Detecting inter-sectional accuracy differences in driver drowsiness detection algorithms

04/23/2019
by   Mkhuseli Ngxande, et al.
10

Convolutional Neural Networks (CNNs) have been used successfully across a broad range of areas including data mining, object detection, and in business. The dominance of CNNs follows a breakthrough by Alex Krizhevsky which showed improvements by dramatically reducing the error rate obtained in a general image classification task from 26.2 applied widely to the detection of traffic signs, obstacle detection, and lane departure checking. In addition, CNNs have been used in data mining systems that monitor driving patterns and recommend rest breaks when appropriate. This paper presents a driver drowsiness detection system and shows that there are potential social challenges regarding the application of these techniques, by highlighting problems in detecting dark-skinned driver's faces. This is a particularly important challenge in African contexts, where there are more dark-skinned drivers. Unfortunately, publicly available datasets are often captured in different cultural contexts, and therefore do not cover all ethnicities, which can lead to false detections or racially biased models. This work evaluates the performance obtained when training convolutional neural network models on commonly used driver drowsiness detection datasets and testing on datasets specifically chosen for broader representation. Results show that models trained using publicly available datasets suffer extensively from over-fitting, and can exhibit racial bias, as shown by testing on a more representative dataset. We propose a novel visualisation technique that can assist in identifying groups of people where there might be the potential of discrimination, using Principal Component Analysis (PCA) to produce a grid of faces sorted by similarity, and combining these with a model accuracy overlay.

READ FULL TEXT

page 1

page 5

page 6

page 7

page 8

research
05/31/2019

Driver Behavior Analysis Using Lane Departure Detection Under Challenging Conditions

In this paper, we present a novel model to detect lane regions and extra...
research
09/19/2019

Automobile Theft Detection by Clustering Owner Driver Data

As automobiles become intelligent, automobile theft methods are evolving...
research
12/10/2013

Performance Analysis Of Neural Network Models For Oxazolines And Oxazoles Derivatives Descriptor Dataset

Neural networks have been used successfully to a broad range of areas su...
research
02/08/2018

Driver Gaze Zone Estimation using Convolutional Neural Networks: A General Framework and Ablative Analysis

Driver gaze has been shown to be an excellent surrogate for driver atten...
research
06/28/2017

Real-time Distracted Driver Posture Classification

Distracted driving is a worldwide problem leading to an astoundingly inc...
research
07/27/2023

Small, but important: Traffic light proposals for detecting small traffic lights and beyond

Traffic light detection is a challenging problem in the context of self-...

Please sign up or login with your details

Forgot password? Click here to reset