vision, IEEE International Conference on Intelligent Robots and Systems (IROS 2005, pp.3530-3535, 2005.

C. Wong, W. Siu, S. Barnes, and P. Jennings, Low relative speed moving vehicle detection using motion vectors and generic line features, IEEE International Conference on Consumer Electronics (ICCE) 2015, pp.208-209

K. F. Hussain and G. S. Moussa, On-road vehicle classification based on random neural network and bag-of-visual words, Probability in the Engineering and Informational Sciences, vol.30, pp.403-412, 2016.

S. Shantaiya, K. Verma, and K. K. Mehta, Multiple class image-based vehicle classification using soft computing algorithms, Int. Arab J. Inf. Technol, vol.13, pp.835-841, 2016.

G. S. Moussa, Vehicle type classification with geometric and appearance attributes, International Journal of Civil, Architectural Science and Engineering, vol.8, pp.273-278, 2014.

Z. Xiang, X. Huang, and Y. Zou, An Effective and Robust Multi-view Vehicle Classification Method Based on Local and Structural Features, IEEE Second International Conference on Multimedia Big Data (BigMM), pp.68-73, 2016.

K. Abdulrahim and R. A. Salam, Traffic surveillance: A review of vision based vehicle detection, recognition and tracking, International Journal of Applied Engineering Research, vol.11, pp.713-726, 2016.

T. Toyoda, N. Ono, S. Miyabe, T. Yamada, and S. Makino, Traffic monitoring with ad-hoc microphone array, 14th International Workshop on Acoustic Signal Enhancement (IWAENC), pp.318-322, 2014.

M. L. Shah and P. D. Mehta, Classification of vehicles using adaptive neuro fuzzy inference system, IEEE Students' Conference on Electrical, Electronics and Computer Science (SCEECS), pp.1-6, 2014.

A. Wieczorkowska, E. Kubera, T. S?owik, and K. Skrzypiec, Spectral features for audio based vehicle and engine classification, Journal of Intelligent Information Systems, pp.1-26, 2017.

V. Tyagi, S. Kalyanaraman, and R. Krishnapuram, Vehicular traffic density state estimation based on cumulative road acoustics, IEEE Transactions on Intelligent Transportation Systems, vol.13, pp.1156-1166, 2012.

N. A. Rahim, M. Paulraj, and A. Adom, Heterogeneous multi-classifier for moving vehicle noise classification, 7th International Conference on Intelligent Systems and Control (ISCO), pp.250-255, 2013.

E. Kubera, A. Wieczorkowska, and K. Skrzypiec, Audio-based hierarchic vehicle classification for intelligent transportation systems, International Symposium on Methodologies for Intelligent Systems, pp.343-352, 2015.

E. Alexandre, L. Cuadra, S. Salcedo-sanz, A. Pastor-sánchez, and C. Casanova-mateo, Hybridizing extreme learning machines and genetic algorithms to select acoustic features in vehicle classification applications, Neurocomputing, vol.152, pp.58-68, 2015.

A. Mayvan, S. Beheshti, and M. Masoom, Classification of vehicles based on audio signals using quadratic discriminant analysis and high energy feature vectors, International Journal on Soft Computing, vol.6, p.53, 2015.

M. P. Paulraj, A. H. Adom, S. Sundararaj, and N. B. Rahim, Moving vehicle recognition and classification based on time domain approach, Procedia Engineering, vol.53, pp.405-410, 2013.

J. Fagerlönn, Distracting effects of auditory warnings on experienced drivers, The 16th International Conference on Auditory Display (ICAD-2010), 2010.

X. Yan, Q. Xue, L. Ma, and Y. Xu, Driving-simulator-based test on the effectiveness of auditory red-light running vehicle warning system based on time-to-collision sensor, Sensors, vol.14, pp.3631-3651, 2014.

C. Ho, N. Reed, and C. Spence, Assessing the effectiveness of "intuitive" vibrotactile warning signals in preventing front-to-rear-end collisions in a driving simulator, Accident Analysis & Prevention, vol.38, pp.988-996, 2006.

J. Scott and R. Gray, A comparison of tactile, visual, and auditory warnings for rear-end collision prevention in simulated driving, Human factors, vol.50, pp.264-275, 2008.

R. Mohebbi, R. Gray, and H. Z. Tan, Driver reaction time to tactile and auditory rear-end collision warnings while talking on a cell phone, Human Factors, vol.51, pp.102-110, 2009.

F. Naujoks, A. Kiesel, and A. Neukum, Cooperative warning systems: The impact of false and unnecessary alarms on drivers' compliance, Accident Analysis & Prevention, vol.97, pp.162-175, 2016.

M. L. Aust, J. Engström, and M. Viström, Effects of forward collision warning and repeated event exposure on emergency braking, Transportation research part F: traffic psychology and behaviour, vol.18, pp.34-46, 2013.

M. Bueno, C. Fabrigoule, D. Ndiaye, and A. Fort, Behavioural adaptation and effectiveness of a Forward Collision Warning System depending on a secondary cognitive task, Transportation research part F: traffic psychology and behaviour, vol.24, pp.158-168, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00990242

J. Kazazi, S. Winkler, and M. Vollrath, Accident prevention through visual warnings: how to design warnings in head-up display for older and younger drivers, IEEE 18th International Conference on Intelligent Transportation Systems (ITSC) 2015, pp.1028-1034

F. Bella and M. Silvestri, Effects of directional auditory and visual warnings at intersections on reaction times and speed reduction times, Transportation research part F: traffic psychology and behaviour, vol.51, pp.88-102, 2017.

F. Meng, R. Gray, C. Ho, M. Ahtamad, and C. Spence, Dynamic vibrotactile signals for forward collision avoidance warning systems, Human factors, vol.57, pp.329-346, 2015.

F. Meng and C. Spence, Tactile warning signals for in-vehicle systems, vol.75, pp.333-346, 2015.

I. Politis, S. Brewster, and F. Pollick, To beep or not to beep?: Comparing abstract versus language-based multimodal driver displays, Proceedings of the 33rd Annual ACM Conference on Human Factors in Computing Systems, pp.3971-3980, 2015.

C. Lin, K. Huang, C. Chao, J. Chen, T. Chiu et al., Tonic and phasic EEG and behavioral changes induced by arousing feedback, NeuroImage, vol.52, pp.633-642, 2010.

C. Lin, K. Huang, C. Chuang, L. Ko, and T. Jung, Can arousing feedback rectify lapses in driving? Prediction from EEG power spectra, Journal of neural engineering, vol.10, p.56024, 2013.

Y. Wang, K. Huang, C. Wei, T. Huang, L. Ko et al., Developing an EEG-based on-line closed-loop lapse detection and mitigation system, Frontiers in neuroscience, vol.8, 2014.

K. Huang, T. Huang, C. Chuang, J. King, Y. Wang et al., An EEG-based fatigue detection and mitigation system, International journal of neural systems, vol.26, p.1650018, 2016.

C. Berka, D. J. Levendowski, P. Westbrook, G. Davis, M. N. Lumicao et al., Implementation of a closed-loop real-time EEG-based drowsiness detection system: Effects of feedback alarms on performance in a driving simulator, 1st International Conference on Augmented Cognition, pp.151-170, 2005.

M. Bueno, C. Fabrigoule, P. Deleurence, D. Ndiaye, and A. Fort, An electrophysiological study of the impact of a Forward Collision Warning System in a simulator driving task, Brain research, vol.1470, pp.69-79, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00855980

M. Bueno, A. Fort, M. Francois, D. Ndiaye, P. Deleurence et al., Effectiveness of a Forward Collision Warning System in simple and in dual task from an electrophysiological perspective, Neuroscience letters, vol.541, pp.219-223, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01218111

A. Fort, B. Collette, M. Bueno, P. Deleurence, and A. Bonnard, Impact of totally and partially predictive alert in distracted and undistracted subjects: An event related potential study, Accident Analysis & Prevention, vol.50, pp.578-586, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00874302

Z. Khaliliardali, R. Chavarriaga, L. A. Gheorghe, and J. D. Millán, Detection of anticipatory brain potentials during car driving, 2012 Annual International Conference, pp.3829-3832, 2012.

J. J. Tecce, Contingent negative variation (CNV) and psychological processes in man, Psychological bulletin, vol.77, p.73, 1972.

J. Polich, Updating P300: an integrative theory of P3a and P3b, Clinical neurophysiology, vol.118, pp.2128-2148, 2007.

R. Ortega, V. López, and F. Aboitiz, Voluntary modulations of attention in a semantic auditory-visual matching Task: an ERP study, Biological research, vol.41, pp.453-460, 2008.

R. Ramli and J. Oxley, Motorcycle helmet fixation status is more crucial than helmet type in providing protection to the head, Injury, vol.47, pp.2442-2449, 2016.

H. S. Bazargani, M. Saadati, R. Rezapour, and L. Abedi, Determinants and barriers of helmet use in Iranian motorcyclists: a systematic review, Journal of injury and violence research, vol.9, p.61, 2017.

B. J. Russo, T. P. Barrette, J. Morden, P. T. Savolainen, and T. J. Gates, Examination of factors associated with use rates after transition from a universal to partial motorcycle helmet use law, Traffic injury prevention, vol.18, pp.95-101, 2017.

F. Dapilah, B. Y. Guba, and E. Owusu-sekyere, Motorcyclist characteristics and traffic behaviour in urban Northern Ghana: Implications for road traffic accidents, Journal of Transport & Health, vol.4, pp.237-245, 2017.

L. De-rome, L. Meredith, R. Ivers, and J. Brown, Validation of the principles of injury risk zones for motorcycle protective clothing, Journal of safety research, vol.50, pp.83-87, 2014.

Y. X. Yan, L. He, J. Jin, and J. W. Tao, Analysis Based on Impact Resistance of Motorcycle Clothing Fabric Performance, Applied Mechanics and Materials, pp.439-442, 2014.

N. Mao, High performance textiles for protective clothing, pp.91-143, 2014.

L. De-rome, E. A. Taylor, R. J. Croft, J. Brown, M. Fitzharris et al., Thermal and cardiovascular strain imposed by motorcycle protective clothing under Australian summer conditions, Ergonomics, vol.59, pp.504-513, 2016.

Y. Aikyo, Y. Kobayashi, T. Akashi, and M. Ishiwatari, Feasibility study of airbag concept applicable to motorcycles without sufficient reaction structure, Traffic injury prevention, vol.16, pp.148-152, 2015.

D. Loftén, S. Persson, and R. Sjöblom, First Side Curtain Airbag for Commercial Vehicles, ATZ worldwide, vol.119, pp.16-21, 2017.

D. Bendjaballah, A. Bouchoucha, M. Sahli, and J. Gelin, Numerical modelling and experimental analysis of the passenger side airbag deployment in out-of-position, International Journal of Crashworthiness, pp.1-14, 2017.

C. Spelta, V. Manzoni, A. Corti, A. Goggi, and S. M. Savaresi, Smartphonebased vehicle-to-driver/environment interaction system for motorcycles, IEEE Embedded Systems Letters, vol.2, pp.39-42, 2010.

M. Song, S. Mclaughlin, and Z. Doerzaph, An on-road evaluation of connected motorcycle crash warning interface with different motorcycle types, Transportation Research Part C: Emerging Technologies, vol.74, pp.34-50, 2017.

M. H. Basri, A. Zulkifli, N. Ismail, S. C. Mat, and M. Mahadzir, Analysis of Concurrent Brake Application for Underbone Motorcycle, Advanced Materials Research, pp.107-111, 2014.

M. Kato, T. Matsuto, K. Tanaka, H. Ishihara, T. Hayashi et al., Combination of antilock brake system (ABS) and combined brake system (CBS) for motorcycles, 1996.

E. R. Teoh, Effectiveness of antilock braking systems in reducing motorcycle fatal crash rates, Traffic injury prevention, vol.12, pp.169-173, 2011.

M. Rizzi, A. Kullgren, and C. Tingvall, The combined benefits of motorcycle antilock braking systems (ABS) in preventing crashes and reducing crash severity, Traffic injury prevention, vol.17, pp.297-303, 2016.

M. Rizzi, J. Strandroth, and C. Tingvall, The effectiveness of antilock brake systems on motorcycles in reducing real-life crashes and injuries, Traffic injury prevention, vol.10, pp.479-487, 2009.

B. Fildes, P. Newstead, M. Rizzi, L. Budd, and M. Fitzharris, Evaluation of the effectiveness of anti-lock braking systems on motorcycle safety in

. Australia, , vol.3800, 2015.

Y. Watanabe and M. W. Sayers, The Effect of a New Stability Control on the Simulated Cornering Behavior of Motorcycles, 2016.

T. Lich, W. G. Block, S. Prashanth, and B. Heiler, Motorcycle stability control-the next generation of motorcycle safety and riding dynamics, SAE International journal of engines, vol.9, pp.491-498, 2015.

G. Savino, A. Penumaka, M. Pierini, N. Baldanzini, and B. Roessler, Design of the decision logic for a ptw integrated safety system, Proceedings of the 21st ESV Conference, pp.1-12, 2009.

G. Kumarasamy, N. K. Prakash, and P. S. Mohan, Rider assistance system with an active safety mechanism, IEEE International Conference on Computational Intelligence and Computing Research (ICCIC), pp.1-6, 2015.

A. Amodio, G. Panzani, and S. M. Savaresi, Design of a lane change driver assistance system, with implementation and testing on motorbike, IEEE Intelligent Vehicles Symposium, pp.947-952, 2017.

J. Faryabi, M. Rajabi, and S. Alirezaee, Evaluation of the use and reasons for not using a helmet by motorcyclists admitted to the emergency ward of shahid bahonar hospital in kerman, Archives of trauma research, vol.3, 2014.

E. Martinez, M. Diaz, J. Melenchon, J. A. Montero, I. Iriondo et al., Driving assistance system based on the detection of head-on collisions, IEEE Intelligent vehicles symposium, pp.913-918, 2008.

J. D. Alonso, E. R. Vidal, A. Rotter, and M. Muhlenberg, Lane-change decision aid system based on motion-driven vehicle tracking, IEEE Transactions on Vehicular Technology, vol.57, pp.2736-2746, 2008.

W. Liu, X. Wen, B. Duan, H. Yuan, and N. Wang, Rear vehicle detection and tracking for lane change assist, IEEE Intelligent Vehicles Symposium, pp.252-257, 2007.

R. O'malley, M. Glavin, and E. Jones, Vision-based detection and tracking of vehicles to the rear with perspective correction in low-light conditions, IET Intelligent Transport Systems, vol.5, pp.1-10, 2011.

C. Wu, C. Lin, H. Lin, and H. Chung, Adjacent lane detection and lateral vehicle distance measurement using vision-based neuro-fuzzy approaches, Journal of applied research and technology, vol.11, pp.251-258, 2013.

T. Lee, J. Oh, and J. Kim, On-road vehicle detection based on appearance features for autonomous vehicles, 15th International Conference on Control, Automation and Systems (ICCAS), pp.1720-1723, 2015.

M. Men and F. Dai, Multiple Features Fusion for Front-View Vehicle Detection, Int. Conf. on Artificial Intelligence and Industrial Engineering, 2015.

M. Kim, Z. Liu, and D. Kang, On road vehicle detection by learning hard samples and filtering false alarms from shadow features, Journal of Mechanical Science and Technology, vol.30, pp.2783-2791, 2016.

D. Zhao, Y. Chen, and L. Lv, Deep reinforcement learning with visual attention for vehicle classification, IEEE Transactions on Cognitive and Developmental Systems, 2016.

L. Jiang, L. Zhuo, H. Long, X. Hu, and J. Zhang, Vehicle classification for traffic surveillance videos based on spatial location information and Sparse Representation-based Classifier, International Conference on Progress in Informatics and Computing (PIC), pp.279-284, 2016.

Z. Dong, M. Pei, Y. He, T. Liu, Y. Dong et al., Vehicle type classification using unsupervised convolutional neural network, 22nd International Conference on Pattern Recognition (ICPR), pp.172-177, 2014.

L. Zhuo, L. Jiang, Z. Zhu, J. Li, J. Zhang et al., Vehicle classification for large-scale traffic surveillance videos using Convolutional Neural Networks, Machine Vision and Applications, pp.1-10, 2017.

H. Fu, H. Ma, Y. Liu, and D. Lu, A vehicle classification system based on hierarchical multi-SVMs in crowded traffic scenes, Neurocomputing, vol.211, pp.182-190, 2016.

P. Borkar and L. G. Malik, Review on vehicular speed, density estimation and classification using acoustic signal, International Journal for Traffic & Transport Engineering, vol.3, 2013.

B. J. Barai and G. Kamdi, Mechanical Condition Determination of Vehicle and Traffic Density Estimation Using Acoustic Signals, Communication Systems and Network Technologies (CSNT), pp.259-264, 2014.

J. George, L. Mary, and K. Riyas, Vehicle detection and classification from acoustic signal using ANN and KNN, International Conference on Control Communication and Computing (ICCC), pp.436-439, 2013.

M. Górski and J. Zarzycki, Feature extraction in vehicle classification, International Conference on Signals and Electronic Systems (ICSES), pp.1-6, 2012.

N. Bhave and P. Rao, Vehicle engine sound analysis applied to traffic congestion Estimation, Proc. of International Symposium on CMMR and FRSM2011, 2011.

S. Smaldone, C. Tonde, V. K. Ananthanarayanan, A. Elgammal, and L. Iftode, Improving Bicycle Safety through Automated Real-Time Vehicle Detection, vol.110, 2010.

T. Wang and Z. Zhu, Multimodal and multi-task audio-visual vehicle detection and classification, IEEE Ninth International Conference on Advanced Video and Signal-Based Surveillance (AVSS), pp.440-446, 2012.

P. Piyush, R. Rajan, L. Mary, and B. I. Koshy, Vehicle detection and classification using audio-visual cues, 3rd International Conference on Signal Processing and Integrated Networks (SPIN), pp.726-730, 2016.

C. Daniel and L. Mary, Fusion of audio visual cues for vehicle classification, International Conference on Next Generation Intelligent Systems (ICNGIS) 2016, pp.1-4

A. Klausne, A. Tengg, and B. Rinner, Vehicle classification on multi-sensor smart cameras using feature-and decision-fusion, First ACM/IEEE International Conference on Distributed Smart Cameras (ICDSC'07), pp.67-74, 2007.

D. A. Fabry, Adaptive directional microphone technology and hearing aids: Theoretical and clinical implications, Hearing Review, 2005.

B. D. Lester, L. N. Sager, J. Dawson, S. D. Hacker, N. Aksan et al., Pilot results on forward collision warning system effectiveness in older drivers, International Driving Symposium on Human Factors in Driver Assessment, Training, and Vehicle Design, p.345, 2015.

J. Son, M. Park, and B. B. Park, The effect of age, gender and roadway environment on the acceptance and effectiveness of Advanced Driver 145

, Assistance Systems, Transportation research part F: traffic psychology and behaviour, vol.31, pp.12-24, 2015.

L. F. Haas, Hans Berger (1873-1941), Richard Caton (1842-1926), and electroencephalography, Neurosurgery & Psychiatry, vol.74, pp.9-9, 2003.

N. Sharma and T. Gedeon, Objective measures, sensors and computational techniques for stress recognition and classification: A survey, Computer methods and programs in biomedicine, vol.108, pp.1287-1301, 2012.

K. E. Mathewson, T. J. Harrison, and S. A. Kizuk, High and dry? Comparing active dry EEG electrodes to active and passive wet electrodes, Psychophysiology, vol.54, pp.74-82, 2017.

S. Fazli, J. Mehnert, J. Steinbrink, G. Curio, A. Villringer et al., Enhanced performance by a hybrid NIRS-EEG brain computer interface, Neuroimage, vol.59, pp.519-529, 2012.

S. Koelstra, C. Muhl, M. Soleymani, J. Lee, A. Yazdani et al., Deap: A database for emotion analysis; using physiological signals, IEEE Transactions on Affective Computing, vol.3, pp.18-31, 2012.

L. F. Nicolas-alonso and J. Gomez-gil, Brain computer interfaces, a review, Sensors, vol.12, pp.1211-1279, 2012.

C. Lin, L. Liao, Y. Liu, I. Wang, B. Lin et al., Novel dry polymer foam electrodes for long-term EEG measurement, IEEE Transactions on Biomedical Engineering, vol.58, pp.1200-1207, 2011.

N. Liu, C. Chiang, and H. Hsu, Improving driver alertness through music selection using a mobile EEG to detect brainwaves, Sensors, vol.13, pp.8199-8221, 2013.

C. Lin, Y. Chen, T. Huang, T. Chiu, L. Ko et al., Development of wireless brain computer interface with embedded multitask scheduling and its application on real-time driver's drowsiness detection and warning, IEEE Transactions on Biomedical Engineering, vol.55, pp.1582-1591, 2008.

L. Liao, S. Wu, C. Liou, S. Lu, S. Chen et al., A novel 16-channel wireless system for electroencephalography measurements with dry spring-loaded sensors, IEEE Transactions on Instrumentation and Measurement, vol.63, pp.1545-1555, 2014.

S. Sivaraman and M. M. Trivedi, A general active-learning framework for on-road vehicle recognition and tracking, IEEE Transactions on Intelligent Transportation Systems, vol.11, pp.267-276, 2010.

M. Rezaei and M. Terauchi, Vehicle detection based on multi-feature clues and Dempster-Shafer fusion theory, Pacific-Rim Symposium on Image and Video Technology, pp.60-72, 2013.

J. Choi, Realtime on-road vehicle detection with optical flows and Haar-like feature detectors, 2012.

M. Rezaei and M. Terauchi, Tunnel Set, iROADS Dataset (Intercity Roads and Adverse Driving Scenarios, 2016.

J. Choi and E. Amir, Source-2, Realtime On-Road Vehicle Detection, 2016.

K. J. Piczak, ESC: Dataset for environmental sound classification, Proceedings of the 23rd ACM international conference on Multimedia, pp.1015-1018, 2015.

A. Rakotomamonjy and G. Gasso, Histogram of gradients of time-frequency representations for audio scene classification, IEEE/ACM Transactions on Audio, Speech and Language Processing (TASLP), vol.23, pp.142-153, 2015.

R. C. Gonzales and R. E. Woods, Digital Image Processing, vol.6, 2002.

N. Otsu, A threshold selection method from gray-level histograms, IEEE transactions on systems, man, and cybernetics, vol.9, pp.62-66, 1979.

C. Harris and M. Stephens, A combined corner and edge detector, p.5244, 1988.

G. Lemaitre, F. Nogueira, and C. K. Aridas, Imbalanced-learn: A python toolbox to tackle the curse of imbalanced datasets in machine learning, Journal of Machine Learning Research, vol.18, pp.1-5, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01516244

C. Cortes and V. Vapnik, Support-vector networks, Machine learning, vol.20, pp.273-297, 1995.

L. Breiman, Random forests, Machine learning, vol.45, pp.5-32, 2001.

. Ps, Power and Sample Size Calculation, 2015.

S. H. Yale, P. Hansotia, D. Knapp, and J. Ehrfurth, Neurologic conditions: assessing medical fitness to drive, Clinical medicine & research, vol.1, pp.177-188, 2003.

T. Ma, A. Williamson, and R. Friswell, A pilot study of fatigue on motorcycle day trips, 2003.

A. Craig, K. Hancock, and M. Craig, The lifestyle appraisal questionnaire: a comprehensive assessment of health and stress, Psychology and Health, vol.11, pp.331-343, 1996.

A. Delorme and S. Makeig, EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis, Journal of neuroscience methods, vol.134, pp.9-21, 2004.

J. Lopez-calderon and S. J. Luck, ERPLAB: an open-source toolbox for the analysis of event-related potentials, Frontiers in human neuroscience, vol.8, 2014.

S. J. Luck, An introduction to the event-related potential technique, 2014.

R. K. Satzoda and M. M. Trivedi, Multipart vehicle detection using symmetry-derived analysis and active learning, IEEE Transactions on Intelligent Transportation Systems, vol.17, pp.926-937, 2016.

B. Tati?, N. Bogojevi?, S. Todosijevi?, and Z. ?o?ki?, Analysis of noise level generated by helicopters with various numbers of blades in the main rotor, 23rd National Conference & 4th International Conference Noise and Vibrations, pp.249-253, 2012.

B. He, X. Xiao, Q. Zhou, Z. Li, and X. Jin, Investigation into external noise of a high-speed train at different speeds, Journal of Zhejiang University SCIENCE A, vol.15, pp.1019-1033, 2014.

B. H. Sharp, Y. A. Gurovich, and W. W. Albee, Status of Low-Frequency Aircraft Noise Research and Mitigation, Wyle Report WR, pp.1-21, 2001.

Á. Correa, J. Lupiáñez, E. Madrid, and P. Tudela, Temporal attention enhances early visual processing: A review and new evidence from eventrelated potentials, Brain research, vol.1076, p.148, 2006.

V. C. Seibold, K. M. Bausenhart, B. Rolke, and R. Ulrich, Does temporal preparation increase the rate of sensory information accumulation?, Acta psychologica, vol.137, pp.56-64, 2011.

A. M. Proverbio and F. Riva, RP and N400 ERP components reflect semantic violations in visual processing of human actions, Neuroscience letters, vol.459, pp.142-146, 2009.

M. J. Kmiecik and R. G. Morrison, Semantic distance modulates the N400 event-related potential in verbal analogical reasoning, Conference of the Cognitive Science Society, pp.1-6, 2013.

C. D. Wickens and S. R. Dixon, The benefits of imperfect diagnostic automation: A synthesis of the literature, Theoretical Issues in Ergonomics Science, vol.8, pp.201-212, 2007.

J. R. Folstein and C. Van-petten, Influence of cognitive control and mismatch on the N2 component of the ERP: a review, Psychophysiology, vol.45, pp.152-170, 2008.