Detection of Distracted Driver using Convolution Neural Network
- URL: http://arxiv.org/abs/2204.03371v1
- Date: Thu, 7 Apr 2022 11:41:19 GMT
- Title: Detection of Distracted Driver using Convolution Neural Network
- Authors: Narayana Darapaneni, Jai Arora, MoniShankar Hazra, Naman Vig,
Simrandeep Singh Gandhi, Saurabh Gupta, Anwesh Reddy Paduri
- Abstract summary: India accounts for 11 per cent of global death in road accidents.
Drivers are held responsible for 78% of accidents.
We will focus on building a highly efficient ML model to classify different driver distractions.
- Score: 7.37092447804202
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: With over 50 million car sales annually and over 1.3 million deaths every
year due to motor accidents we have chosen this space. India accounts for 11
per cent of global death in road accidents. Drivers are held responsible for
78% of accidents. Road safety problems in developing countries is a major
concern and human behavior is ascribed as one of the main causes and
accelerators of road safety problems. Driver distraction has been identified as
the main reason for accidents. Distractions can be caused due to reasons such
as mobile usage, drinking, operating instruments, facial makeup, social
interaction. For the scope of this project, we will focus on building a highly
efficient ML model to classify different driver distractions at runtime using
computer vision. We would also analyze the overall speed and scalability of the
model in order to be able to set it up on an edge device. We use CNN, VGG-16,
RestNet50 and ensemble of CNN to predict the classes.
Related papers
- Enhancing Road Safety: Real-Time Detection of Driver Distraction through Convolutional Neural Networks [0.0]
This study seeks to identify the most efficient model for real-time detection of driver distractions.
The ultimate aim is to incorporate the findings into vehicle safety systems, significantly boosting their capability to prevent accidents triggered by inattention.
arXiv Detail & Related papers (2024-05-28T03:34:55Z) - Abductive Ego-View Accident Video Understanding for Safe Driving
Perception [75.60000661664556]
We present MM-AU, a novel dataset for Multi-Modal Accident video Understanding.
MM-AU contains 11,727 in-the-wild ego-view accident videos, each with temporally aligned text descriptions.
We present an Abductive accident Video understanding framework for Safe Driving perception (AdVersa-SD)
arXiv Detail & Related papers (2024-03-01T10:42:52Z) - Driver Drowsiness Detection System: An Approach By Machine Learning
Application [0.0]
A million people worldwide die each year due to traffic accident injuries.
drowsiness becomes the main principle for to increase in the number of road accidents.
This paper focus to resolve the problem of drowsiness detection with an accuracy of 80%.
arXiv Detail & Related papers (2023-03-11T05:05:36Z) - Cognitive Accident Prediction in Driving Scenes: A Multimodality
Benchmark [77.54411007883962]
We propose a Cognitive Accident Prediction (CAP) method that explicitly leverages human-inspired cognition of text description on the visual observation and the driver attention to facilitate model training.
CAP is formulated by an attentive text-to-vision shift fusion module, an attentive scene context transfer module, and the driver attention guided accident prediction module.
We construct a new large-scale benchmark consisting of 11,727 in-the-wild accident videos with over 2.19 million frames.
arXiv Detail & Related papers (2022-12-19T11:43:02Z) - In-Vehicle Interface Adaptation to Environment-Induced Cognitive
Workload [55.41644538483948]
In-vehicle human-machine interfaces (HMIs) have evolved throughout the years, providing more and more functions.
To tackle this problem, we propose using adaptive HMIs that change according to the mental workload of the driver.
arXiv Detail & Related papers (2022-10-20T13:42:25Z) - Modelling and Detection of Driver's Fatigue using Ontology [60.090278944561184]
Road accidents are the eight leading cause of death all over the world.
Various factors cause driver's fatigue.
Ontological knowledge and rules for driver fatigue detection are to be integrated into an intelligent system.
arXiv Detail & Related papers (2022-08-31T08:42:28Z) - Prevent Car Accidents by Using AI [0.0]
The project conducts research on existing work related to accident prediction using machine learning.
We will use crash data and weather data to train machine learning models to predict crash severity and reduce crashes.
arXiv Detail & Related papers (2022-06-19T16:19:52Z) - Drivers' attention detection: a systematic literature review [62.997667081978825]
Many factors can contribute to distractions while driving, since objects or events to physiological conditions, as drowsiness and fatigue, do not allow the driver to stay attentive.
The technological progress allowed the development and application of many solutions to detect the attention in real situations.
Our work presents a Systematic Literature Review of the methods and criteria used to detect attention of drivers at the wheel.
arXiv Detail & Related papers (2022-04-06T11:36:40Z) - Behavioral Research and Practical Models of Drivers' Attention [21.70169149901781]
This report covers the literature on changes in drivers' visual attention due to factors, internal and external to the driver.
It links cross-disciplinary theoretical and behavioral research on driver's attention to practical solutions.
This report is based on over 175 behavioral studies, nearly 100 practical papers, 20 datasets, and over 70 surveys published since 2010.
arXiv Detail & Related papers (2021-04-12T17:42:04Z) - Learning Accurate and Human-Like Driving using Semantic Maps and
Attention [152.48143666881418]
This paper investigates how end-to-end driving models can be improved to drive more accurately and human-like.
We exploit semantic and visual maps from HERE Technologies and augment the existing Drive360 dataset with such.
Our models are trained and evaluated on the Drive360 + HERE dataset, which features 60 hours and 3000 km of real-world driving data.
arXiv Detail & Related papers (2020-07-10T22:25:27Z) - Affordable Modular Autonomous Vehicle Development Platform [0.0]
1.25 million people die annually from road accidents and Africa has the highest rate of road fatalities.
Financial constraints prevent viable experimentation and research into self-driving technology in Africa.
This paper describes the design of RollE, an affordable modular autonomous vehicle development platform.
arXiv Detail & Related papers (2020-06-20T22:51:48Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.