This paper is concerned with the development of a self-driving vehicle model that can navigate its way around the virtual simulator from source to destination by detecting lanes, objects and making predictions for vehicle movement. The source and destination for the vehicle is provided as input at first and a shortest route is calculated using A* search algorithm. Then, the images captured from the live stream of the simulator and other vehicle measurements are passed into the pipeline which is responsible for detecting road lanes, objects in the image and finally making accurate predictions for driving the vehicle. Road lanes are detected using Canny Edge Detection and Hough Transform. Faster R-CNN algorithm is used for object detection. C...
Numerous groups have applied a variety of deep learning techniques to computer vision problems in hi...
Self-driving vehicles will provide more than a luxury in this era. In this study, we are implementin...
With recent advancements in technology, deep learning is now able to be applied in many areas. With ...
For the recent years, there has been a flood of enthusiasm for self-driving vehicles. This is becaus...
<p>Abstract—The suggested method helps predicting vehicles movement in order to give the driver more...
This paper introduces a novel method of lane-change and lane-keeping detection and prediction of sur...
Self-driving cars is a trending topic of the modern world. The ability to control a vehicle without ...
Autonomous vehicles promise large benefits for humanity, such as a significant reduction of injuries...
The aim of this thesis is to develop a functional computational model for vehicle motion prediction ...
In the last few years, the amount of research in the field of self-driving cars has been immense wit...
Deep Learning has revolutionized Computer Vision, and it is the core technology behind capabilities ...
The goal of this project is to advance WPI’s intelligent transportation program through the creation...
Vehicle detection in Intelligent Transportation Systems (ITS) is a key factor ensuring road safety, ...
Abstract—Future cars are anticipated to be driverless; point-to-point transportation services capabl...
Building self-driving vehicles is exciting and promising. It is going to transform the way we live a...
Numerous groups have applied a variety of deep learning techniques to computer vision problems in hi...
Self-driving vehicles will provide more than a luxury in this era. In this study, we are implementin...
With recent advancements in technology, deep learning is now able to be applied in many areas. With ...
For the recent years, there has been a flood of enthusiasm for self-driving vehicles. This is becaus...
<p>Abstract—The suggested method helps predicting vehicles movement in order to give the driver more...
This paper introduces a novel method of lane-change and lane-keeping detection and prediction of sur...
Self-driving cars is a trending topic of the modern world. The ability to control a vehicle without ...
Autonomous vehicles promise large benefits for humanity, such as a significant reduction of injuries...
The aim of this thesis is to develop a functional computational model for vehicle motion prediction ...
In the last few years, the amount of research in the field of self-driving cars has been immense wit...
Deep Learning has revolutionized Computer Vision, and it is the core technology behind capabilities ...
The goal of this project is to advance WPI’s intelligent transportation program through the creation...
Vehicle detection in Intelligent Transportation Systems (ITS) is a key factor ensuring road safety, ...
Abstract—Future cars are anticipated to be driverless; point-to-point transportation services capabl...
Building self-driving vehicles is exciting and promising. It is going to transform the way we live a...
Numerous groups have applied a variety of deep learning techniques to computer vision problems in hi...
Self-driving vehicles will provide more than a luxury in this era. In this study, we are implementin...
With recent advancements in technology, deep learning is now able to be applied in many areas. With ...