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  • 学习笔记 | Artificial Intelligence for Robotics

    Artificial Intelligence for Robotics

    Overview

    • Lesson 1 - Localization Overview (9/22/2017 - 10/1/2017)
    • Lesson 2 - Kalman Filters (10/3/2017 - )
    • Lesson 3 - Particle Filters
    • Lesson 4 - Search
    • Lesson 5 - PID Control
    • Lesson 6 - SLAM
    • Exam
    • Project

    Note

    1. Localization Overview

    • Postierior
    • Convolution
    • Measurement update
    • Localization
      • Belief = Probility by Normalization
      • Sense = Product of the following 
      • Move = Convolution (Addition)
    • Bayes's Rule
    • The Theroem of Total Probability
    • Monte Carlo Localization
    • histogram filters

    2. Kalman Filters

    • Kalman Filters vs Monte Carlo Localization
      • Kalman Filters Monte Carlo Localization
        continuous discrete
        uni-modal multi-modal
        Gaussian Histogram

    3. Particle Filters

    4. Search

    5. PID Control

    6. SLAM

    Practice Exam

    Project

    Reference

    1. Udacity Course: Artificial Intelligence for Robotics
    2. Coursera: Robotics - Estimation and Learning
    3. Probabilistic Robotics
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  • 原文地址:https://www.cnblogs.com/casperwin/p/7580024.html
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