課程資訊
課程名稱
機器人知覺與學習
Robot Perception and Learning 
開課學期
103-1 
授課對象
電機資訊學院  資訊網路與多媒體研究所  
授課教師
王傑智 
課號
CSIE5117 
課程識別碼
922 U3430 
班次
 
學分
全/半年
半年 
必/選修
選修 
上課時間
星期一6,7,8(13:20~16:20) 
上課地點
 
備註
教室:資546
限學士班四年級以上
總人數上限:32人 
Ceiba 課程網頁
http://ceiba.ntu.edu.tw/1031robopal 
課程簡介影片
 
核心能力關聯
核心能力與課程規劃關聯圖
課程大綱
為確保您我的權利,請尊重智慧財產權及不得非法影印
課程概述

PERCEPTION AND LEARNING ARE THE KEY PREREQUISITES FOR MAKING ROBOTS OR EMBEDDED
SYSTEM TRULY AUTONOMOUS. THESE INTELLIGENT ROBOTS/MACHINES MUST DEAL WITH THE
ENORMOUS UNCERTAINTY THAT EXISTS IN THE PHYSICAL WORLD.

UNCERTAINTY ARISES FROM MANY SOURCES. ROBOT ENVIRONMENTS ARE INHERENTLY
UNPREDICTABLE. THE UNCERTAINTY IS PARTICULARLY HIGH FOR ROBOTS OPERATING IN THE
PROXIMITY OF PEOPLE. SENSORS ARE LIMITED IN WHAT THEY CAN PERCEIVE. LIMITATIONS
ARISE FROM THE RANGE AND RESOLUTION OF A SENSOR, NOISE AND SENSOR FAILURE. ROBOT
ACTUATION INVOLVES MOTORS IN WHICH UNCERTAINTY ARISES FROM EFFECTS LIKE CONTROL
NOISE, WEAR-AND-TEAR AND MECHANICAL FAILURE. IN ADDITION, THE APPROXIMATE NATURE
OF ALGORITHMS CAUSES UNCERTAINTY. AS ROBOTICS IS NOW MOVING INTO THE OPEN WORLD,
MANAGING UNCERTAINTY OF PERCEPTION AND LEARNING HAS BECOME THE MOST IMPORTANT
STEP TOWARDS ROBUST REAL-WORLD ROBOT SYSTEMS.

 

課程目標
THIS COURSE WILL COVER MODERN PROBABILISTIC AND STATISTICAL TECHNIQUES, RELATIVE
NEW APPROACHES TO ROBOTICS THAT PAY TRIBUTE TO THE UNCERTAINTY IN PERCEPTION AND
LEARNING.
 
課程要求
1. Familiarity with software development in Matlab, C or C++ will be essential/helpful for this course.

2. But the most important prerequisite will be creativity and enthusiasm, and a desire to explore.

3. The course load is “heavy”. Think twice if you want to take this course. 
預期每週課後學習時數
 
Office Hours
每週一 12:00~14:00 
指定閱讀
 
參考書目
 
評量方式
(僅供參考)
   
課程進度
週次
日期
單元主題
Week 1
  Introduction 
Week 2
  Robotics Overview 
Week 3
  Range Sensors and Depth Data Processing 
Week 4
  Depth Data Processing 
Week 5
  Probabilistic State Estimation 
Week 6
  Gaussian Filters  
Week 7
  Nonparametric Filters 
Week 8
  Particle Filter 
Week 9
  Midterm Exam 
Week 10
  Motion Models 
Week 11
  Measurement Models 
Week 12
  Localization 
Week 13
  Occupancy Grid Mapping 
Week 14
  SLAM 
Week 15
  Fast-SLAM 
Week 16
  SLAMMOT 
Week 17
  SLAMMOT 2.0 
Week 18
  Final Project Competition