The purpose of this paper is to implement a method to allow delivery UAV/drones to recognise their path and stay on them. This is to lessen the probability any possible accidents given real time obstacles like flora and fauna or even other drones, essentially ensuring safety. It also ensures that the drones get to their destination to deliver its package and back. The proposed model is to do image recognition of the drone’s route. This can be done through the implementation of a convolutional neural network (CNN). The data comprises of images from forest trail [1]. There are 3 classes namely for the drone to turn right (TR), turn left (TL) or go straight (GS). Based on the images the CNN will be able to classify the images into their respe...
Analyzing videos and images captured by unmanned aerial vehicles or aerial drones is an emerging app...
We develop an autonomous piloting system for a quad-copter drone to make it fly by following a lane ...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
Unmanned aerial vehicles (UAVs) are frequently adopted in disaster management. The vision they provi...
With recent advancements in technology, deep learning is now able to be applied in many areas. With ...
Lane detection has been widely used in land-based vehicles to carry out autonomous driving. The same...
Drones are becoming increasingly popular not only for recreational purposes but also in a variety of...
Drones are becoming increasingly popular not only for recreational purposes but also in a variety of...
In autonomous drones, the drone’s ability to move depends on the drone’s capacity to know its positi...
This paper proposes a vision-based bike trail following approach with obstacle avoidance using CNN (...
The main goal of this paper is to detect roads from aerial imagery recorded by drones. To achieve th...
Abstract: Image segmentation is crucial for computer vision. Visual segmentation simplifies image an...
This article is focused on the real-time detection and recognition of the objects by using acamera l...
Civilian drones are soon expected to be used in a wide variety of tasks, such as aerial surveillance...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
Analyzing videos and images captured by unmanned aerial vehicles or aerial drones is an emerging app...
We develop an autonomous piloting system for a quad-copter drone to make it fly by following a lane ...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
Unmanned aerial vehicles (UAVs) are frequently adopted in disaster management. The vision they provi...
With recent advancements in technology, deep learning is now able to be applied in many areas. With ...
Lane detection has been widely used in land-based vehicles to carry out autonomous driving. The same...
Drones are becoming increasingly popular not only for recreational purposes but also in a variety of...
Drones are becoming increasingly popular not only for recreational purposes but also in a variety of...
In autonomous drones, the drone’s ability to move depends on the drone’s capacity to know its positi...
This paper proposes a vision-based bike trail following approach with obstacle avoidance using CNN (...
The main goal of this paper is to detect roads from aerial imagery recorded by drones. To achieve th...
Abstract: Image segmentation is crucial for computer vision. Visual segmentation simplifies image an...
This article is focused on the real-time detection and recognition of the objects by using acamera l...
Civilian drones are soon expected to be used in a wide variety of tasks, such as aerial surveillance...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
Analyzing videos and images captured by unmanned aerial vehicles or aerial drones is an emerging app...
We develop an autonomous piloting system for a quad-copter drone to make it fly by following a lane ...
This paper considers a model of object detection on aerial photographs and video using a neural netw...