+

Garcia-Aunon et al., 2019 - Google Patents

Monitoring traffic in future cities with aerial swarms: Developing and optimizing a behavior-based surveillance algorithm

Garcia-Aunon et al., 2019

Document ID
18354620563441929515
Author
Garcia-Aunon P
Roldán J
Barrientos A
Publication year
Publication venue
Cognitive Systems Research

External Links

Snippet

Traffic monitoring is a key issue to develop smarter and more sustainable cities in the future, allowing to make a better use of the public space and reducing pollution. This work presents an aerial swarm that continuously monitors the traffic in SwarmCity, a simulated city …
Continue reading at www.sciencedirect.com (other versions)

Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING; COUNTING
    • G06NCOMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
    • G06N3/00Computer systems based on biological models
    • G06N3/02Computer systems based on biological models using neural network models

Similar Documents

Publication Publication Date Title
Garcia-Aunon et al. Monitoring traffic in future cities with aerial swarms: Developing and optimizing a behavior-based surveillance algorithm
Jones et al. Path-planning for unmanned aerial vehicles with environment complexity considerations: A survey
Rezaee et al. Comprehensive review of drones collision avoidance schemes: Challenges and open issues
McCune et al. Investigations of dddas for command and control of uav swarms with agent-based modeling
Roldán-Gómez et al. SwarmCity project: monitoring traffic, pedestrians, climate, and pollution with an aerial robotic swarm: Data collection and fusion in a smart city, and its representation using virtual reality
Aibin et al. Survey of RPAS autonomous control systems using artificial intelligence
Roldán et al. Swarmcity project: Can an aerial swarm monitor traffic in a smart city?
Ghambari et al. UAV path planning techniques: A survey
Rezgui et al. Platooning of autonomous vehicles with artificial intelligence v2i communications and navigation algorithm
Shao et al. UAV cooperative search in dynamic environment based on hybrid-layered APF
Kieffer et al. Hybrid mobility model with pheromones for UAV detection task
Miller et al. Air-ground collaboration with SPOMP: Semantic panoramic online mapping and planning
Papaioannou et al. Uav-based receding horizon control for 3d inspection planning
Biundini et al. Coverage path planning optimization for slopes and dams inspection
Sauter et al. Design of unmanned swarm tactics for an urban mission
Politi et al. Path planning and landing for unmanned aerial vehicles using ai
Ewers et al. Optimal path planning using psychological profiling in drone‐assisted missing person search
Abood et al. Survey on modern applications of multiple unmanned aerial vehicles (UAV) systems
Liang et al. Rlaga: A reinforcement learning augmented genetic algorithm for searching real and diverse marker-based landing violations
Chen et al. Modelling of unmanned aerial vehicle deliveries in populated urban areas for risk management
Prathyusha et al. UAV path planning and collaborative searching for air pollution source using the particle swarm optimization
Thouchamongkol et al. DragFly: Joint Threat Object Detection And UAV Trajectory Planning in Hostile Environments
Aydın et al. An Innovative Approach for Mission Sharing and Route Planning of Swarm Unmanned Aerial Vehicles in Disaster Management
Nigam Control and design of multiple unmanned air vehicles for persistent surveillance
Adkins et al. Real-Time urban observations for Aviation
点击 这是indexloc提供的php浏览器服务,不要输入任何密码和下载