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    Self Driving And Ros 2 - Learn By Doing! Odometry & Control

    Posted By: ELK1nG
    Self Driving And Ros 2 - Learn By Doing! Odometry & Control

    Self Driving And Ros 2 - Learn By Doing! Odometry & Control
    Published 9/2023
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 9.09 GB | Duration: 20h 51m

    Create a Self-Driving robot and learn about Robot Localization and Sensor Fusion using Kalman Filters

    What you'll learn

    Create a Real Self-Driving Robot

    Mastering ROS2, the last version of the Robot Operating System

    Implement Sensor Fusion algorithms

    Simulate a Self-Driving robot in Gazebo

    Programming Arduino for Robotics Applications

    Use the ros2_control library

    Develop a Controller

    Odometry and Localization

    Kalman Filters and Extended Kalman Filter

    Probability Theory

    Differential Kinematics

    Create a Digital Twin of a Self-Driving Robot

    Master the TF2 library

    Requirements

    Basic knowledge of Python or C++

    Basic knowledge of Linux

    No prior knowledge of ROS or ROS 2 required

    No prior knowledge of Robotics theory required

    No hardware required. All the course can be followed also using only the PC

    Description

    Would you like to build a real Self-Driving Robot using ROS2, the second and last version of Robot Operating System by building a real robot?Would you like to get started with Autonomous Navigation of Robot and dive into the theoretical and practical aspects of Odometry and Localization from industry experts?The philosophy of this course is the Learn by Doing and quoting the American writer and teacher Dale Carnegie Learning is an Active Process. We learn by doing, only knowledge that is used sticks in your mind.In order for you to master the concepts covered in this course and use them in your projects and also in your future job, I will guide you through the learning of all the functionalities of ROS both from the theoretical and practical point of view.Each section is composed of three parts:Theoretical explanation of the concept and functionalityUsage of the concept in a simple Practical exampleApplication of the functionality in a real RobotThere is more! All the programming lessons are developed both using Python and C++ . This means that you can choose the language you are most familiar with or become an expert Robotics Software Developer in both programming languages!By taking this course, you will gain a deeper understanding of self-driving robots and ROS 2, which will open up opportunities for you in the exciting field of robotics.

    Overview

    Section 1: Introduction

    Lecture 1 Course Motivation

    Lecture 2 The Self-Driving Program

    Lecture 3 Course Presentation

    Lecture 4 Meet your Teacher

    Lecture 5 [EXTRA]: Boost your Robotics Software Developer Career

    Lecture 6 Get the Most out of the Course

    Lecture 7 Course Material

    Section 2: Setup

    Lecture 8 Install Ubuntu on Virtual Machine

    Lecture 9 Install Ubuntu on Dual Boot

    Lecture 10 Install ROS 2

    Lecture 11 Configure the Development Environment

    Section 3: Introduction to ROS 2

    Lecture 12 Why a Robot Operating System?

    Lecture 13 What is ROS 2

    Lecture 14 Why a NEW Robot Operating System?

    Lecture 15 ROS 2 Architecture

    Lecture 16 Hardware Abstraction

    Lecture 17 Low-Level Device Control

    Lecture 18 Messaging Between Process

    Lecture 19 Package Management

    Lecture 20 Architecture of a ROS 2 Application

    Lecture 21 Create and Activate a Workspace

    Lecture 22 Simple Publisher

    Lecture 23 Simple Publisher

    Lecture 24 Simple Subscriber

    Lecture 25 Simple Subscriber

    Section 4: Locomotion

    Lecture 26 Robot Locomotions

    Lecture 27 Mobile Robots

    Lecture 28 Friction Effects

    Lecture 29 Robot Description

    Lecture 30 URDF

    Lecture 31 Create the URDF Model

    Lecture 32 Rviz 2

    Lecture 33 Parameters

    Lecture 34 Parameters

    Lecture 35 Parameters

    Lecture 36 ROS 2 Parameter CLI

    Lecture 37 Visualize the Robot

    Lecture 38 Launch Files

    Lecture 39 Visualize the Robot with Launch Files

    Lecture 40 Gazebo

    Lecture 41 Simulate the Robot

    Lecture 42 Launch the Simulation

    Section 5: Control

    Lecture 43 ROS 2 Control

    Lecture 44 Control Types

    Lecture 45 ros2_control with Gazebo

    Lecture 46 YAML Configuration File

    Lecture 47 Configure ros2_control

    Lecture 48 Launch the Controller

    Lecture 49 ros2_control CLI

    Section 6: Kinematics

    Lecture 50 Robot Kinematics

    Lecture 51 Pose of a Mobile Robot

    Lecture 52 Translation Vector

    Lecture 53 Introduction to Turtlesim

    Lecture 54 Translation Vector

    Lecture 55 Translation Vector

    Lecture 56 Rotation Matrix

    Lecture 57 Rotation Matrix

    Lecture 58 Rotation Matrix

    Lecture 59 Transformation Matrix

    Section 7: Differential Kinematics

    Lecture 60 Differential Kinematics

    Lecture 61 Velocity of a Mobile Robot

    Lecture 62 Linear Velocity

    Lecture 63 Angular Velocity

    Lecture 64 Velocity in World Frame

    Lecture 65 Differential Forward Kinematics

    Lecture 66 Simple Speed Controller

    Lecture 67 Simple Speed Controller

    Lecture 68 Simple Speed Controller

    Lecture 69 Launch the Simple Controller

    Lecture 70 Teleoperating with Joystick

    Lecture 71 Using the diff_drive_controller

    Section 8: TF2 Library

    Lecture 72 The TF2 Library

    Lecture 73 Operations with Transformations

    Lecture 74 Static and Dynamic Transformations

    Lecture 75 Simple TF2 Static Broadcaster

    Lecture 76 Simple TF2 Static Broadcaster

    Lecture 77 Simple TF2 Broadcaster

    Lecture 78 Simple TF2 Broadcaster

    Lecture 79 ROS 2 Services

    Lecture 80 Service Server

    Lecture 81 Service Server

    Lecture 82 Service Client

    Lecture 83 Service Client

    Lecture 84 Simple TF2 Listener

    Lecture 85 Simple TF2 Listener

    Lecture 86 Angle Rapresentations

    Lecture 87 Euler Angles

    Lecture 88 Quaternion

    Lecture 89 Euler to Quaternion

    Lecture 90 Euler to Quaternion

    Lecture 91 TF2 Tools

    Section 9: Odometry

    Lecture 92 Where is the Robot?

    Lecture 93 The Local Localization Challenge

    Lecture 94 Wheel Odometry

    Lecture 95 Differential Inverse Kinematics

    Lecture 96 Differential Inverse Kinematic

    Lecture 97 Differential Inverse Kinematic

    Lecture 98 Wheel Odometry - Position

    Lecture 99 Wheel Odometry - Orientation

    Lecture 100 Wheel Odometry

    Lecture 101 Wheel Odometry

    Lecture 102 Publish Odometry Message

    Lecture 103 Publish Odometry Message

    Lecture 104 Broadcast Odometry Transform

    Lecture 105 Broadcast Odometry Transform

    Section 10: Probability for Robotics

    Lecture 106 Motivation

    Lecture 107 Random Variables

    Lecture 108 Conditional Probability

    Lecture 109 Probability Distributions

    Lecture 110 Gaussian Distributions

    Lecture 111 Total Probability Theorem

    Lecture 112 Bayes Rule

    Lecture 113 Sensor Noise

    Lecture 114 Adding Noise to Robot Motion

    Lecture 115 Adding Noise to Robot Motion

    Lecture 116 Launch Noisy Controller

    Lecture 117 Odometry Comparison

    Section 11: Sensor Fusion

    Lecture 118 Advantages of having Multiple Sensors

    Lecture 119 Gyroscope

    Lecture 120 Accelerometer and IMU

    Lecture 121 Simulate IMU Sensor

    Lecture 122 Kalman Filter

    Lecture 123 Filter Initialization

    Lecture 124 Filter Initialization

    Lecture 125 Measurement Update

    Lecture 126 Measurement Update

    Lecture 127 Measurement Update

    Lecture 128 State Prediction

    Lecture 129 State Prediction

    Lecture 130 State Prediction

    Lecture 131 Localization with Kalman Filter

    Lecture 132 Extended Kalman Filter (EKF)

    Lecture 133 IMU Republisher

    Lecture 134 IMU Republisher

    Lecture 135 Sensor Fusion with robot_localization

    Section 12: Conclusions

    Lecture 136 Recap

    Lecture 137 What's Next?

    Lecture 138 BONUS Lecture

    Self-Driving enthusiast,Makers and Hobbists keen on robotics,Software developers taht wants to learn ROS 2 and Robotics,Students or Engineers that wants to learn how to buid a robot from scratch,Developers that already knows ROS 2 and that want to use it in a real world application,ROS Developers that want to learn and migrate to ROS 2,Robotics Engineers that wants to develop skills in Autonomous Navigation,Beginner Python developers curious about Self-Driving,Beginner C++ developers curious about Self-Driving