Path planning is a widely studied subject due to its vast number of applications, specially for robots and unmanned vehicles. Strategies to solve it can be cate gorised as classical methods and heuristic methods, each one with its own advan tages and disadvantages. Generally speaking, analytical methods are very complex for actual applications, whereas the heuristic methods are penalized by the size of the search space. For the case of unmanned aerial vehicles this penalization cannot be afforded, since due to weight and reaction time constrains, paths should be computed on line with fast and computationally light algorithms. In this work the use recurrent neuronal networks to contour this problem is proposed. The neuronal network is taske...
Abstract: The metaheuristics are the algorithms that are designed to solve many optimization problem...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
The Lobula giant movement detector (LGMD) is an identified neuron of the locust that detects looming...
This paper presents a novel algorithm to plan energy-efficient trajectories for autonomous ornithopt...
Abstract: In this paper, we present a trajectory planning method using a recurrent neural network wi...
This work explores the feasibility of steering a drone with a (recurrent) neural network, based on i...
This paper addresses the issue of developing a computerized system for processing information in the...
This paper addresses the issue of developing a computerized system for processing information in the...
For asymptotically optimal sampling-based path planners such as RRT*, path quality improves as the n...
The energy efficiency and flight endurance of small unmanned aerial vehicles (SUAVs) can be improved...
The object of research is the process of controlling the trajectory of unmanned aerial vehicles (UAV...
This paper describes the study conducted to predict the trajectory flight-time of a drone adopting a...
In this communication is considered the problem of on line generation of minimum time trajectories t...
The object of research is the process of controlling the trajectory of unmanned aerial vehicles (UAV...
This paper proposes a method to tackle the Coverage Path Planning (CPP) problem for a fleet of AI-dr...
Abstract: The metaheuristics are the algorithms that are designed to solve many optimization problem...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
The Lobula giant movement detector (LGMD) is an identified neuron of the locust that detects looming...
This paper presents a novel algorithm to plan energy-efficient trajectories for autonomous ornithopt...
Abstract: In this paper, we present a trajectory planning method using a recurrent neural network wi...
This work explores the feasibility of steering a drone with a (recurrent) neural network, based on i...
This paper addresses the issue of developing a computerized system for processing information in the...
This paper addresses the issue of developing a computerized system for processing information in the...
For asymptotically optimal sampling-based path planners such as RRT*, path quality improves as the n...
The energy efficiency and flight endurance of small unmanned aerial vehicles (SUAVs) can be improved...
The object of research is the process of controlling the trajectory of unmanned aerial vehicles (UAV...
This paper describes the study conducted to predict the trajectory flight-time of a drone adopting a...
In this communication is considered the problem of on line generation of minimum time trajectories t...
The object of research is the process of controlling the trajectory of unmanned aerial vehicles (UAV...
This paper proposes a method to tackle the Coverage Path Planning (CPP) problem for a fleet of AI-dr...
Abstract: The metaheuristics are the algorithms that are designed to solve many optimization problem...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
The Lobula giant movement detector (LGMD) is an identified neuron of the locust that detects looming...