MinSweepers 2019 Robot

de către ahmednaserokasha
Tipul fișierului nu este compatibil

In this project i was responsible for implementing the localization module,building ROS system for the robot on the Raspberry Pi board and Integrating all the modules together. In this project, a four-wheeled robotic rover is built to mimic the disposal of landmine-affected areas safely without hazard to humans. the robot is teleported manually from a station located in a safe zone outside mines area with a joystick and GUI built for monitoring robot status.Landmine area is scanned with a metal detector sensor implemented on the rover to detect both surface and buried mines up to 40 cm depth. Mines location data is collected through a localization module to build a map for the scanned area with mines location flagged. Robot’s Localization module is implemented to accurately obtain rover’s position in a Real-time process, this module consists of a variety of sensors and a software built for calibration and fusion of the readings. Robot’s design was built with a main goal set ahead to su

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Despre mine

Greetings, I'm Ahmed. Thank you for visiting my Profile. I have +4 years’ experience in the fields of Robotics, ROS2 , Python, CPP, Electronics, Machine Learning, and Deep Learning. Presently, I am employed as a Robotics and AI Engineer at Trabotyx, a robotics startup focusing on agricultural robotics and delivering accurate weed control solutions for organic farmers. Specifically, I have extensive experience with the following technologies : ----------------------------------------------------------------------------------------- • Robot Operating System (ROS/ ROS2) • Python • C++ • Mapping • Localization • Path Planning • Autonomous Navigation • Computer Vision • RC robots’ systems • Hardware and sensors selection • Raspberry Pi • Jetson Boards( Nano, Xavier) • Deep Learning, Machine Learning solutions. • Object Detection • Data Featurization Extra skills : --------------- • Scikit-learn, Pandas, NumPy • Web Scraping • Data Exploration, Data cleaning, and bias analysis • SQLite3 databases • PCB Design Hardware and sensors experience : ------------------------------------------- • Cameras( Pi camera, ZED1/ ZED2 camera, Thermal imaging) • IMUs (Accelerometers, Gyros, Magnetometers) • Distance sensing ( IR, Ultrasonic, Proximity ) • LIDAR sensing • GPS modules • Motor drivers • Stepper Motors • Servo Motors Recent Projects: -------------------- • Implemented a visual servoing controller in CPP based on literature techniques • Developed a crop line detection based on Adaptive-ROI methods and implemented with Python • Building a compatible Navigation2 Three-Point-Turn controller • Constructed a robot mission management system using [login to view URL] and integrated it with ROS2 • Implemented autonomous navigation system for outdoor agricultural robots using Navigation2 & ROS2 • Building my robot platform for autonomous indoor navigation tasks and object Detection using ROS & Navigation stack. • Developed a 4WD robot for indoor autonomous or manual navigation using ROS, SLAM, LIDAR, move-base, Gazebo, and Raspberry Pi with added temperature and humidity sensors • Incorporated YOLOv3 /YOLOv5 into various robot platforms • Optimize GoPiGo Robot using ROS and distance sensors to allow the robot to autonomously navigate its environment while avoiding obstacles. • Integrating many AI capabilities like object detection, voice commands, and TTS into a robot platform. • Constructed a cheap bump detection and localization device using GPS, IMU, and ROS • Developed a DNN using NumPy with options for optimization, activation functions, layer number, loss functions, and regularization techniques such as Dropout and L2 regularization. • Created an accident detection algorithm using accelerometer data based on literature benchmarking methods • Conducted digital data processing, filtering, and visualization, and created an ML model for PPG signal to measure blood pressure and detect anxiety

USD35 USD/oră

13 păreri
4.2

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