Development and validation of a deep learning-based algorithm for drowsiness detection in facial photographs

被引:0
|
作者
Syed Sameed Husain
Junaid Mir
Syed Muhammad Anwar
Waqas Rafique
Muhammad Obaid Ullah
机构
[1] University of Surrey,Centre for Vision, Speech, Signal Processing
[2] University of Engineering and Technology Taxila,Department of Electrical Engineering
[3] University of Engineering and Technology Taxila,Department of Computer Engineering
[4] University of Oxford,Department of Engineering Science
来源
关键词
Drowsiness detection; Fatigue detection; Deep convolutional neural network; Parametric aggregation; CNN;
D O I
暂无
中图分类号
学科分类号
摘要
Drowsiness is a feeling of sleepiness before the sleep onset and has severe implications from a safety perspective for the individuals involved in industrial activities, mining, and driving. The state-of-the-art computer vision (CV) based drowsiness detection methods generally utilize multiple deep convolutional neural networks (DCNN) without investigating deep feature aggregation techniques for the drowsiness detection task. More importantly, the reported results are mostly based on acted drowsy data, making the utilization of models trained on such data highly arguable for detecting drowsiness in real-life situations. Towards ameliorating this, we first present a comprehensive real drowsy data curated from 50 subjects, where subjects are labeled as fresh or drowsy. Further, four DCNN models: Xception, ResNet101, InceptionV4, and ResNext101, are trained on our dataset using transfer learning to select a baseline model for our drowsiness detection method. Moreover, an experimental study is performed using five different pooling methods: global max, global average, generalized mean, region of interest, and Weibull activation, to compute a robust and discriminative global descriptor. Our results reveal that the parametric Weibull activation pooling is the best suited for aggregating deep convolutional features. Additionally, a low complexity model based on the MobileNetV2 is proposed for a deployable drowsiness detection solution in mobile devices. The detection accuracy of 93.80% and 90.50% is achieved using our proposed Weibull-based ResNext101 and MobileNetV2 models, respectively. Moreover, our results show that the proposed non-invasive method outperforms the polysomnography signals-based invasive drowsiness detection approach.
引用
收藏
页码:20425 / 20441
页数:16
相关论文
共 50 条
  • [1] Development and validation of a deep learning-based algorithm for drowsiness detection in facial photographs
    Husain, Syed Sameed
    Mir, Junaid
    Anwar, Syed Muhammad
    Rafique, Waqas
    Ullah, Muhammad Obaid
    [J]. MULTIMEDIA TOOLS AND APPLICATIONS, 2022, 81 (15) : 20425 - 20441
  • [2] A novel deep learning-based technique for driver drowsiness detection
    Mukherjee, Prithwijit
    Roy, Anisha Halder
    [J]. HUMAN FACTORS AND ERGONOMICS IN MANUFACTURING & SERVICE INDUSTRIES, 2024,
  • [3] Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs
    Gulshan, Varun
    Peng, Lily
    Coram, Marc
    Stumpe, Martin C.
    Wu, Derek
    Narayanaswamy, Arunachalam
    Venugopalan, Subhashini
    Widner, Kasumi
    Madams, Tom
    Cuadros, Jorge
    Kim, Ramasamy
    Raman, Rajiv
    Nelson, Philip C.
    Mega, Jessica L.
    Webster, R.
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2016, 316 (22): : 2402 - 2410
  • [4] Development and validation of a deep learning-based algorithm for colonoscopy quality assessment
    Yuan-Yen Chang
    Pai-Chi Li
    Ruey-Feng Chang
    Yu-Yao Chang
    Siou-Ping Huang
    Yang-Yuan Chen
    Wen-Yen Chang
    Hsu-Heng Yen
    [J]. Surgical Endoscopy, 2022, 36 : 6446 - 6455
  • [5] Development and validation of a deep learning-based algorithm for colonoscopy quality assessment
    Chang, Yuan-Yen
    Li, Pai-Chi
    Chang, Ruey-Feng
    Chang, Yu-Yao
    Huang, Siou-Ping
    Chen, Yang-Yuan
    Chang, Wen-Yen
    Yen, Hsu-Heng
    [J]. SURGICAL ENDOSCOPY AND OTHER INTERVENTIONAL TECHNIQUES, 2022, 36 (09): : 6446 - 6455
  • [6] Development and validation of a deep learning-based protein electrophoresis classification algorithm
    Lee, Nuri
    Jeong, Seri
    Jeon, Kibum
    Song, Wonkeun
    Park, Min-Jeong
    [J]. PLOS ONE, 2022, 17 (08):
  • [7] Development and Validation of Deep Learning-based Automatic Detection Algorithm for Malignant Pulmonary Nodules on Chest Radiographs
    Nam, Ju Gang
    Park, Sunggyun
    Hwang, Eui Jin
    Lee, Jong Hyuk
    Jin, Kwang-Nam
    Lim, Kun Young
    Vu, Thienkai Huy
    Sohn, Jae Ho
    Hwang, Sangheum
    Goo, Jin Mo
    Park, Chang Min
    [J]. RADIOLOGY, 2019, 290 (01) : 218 - 228
  • [8] Development and Validation of a Deep Learning-based Automatic Detection Algorithm for Active Pulmonary Tuberculosis on Chest Radiographs
    Hwang, Eui Jin
    Park, Sunggyun
    Jin, Kwang-Nam
    Kim, Jung Im
    Choi, So Young
    Lee, Jong Hyuk
    Goo, Jin Mo
    Aum, Jaehong
    Yim, Jae-Joon
    Park, Chang Min
    Kim, Dong Hyeon
    Kim, Dong Hyeon
    Woo, Sungmin
    Choi, Wonseok
    Hwang, In Pyung
    Song, Yong Sub
    Lim, Jiyeon
    Kim, Hyungjin
    Wi, Jae Yeon
    Oh, Su Suk
    Kang, Mi-Jin
    Woo, Chris
    [J]. CLINICAL INFECTIOUS DISEASES, 2019, 69 (05) : 739 - 747
  • [9] Development and Validation of a Deep Learning-Based Automated Detection Algorithm for Major Thoracic Diseases on Chest Radiographs
    Hwang, Eui Jin
    Park, Sunggyun
    Jin, Kwang-Nam
    Kim, Jung Im
    Choi, So Young
    Lee, Jong Hyuk
    Goo, Jin Mo
    Aum, Jaehong
    Yim, Jae-Joon
    Cohen, Julien G.
    Ferretti, Gilbert R.
    Park, Chang Min
    Kim, Dong Hyeon
    Woo, Sungmin
    Choi, Wonseok
    Hwang, In Pyung
    Song, Yong Sub
    Lim, Jiyeon
    Kim, Hyungjin
    Wi, Jae Yeon
    Oh, Su Suk
    Kang, Mi-Jin
    Lee, Nyoung Keun
    Yoo, Jin Young
    Suh, Young Joo
    [J]. JAMA NETWORK OPEN, 2019, 2 (03) : e191095
  • [10] Deep learning-based detection of seedling development
    Samiei, Salma
    Rasti, Pejman
    Ly Vu, Joseph
    Buitink, Julia
    Rousseau, David
    [J]. PLANT METHODS, 2020, 16 (01)