
Path Planning for drone using reinforcement learning simulation on Airsim
₹1500-12500 INR
Teslim sırasında ödenir
I am looking for a freelancer who can assist me with path planning for a drone using reinforcement learning simulation on Microsoft AirSim. The project requires expertise in Deep Q-Learning as the preferred reinforcement learning algorithm.
Specific requirements for the drone path planning include navigating through an obstacle dense environment. The ideal freelancer should have experience in developing algorithms that can effectively navigate through such environments.
The preferred simulation tool for this project is Microsoft AirSim. The freelancer should have experience in working with AirSim and be able to utilize its features for the reinforcement learning simulation.
Key requirements:
- Proficiency in Deep Q-Learning
- Experience in path planning in obstacle dense environments
- Should have knowledge of YOLOv6 model for obstacle detection
- Integration of YOLO model with Airsim is must require
- Familiarity with Microsoft AirSim and its features for simulation
If you have the necessary skills and experience in these areas, please submit your proposal.
Proje NO: #37220370
Proje hakkında
Bu iş için 3 freelancer ortalamada ₹9000 teklif veriyor
Hello, How are you? I have 6+ years experience in Video Processing and Deep Learning Daha Fazla
Hi, My name is Seyed Amirreza and I'm an experienced Python developer with the necessary skills to complete your project. I'm expert on Deep Reinforcement Learning and I already worked on model-based and model-free typ Daha Fazla
I am currently working on deep reinforcement learning. And it's not necessary to go with deep q learning there r other approaches to create this project like A2C PPO algorithm etc. I have worked on bunch of environment Daha Fazla