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Scene gaze | In-vehicle gaze | Distraction detection | Drowsiness detection | Action anticipation | Driver awareness | Self-driving | Papers with code
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Peng et al., A Multi-Source Fusion Approach for Driver Fatigue Detection Using Physiological Signals and Facial Image, Trans. ITS, 2024 | paper
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Dataset(s): private
@article{2024_T-ITS_Peng, author = "Peng, Yong and Deng, Hanwen and Xiang, Guoliang and Wu, Xianhui and Yu, Xizhuo and Li, Yingli and Yu, Tianjian", journal = "IEEE Transactions on Intelligent Transportation Systems", publisher = "IEEE", title = "A Multi-Source Fusion Approach for Driver Fatigue Detection Using Physiological Signals and Facial Image", year = "2024" }
Fang et al., Human–Machine Shared Control for Path Following Considering Driver Fatigue Characteristics, Trans. ITS, 2024 | paper
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Dataset(s): private
@article{2024_T-ITS_Fang, author = "Fang, Zhenwu and Wang, Jinxiang and Wang, Zejiang and Chen, Jinxin and Yin, Guodong and Zhang, Hui", journal = "IEEE Transactions on Intelligent Transportation Systems", publisher = "IEEE", title = "Human--machine shared control for path following considering driver fatigue characteristics", year = "2024" }
Sakata et al., Proposal for Reproducible and Practical Drowsiness Indices, IV, 2024 | paper
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Dataset(s): private
@inproceedings{2024_IV_Sakata, author = "Sakata, Takuya and Yamauchi, Koichiro and Karumi, Takahiro and Omi, Takuhiro and Sawai, Shunichiroh", booktitle = "2024 IEEE Intelligent Vehicles Symposium (IV)", organization = "IEEE", pages = "2983--2988", title = "Proposal for Reproducible and Practical Drowsiness Indices", year = "2024" }
Yang et al., Video-Based Driver Drowsiness Detection With Optimised Utilization of Key Facial Features, Trans. ITS, 2024 | paper
@article{2023_T-ITS_Yang, author = "Yang, Haohan and Liu, Haochen and Hu, Zhongxu and Nguyen, Anh-Tu and Guerra, Thierry-Marie and Lv, Chen", journal = "IEEE Transactions on Intelligent Transportation Systems", publisher = "IEEE", title = "Quantitative Identification of Driver Distraction: A Weakly Supervised Contrastive Learning Approach", year = "2023" }
Lu et al., JHPFA-Net: Joint Head Pose and Facial Action Network for Driver Yawning Detection Across Arbitrary Poses in Videos, Trans. ITS, 2023 | paper
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Dataset(s): YawDD
@article{2023_T-ITS_Lu, author = "Lu, Yansha and Liu, Chunsheng and Chang, Faliang and Liu, Hui and Huan, Hengqiang", journal = "IEEE Transactions on Intelligent Transportation Systems", publisher = "IEEE", title = "JHPFA-Net: Joint Head Pose and Facial Action Network for Driver Yawning Detection Across Arbitrary Poses in Videos", year = "2023" }
Luo et al., Detecting Driver Cognition Alertness State From Visual Activities in Normal and Emergency Scenarios, Trans. ITS, 2022 | paper
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Dataset(s): private
@article{2022_T-ITS_Luo, author = "Luo, Longxi and Wu, Jianping and Fei, Weijie and Bi, Luzheng and Fan, Xinan", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "10", pages = "19497--19510", publisher = "IEEE", title = "Detecting Driver Cognition Alertness State From Visual Activities in Normal and Emergency Scenarios", volume = "23", year = "2022" }
Bakker et al., A Multi-Stage, Multi-Feature Machine Learning Approach to Detect Driver Sleepiness in Naturalistic Road Driving Conditions, Trans. ITS, 2022 | paper
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Dataset(s): private
@article{2022_T-ITS_Bakker, author = {Bakker, Bram and Zab{\l}ocki, Bartosz and Baker, Angela and Riethmeister, Vanessa and Marx, Bernd and Iyer, Girish and Anund, Anna and Ahlstr{\"o}m, Christer}, journal = "IEEE Transactions on Intelligent Transportation Systems", number = "5", pages = "4791--4800", publisher = "IEEE", title = "A multi-stage, multi-feature machine learning approach to detect driver sleepiness in naturalistic road driving conditions", volume = "23", year = "2021" }
Baccour et al., Comparative Analysis of Vehicle-Based and Driver-Based Features for Driver Drowsiness Monitoring by Support Vector Machines, Trans. ITS, 2022 | paper
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Dataset(s): private
@article{2022_T-ITS_Baccour, author = {Baccour, Mohamed Hedi and Driewer, Frauke and Sch{\"a}ck, Tim and Kasneci, Enkelejda}, journal = "IEEE Transactions on Intelligent Transportation Systems", number = "12", pages = "23164--23178", publisher = "IEEE", title = "Comparative Analysis of Vehicle-Based and Driver-Based Features for Driver Drowsiness Monitoring by Support Vector Machines", volume = "23", year = "2022" }
Lollett et al., Driver’s Drowsiness Classifier using a Single-Camera Robust to Mask-wearing Situations using an Eyelid, Lower-Face Contour, and Chest Movement Feature Vector GRU-based Model, IV, 2022 | paper
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Dataset(s): private
@inproceedings{2022_IV_Lollett, author = "Lollett, Catherine and Kamezaki, Mitsuhiro and Sugano, Shigeki", booktitle = "2022 IEEE Intelligent Vehicles Symposium (IV)", organization = "IEEE", pages = "519--526", title = "Driver’s Drowsiness Classifier using a Single-Camera Robust to Mask-wearing Situations using an Eyelid, Lower-Face Contour, and Chest Movement Feature Vector GRU-based Model", year = "2022" }
Chen et al., A Multi-view Driver Drowsiness Detection Method Using Transfer Learning and Population-based Sampling Strategy, ITSC, 2022 | paper
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Dataset(s): private
@inproceedings{2022_ITSC_Chen, author = "Chen, Jinxin and Fang, Zhenwu and Wang, Jinxiang and Chen, Jiansong and Yin, Guodong", booktitle = "2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC)", organization = "IEEE", pages = "3386--3391", title = "A Multi-view Driver Drowsiness Detection Method Using Transfer Learning and Population-based Sampling Strategy", year = "2022" }
Sharak et al., Contact Versus Noncontact Detection of Driver’s Drowsiness, ICPR, 2022 | paper
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Dataset(s): private
@inproceedings{2022_ICPR_Sharak, author = "Sharak, Salem and Das, Kapotaksha and Riani, Kais and Abouelenien, Mohamed and Burzo, Mihai and Mihalcea, Rada", booktitle = "2022 26th International Conference on Pattern Recognition (ICPR)", organization = "IEEE", pages = "967--974", title = "Contact Versus Noncontact Detection of Driver’s Drowsiness", year = "2022" }
Tufekci et al., Detecting Driver Drowsiness as an Anomaly Using LSTM Autoencoders, ECCVW, 2022 | paper
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Dataset(s): DDD
@inproceedings{2022_ECCVW_Tufekci, author = {T{\"u}fekci, G{\"u}lin and Kayaba{\c{s}}{\i}, Alper and Akag{\"u}nd{\"u}z, Erdem and Ulusoy, {\.I}lkay}, booktitle = "Computer Vision--ECCV 2022 Workshops: Tel Aviv, Israel, October 23--27, 2022, Proceedings, Part VI", organization = "Springer", pages = "549--559", title = "Detecting Driver Drowsiness as an Anomaly Using LSTM Autoencoders", year = "2023" }
Du et al., A Multimodal Fusion Fatigue Driving Detection Method Based on Heart Rate and PERCLOS, Trans. ITS, 2021 | paper
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Dataset(s): RLDD
@article{2021_T-ITS_Du, author = "Du, Guanglong and Zhang, Linlin and Su, Kang and Wang, Xueqian and Teng, Shaohua and Liu, Peter X", journal = "Ieee Transactions on Intelligent Transportation Systems", number = "11", pages = "21810--21820", publisher = "IEEE", title = "A multimodal fusion fatigue driving detection method based on heart rate and PERCLOS", volume = "23", year = "2022" }
Bakker et al., A Multi-Stage, Multi-Feature Machine Learning Approach to Detect Driver Sleepiness in Naturalistic Road Driving Conditions, Trans. ITS, 2021 | paper
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Dataset(s): private
@article{2021_T-ITS_Bakker, author = {Bakker, Bram and Zab{\l}ocki, Bartosz and Baker, Angela and Riethmeister, Vanessa and Marx, Bernd and Iyer, Girish and Anund, Anna and Ahlstr{\"o}m, Christer}, journal = "IEEE Transactions on Intelligent Transportation Systems", title = "A multi-stage, multi-feature machine learning approach to detect driver sleepiness in naturalistic road driving conditions", year = "2021" }
Ansari et al., Driver Mental Fatigue Detection Based on Head Posture Using New Modified reLU-BiLSTM Deep Neural Network, Trans. ITS, 2021 | paper
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Dataset(s): private
@article{2021_T-ITS_Ansari, author = "Ansari, Shahzeb and Naghdy, Fazel and Du, Haiping and Pahnwar, Yasmeen Naz", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "8", pages = "10957--10969", publisher = "IEEE", title = "Driver mental fatigue detection based on head posture using new modified reLU-BiLSTM deep neural network", volume = "23", year = "2021" }
Ahmed et al., Intelligent Driver Drowsiness Detection for Traffic Safety Based on Multi CNN Deep Model and Facial Subsampling, Trans. ITS, 2021 | paper
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Dataset(s): DDD
@article{2021_T-ITS_Ahmed, author = "Ahmed, Muneeb and Masood, Sarfaraz and Ahmad, Musheer and Abd El-Latif, Ahmed A", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "10", pages = "19743--19752", publisher = "IEEE", title = "Intelligent driver drowsiness detection for traffic safety based on multi CNN deep model and facial subsampling", volume = "23", year = "2021" }
Huang et al., RF-DCM: Multi-Granularity Deep Convolutional Model Based on Feature Recalibration and Fusion for Driver Fatigue Detection, Trans. ITS, 2020 | paper
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Dataset(s): DDD
@article{2020_T-ITS_Huang, author = "Huang, Rui and Wang, Yan and Li, Zijian and Lei, Zeyu and Xu, Yufan", journal = "IEEE Transactions on Intelligent Transportation Systems", title = "RF-DCM: Multi-Granularity Deep Convolutional Model Based on Feature Recalibration and Fusion for Driver Fatigue Detection", year = "2020" }
Joshi et al., In-the-wild Drowsiness Detection from Facial Expressions, IV, 2020 | paper
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Dataset(s): private
@inproceedings{2020_IV_Joshi, author = "Joshi, Ajjen and Kyal, Survi and Banerjee, Sandipan and Mishra, Taniya", booktitle = "IV", title = "In-the-wild drowsiness detection from facial expressions", year = "2020" }
Dari et al., Unsupervised Blink Detection and Driver Drowsiness Metrics on Naturalistic Driving Data, ITSC, 2020 | paper
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Dataset(s): private
@inproceedings{2020_ITSC_Dari, author = "Dari, Simone and Epple, Nico and Protschky, Valentin", booktitle = "ITSC", title = "Unsupervised Blink Detection and Driver Drowsiness Metrics on Naturalistic Driving Data", year = "2020" }
Tran et al., Real-time Detection of Distracted Driving using Dual Cameras, IROS, 2020 | paper
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Dataset(s): private
@inproceedings{2020_IROS_Tran, author = "Tran, Duy and Do, Ha Manh and Lu, Jiaxing and Sheng, Weihua", booktitle = "IROS", title = "Real-time Detection of Distracted Driving using Dual Cameras", year = "2020" }
Vijay et al., Real-Time Driver Drowsiness Detection using Facial Action Units, ICPR, 2020 | paper
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Dataset(s): DDD
@inproceedings{2020_ICPR_Vijay, author = "Vijay, Malaika and Vinayak, Nandagopal Netrakanti and Nunna, Maanvi and Natarajan, Subramanyam", booktitle = "ICPR", title = "Real-Time Driver Drowsiness Detection using Facial Action Units", year = "2021" }
Chiou et al., Driver Monitoring Using Sparse Representation With Part-Based Temporal Face Descriptors, Trans. ITS, 2019 | paper
@article{2019_T-ITS_Chiou, author = "Chiou, Chien-Yu and Wang, Wei-Cheng and Lu, Shueh-Chou and Huang, Chun-Rong and Chung, Pau-Choo and Lai, Yun-Yang", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "1", pages = "346--361", publisher = "IEEE", title = "Driver monitoring using sparse representation with part-based temporal face descriptors", volume = "21", year = "2019" }
Wang et al., Eye gaze pattern analysis for fatigue detection based on GP-BCNN with ESM, Pattern Recognition Letters, 2019 | paper
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Dataset(s): private
@article{2019_PRL_Wang, author = "Wang, Yan and Huang, Rui and Guo, Lei", journal = "Pattern Recognition Letters", pages = "61--74", publisher = "Elsevier", title = "Eye gaze pattern analysis for fatigue detection based on GP-BCNN with ESM", volume = "123", year = "2019" }
Zhang et al., Driver Drowsiness Detection using Multi-Channel Second Order Blind Identifications, IEEE Access, 2019 | paper
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Dataset(s): private
@article{2019_IEEEAccess_Zhang, author = "Zhang, Chao and Wu, Xiaopei and Zheng, Xi and Yu, Shui", journal = "IEEE Access", pages = "11829--11843", publisher = "IEEE", title = "Driver drowsiness detection using multi-channel second order blind identifications", volume = "7", year = "2019" }
Deng et al., Real-Time Driver-Drowsiness Detection System Using Facial Features, IEEE Access, 2019 | paper
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Dataset(s): private
@article{2019_IEEEAccess_Deng, author = "Deng, Wanghua and Wu, Ruoxue", journal = "IEEE Access", pages = "118727--118738", publisher = "IEEE", title = "Real-time driver-drowsiness detection system using facial features", volume = "7", year = "2019" }
Ghoddoosian et al., A Realistic Dataset and Baseline Temporal Model for Early Drowsiness Detection, CVPRW, 2019 | paper
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Dataset(s): RLDD
@inproceedings{2019_CVPRW_Ghoddoosian, author = "Ghoddoosian, Reza and Galib, Marnim and Athitsos, Vassilis", booktitle = "CVPRW", title = "A realistic dataset and baseline temporal model for early drowsiness detection", year = "2019" }
Yu et al., Driver Drowsiness Detection Using Condition-Adaptive Representation Learning Framework, Trans. ITS, 2018 | paper
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Dataset(s): DDD
@article{2018_T-ITS_Yu, author = "Yu, Jongmin and Park, Sangwoo and Lee, Sangwook and Jeon, Moongu", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "11", pages = "4206--4218", title = "Driver drowsiness detection using condition-adaptive representation learning framework", volume = "20", year = "2018" }
Dasgupta et al., A Smartphone-Based Drowsiness Detection and Warning System for Automotive Drivers, Trans. ITS, 2018 | paper
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Dataset(s): private
@article{2018_T-ITS_Dasgupta, author = "Dasgupta, Anirban and Rahman, Daleef and Routray, Aurobinda", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "11", pages = "4045--4054", title = "A smartphone-based drowsiness detection and warning system for automotive drivers", volume = "20", year = "2018" }
Gwak et al., Early Detection of Driver Drowsiness Utilizing Machine Learning based on Physiological Signals, Behavioral Measures, and Driving Performance, ITSC, 2018 | paper
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Dataset(s): private
@inproceedings{2018_ITSC_Gwak, author = "Gwak, Jongseong and Shino, Motoki and Hirao, Akinari", booktitle = "ITSC", title = "Early detection of driver drowsiness utilizing machine learning based on physiological signals, behavioral measures, and driving performance", year = "2018" }
Sun et al., A Real-Time Fatigue Driving Recognition Method Incorporating Contextual Features and Two Fusion Levels, Trans. ITS, 2017 | paper
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Dataset(s): private
@article{2017_T-ITS_Sun, author = "Sun, Wei and Zhang, Xiaorui and Peeta, Srinivas and He, Xiaozheng and Li, Yongfu", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "12", pages = "3408--3420", title = "A real-time fatigue driving recognition method incorporating contextual features and two fusion levels", volume = "18", year = "2017" }
Zhao et al., Driver drowsiness detection using facial dynamic fusion information and a DBN, IET Intelligent Transport Systems, 2017 | paper
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Dataset(s): private
@article{2017_IET_Zhao, author = "Zhao, Lei and Wang, Zengcai and Wang, Xiaojin and Liu, Qing", journal = "IET Intelligent Transport Systems", number = "2", pages = "127--133", title = "Driver drowsiness detection using facial dynamic fusion information and a DBN", volume = "12", year = "2017" }
Reddy et al., Real-time Driver Drowsiness Detection for Embedded System Using Model Compression of Deep Neural Networks, CVPRW, 2017 | paper
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Dataset(s): private
@inproceedings{2017_CVPRW_Reddy, author = "Reddy, Bhargava and Kim, Ye-Hoon and Yun, Sojung and Seo, Chanwon and Jang, Junik", booktitle = "CVPRW", title = "Real-time driver drowsiness detection for embedded system using model compression of deep neural networks", year = "2017" }
Yu et al., Representation Learning, Scene Understanding, and Feature Fusion for Drowsiness Detection, ACCVW, 2017 | paper
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Dataset(s): DDD
@inproceedings{2017_ACCVW_Yu, author = "Yu, Jongmin and Park, Sangwoo and Lee, Sangwook and Jeon, Moongu", booktitle = "ACCV", title = "Representation learning, scene understanding, and feature fusion for drowsiness detection", year = "2016" }
Shih et al., MSTN: Multistage Spatial-Temporal Network for Driver Drowsiness Detection, ACCVW, 2017 | paper
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Dataset(s): DDD
@inproceedings{2017_ACCVW_Shih, author = "Shih, Tun-Huai and Hsu, Chiou-Ting", booktitle = "ACCV", title = "MSTN: Multistage spatial-temporal network for driver drowsiness detection", year = "2016" }
Huynh et al., Detection of Driver Drowsiness Using 3D Deep Neural Network and Semi-Supervised Gradient Boosting Machine, ACCVW, 2017 | paper
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Dataset(s): DDD
@inproceedings{2017_ACCVW_Huynh, author = "Huynh, Xuan-Phung and Park, Sang-Min and Kim, Yong-Guk", booktitle = "ACCV", title = "Detection of driver drowsiness using 3D deep neural network and semi-supervised gradient boosting machine", year = "2016" }
Weng et al., Driver Drowsiness Detection via a Hierarchical Temporal Deep Belief Network, ACCV, 2017 | paper
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Dataset(s): DDD
@inproceedings{2017_ACCV_Weng, author = "Weng, Ching-Hua and Lai, Ying-Hsiu and Lai, Shang-Hong", booktitle = "ACCV", title = "Driver drowsiness detection via a hierarchical temporal deep belief network", year = "2016" }
Yin et al., A Driver Fatigue Detection Method Based on Multi-Sensor Signals, WACV, 2016 | paper
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Dataset(s): private
@inproceedings{2016_WACV_Yin, author = "Yin, Hao and Su, Yuanqi and Liu, Yuehu and Zhao, Danchen", booktitle = "WACV", title = "A driver fatigue detection method based on multi-sensor signals", year = "2016" }
Kim et al., Fusion of Driver-information Based Driver Status Recognition for Co-Pilot System, IV, 2016 | paper
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Dataset(s): private
@inproceedings{2016_IV_Kim, author = "Kim, Jinwoo and Kim, Kitae and Yoon, Daesub and Koo, Yongbon and Han, Wooyong", booktitle = "2016 Ieee Intelligent Vehicles Symposium (iv)", organization = "IEEE", pages = "1398--1403", title = "Fusion of driver-information based driver status recognition for co-pilot system", year = "2016" }
Choi et al., Tracking a Driver’s Face against Extreme Head Poses and Inference of Drowsiness Using a Hidden Markov Model, Applied Sciences, 2016 | paper
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Dataset(s): private
@article{2016_ApplSci_Choi, author = "Choi, In-Ho and Jeong, Chan-Hee and Kim, Yong-Guk", journal = "Applied Sciences", number = "5", pages = "137", title = "Tracking a driver’s face against extreme head poses and inference of drowsiness using a hidden Markov model", volume = "6", year = "2016" }
Park et al., Driver drowsiness detection system based on feature representation learning using various deep networks, ACCV, 2016 | paper
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Dataset(s): DDD
@inproceedings{2016_ACCV_Park, author = "Park, Sanghyuk and Pan, Fei and Kang, Sunghun and Yoo, Chang D", booktitle = "ACCV", title = "Driver drowsiness detection system based on feature representation learning using various deep networks", year = "2016" }
Wang et al., Driver drowsiness detection based on non-intrusive metrics considering individual specifics, Accident Analysis and Prevention, 2016 | paper
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Dataset(s): private
@article{2016_AccidentAnalysis_Wang, author = "Wang, Xuesong and Xu, Chuan", journal = "Accident Analysis \\& Prevention", pages = "350--357", publisher = "Elsevier", title = "Driver drowsiness detection based on non-intrusive metrics considering individual specifics", volume = "95", year = "2016" }
Chang et al., Driver Fatigue Surveillance via Eye Detection, ITSC, 2014 | paper
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Dataset(s): private
@inproceedings{2014_ITSC_Chang, author = "Chang, Tang-Hsien and Chen, Yi-Ru", booktitle = "ITSC", title = "Driver fatigue surveillance via eye detection", year = "2014" }
Tadesse et al., Driver Drowsiness Detection through HMM based Dynamic Modeling, ICRA, 2014 | paper
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Dataset(s): private
@inproceedings{2014_ICRA_Tadesse, author = "Tadesse, Eyosiyas and Sheng, Weihua and Liu, Meiqin", booktitle = "ICRA", title = "Driver drowsiness detection through HMM based dynamic modeling", year = "2014" }
Mbouna et al., Visual Analysis of Eye State and Head Pose for Driver Alertness Monitoring, Trans. ITS, 2013 | paper
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Dataset(s): BU HeadTracking, private
@article{2013_T-ITS_Mbouna, author = "Mbouna, Ralph Oyini and Kong, Seong G and Chun, Myung-Geun", journal = "IEEE Transactions on Intelligent Transportation Systems", number = "3", pages = "1462--1469", title = "Visual analysis of eye state and head pose for driver alertness monitoring", volume = "14", year = "2013" }
Masala et al., Detecting Driver Inattention by Rough Iconic Classification, IV, 2013 | paper
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Dataset(s): private
@inproceedings{2013_IV_Masala, author = "Masala, Giovanni Luca and Grosso, Enrico", booktitle = "2013 IEEE Intelligent Vehicles Symposium (IV)", organization = "IEEE", pages = "913--918", title = "Detecting driver inattention by rough iconic classification", year = "2013" }
Li et al., Vision-based Estimation of Driver Drowsiness with ORD Model Using Evidence Theory, IV, 2013 | paper
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Dataset(s): private
@inproceedings{2013_IV_Li, author = "Li, Xuanpeng and Seignez, Emmanuel and Loonis, Pierre", booktitle = "IV", title = "Vision-based estimation of driver drowsiness with ORD model using evidence theory", year = "2013" }
Akrout et al., A visual based approach for drowsiness detection, IV, 2013 | paper
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Dataset(s): private
@inproceedings{2013_IV_Akrout, author = "Akrout, Belhassen and Mahdi, Walid", booktitle = "IV", title = "A visual based approach for drowsiness detection", year = "2013" }
Jin et al., Driver Sleepiness Detection System Based onEye Movements Variables, Advances in Mechanical Engineering, 2013 | paper
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Dataset(s): private
@article{2013_AdvMechEng_Jin, author = "Jin, Lisheng and Niu, Qingning and Jiang, Yuying and Xian, Huacai and Qin, Yanguang and Xu, Meijiao", journal = "Advances in Mechanical Engineering", pages = "648431", title = "Driver sleepiness detection system based on eye movements variables", volume = "5", year = "2013" }
Garcia et al., Vision-based drowsiness detector for Real Driving Conditions, IV, 2012 | paper
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Dataset(s): private
@inproceedings{2012_IV_Garcia, author = "Garcia, I and Bronte, Sebastian and Bergasa, Luis Miguel and Almaz{\'a}n, Javier and Yebes, J", booktitle = "IV", title = "Vision-based drowsiness detector for real driving conditions", year = "2012" }
Matsuo et al., Prediction of Drowsy Driving by Monitoring Driver’s Behavior, ICPR, 2012 | paper
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Dataset(s): private
@inproceedings{2012_ICPR_Matsuo, author = "Matsuo, Haruo and Khiat, Abdelaziz", booktitle = "ICPR", title = "Prediction of drowsy driving by monitoring driver's behavior", year = "2012" }
Jo et al., Vision-based method for detecting driver drowsiness and distraction in driver monitoring system, Optical Engineering, 2011 | paper
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Dataset(s): private
@article{2011_OptEng_Jo, author = "Jo, Jaeik and Lee, Sung Joo and Kim, Jaihie and Jung, Ho Gi and Park, Kang Ryoung", journal = "Optical Engineering", number = "12", pages = "127202", title = "Vision-based method for detecting driver drowsiness and distraction in driver monitoring system", volume = "50", year = "2011" }
Flores et al., Driver drowsiness detection system under infrared illumination for an intelligent vehicle, IET Intelligent Transport Systems, 2011 | paper
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Dataset(s): private
@article{2011_IET_Flores, author = "Flores, Marco Javier and Armingol, J Ma and de la Escalera, Arturo", journal = "IET Intelligent Transport Systems", number = "4", pages = "241--251", publisher = "IET", title = "Driver drowsiness detection system under infrared illumination for an intelligent vehicle", volume = "5", year = "2011" }
Fan et al., Gabor-based dynamic representation for human fatigue monitoring in facial image sequences, Pattern Recognition Letter, 2010 | paper
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Dataset(s): private
@article{2010_PRL_Fan, author = "Fan, Xiao and Sun, Yanfeng and Yin, Baocai and Guo, Xiuming", journal = "Pattern Recognition Letters", number = "3", pages = "234--243", title = "Gabor-based dynamic representation for human fatigue monitoring in facial image sequences", volume = "31", year = "2010" }
Zhang et al., A new real-time eye tracking based on nonlinear unscented Kalman filter for monitoring driver fatigue, Journal of Control Theory Applications, 2010 | paper
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Dataset(s): private
@article{2010_JCTA_Zhang, author = "Zhang, Zutao and Zhang, Jiashu", journal = "Journal of Control Theory and Applications", number = "2", pages = "181--188", publisher = "Springer", title = "A new real-time eye tracking based on nonlinear unscented Kalman filter for monitoring driver fatigue", volume = "8", year = "2010" }
Friedrichs et al., Camera-based Drowsiness Reference for Driver State Classification under Real Driving Conditions, IV, 2010 | paper
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Dataset(s): private
@inproceedings{2010_IV_Friedrichs, author = "Friedrichs, Fabian and Yang, Bin", booktitle = "IV", title = "Camera-based drowsiness reference for driver state classification under real driving conditions", year = "2010" }