
하루 10분 한달완성 최적화이론 1
임장환
AI/딥러닝, 컴퓨터 비젼, 컴퓨터 그래픽 등에 필요한 최적화이론 입니다. 최적화이론1에서는 중점적으로 다변수함수의 정의와 다변수함수의 미분을 다루고 있습니다. 왜 그럴까요! 모든 최적화 문제는 다변수 함수 형태로 표현되기 때문입니다. 정확한 다변수 함수의 정의와 미분개념을 습득하시면 위 분야의 이론적 접근이 상당히 쉬워집니다.
초급
최적화이론, 선형대수학, 머신러닝
You can understand the theoretical operation principle of the Kalman Filter through easy examples.
36 learners
Understanding the exact working principle of the Kalman Filter through easy examples
A robust mathematical theoretical approach
The difficult and challenging Kalman filter,
Let's understand it clearly with examples ✨
Kalman Filter?
The Kalman filter is an algorithm developed in the 1660s by American control theorist Rudolf E. Kalman. He developed it at NASA to solve rocket and aircraft flight control problems, and it has since been applied to various fields, including control engineering, robotics, and signal processing. It remains a widely used algorithm even today.
The Kalman filter is a mathematically complex algorithm, making it quite challenging to understand. Learning it requires a significant foundation in linear algebra, probability theory, and statistics. It's not easy! I've been there myself. I've hit a wall several times while studying. Despite the numerous lectures available, I still haven't fully grasped the Kalman filter. It's impossible to explain every Kalman filter, and there's no need to.
So, I decided to explain how the Kalman Filter works with a few simple examples . Once you understand the Kalman Filter, you can apply it to your field of expertise. Is it better to apply it without understanding the theory, or to apply it with knowledge of the theory and principles? The wise choice is yours.
In this lecture, I'll explain the working principles of the Kalman filter in a very concrete way, using simple examples to facilitate as intuitive a understanding as possible. If you utilize this lecture effectively, I believe it will significantly reduce the time it takes to understand the Kalman filter.
You can mathematically understand how the Kalman filter works.
Learn from easy examples to examples that will help you fully understand the Kalman filter.
We present the theory of probability and statistics necessary for explaining the theory .
Anyone who knows a little about what a Kalman filter is
Control engineering, robotics, signal processing, and computer vision majors
Graduate students who want to learn the Kalman filter thoroughly
Q. Can I really understand the Kalman Filter?
In fact, I want to tell you that to truly understand the Kalman filter, you need to study it consistently and relentlessly. I created this course because I believe I can help you understand the Kalman filter.
Q. How much prior knowledge of probability and statistics is required?
I'm a first-look, first-hand approach, so I believe anyone with some basic knowledge can tackle the challenge. You should also consistently study probability and statistics. Furthermore, since you don't need to know everything, I've included the necessary information in the appendix.
Q. What kind of mathematical knowledge is required as prerequisite knowledge?
Knowledge of linear algebra, probability and statistics, and optimization theory is required.
Who is this course right for?
For those who want to understand how the Kalman Filter works
Those studying robotics, control engineering, and signal processing
Those studying machine learning and artificial intelligence
Need to know before starting?
Basic knowledge of MatLab and Python languages
Probability and Statistics Basics, Linear Algebra, Calculus
177
Learners
7
Reviews
6
Answers
4.7
Rating
3
Courses
박사 졸업 후 5년 정도 Computer vision를 공부하고 가르치는 계기가 돼서
지금까지 수학전공과 공학이론을 연결한 공부들을 하고 있습니다.
전문분야(공부 분야)
전공: 수학(Topological Geometry), 부전공(컴퓨터 공학)
현) 3D Computer Vision(3D Reconstruction) , Kalman Filter, Lie-group(SO(3)),
Stochastic Differential Equation 연구자
현) 유튜브 채널 운영: 임장환: 3D Computer Vision
현) facebook Spatial AI KR 그룹 (수학전문위원)
출신학교
독일 Kile 대학 이학박사 (Topological Geometry & Lie-group 전공, 컴퓨터 공학 부전공)
중앙대 수학과 학사, 석사(Topology 전공)
경력
전) 대성그룹 자회사 두비비젼 CTO
전) 중앙대학교 첨단영상 대학원 연구교수(3D Computer Vsion연구)
저서:
최적화이론: https://product.kyobobook.co.kr/detail/S000200518524
링크
유튜브: https://www.youtube.com/@3dcomputervision520
블로그: https://blog.naver.com/jang_hwan_im
All
34 lectures ∙ (5hr 10min)
Course Materials:
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1 reviews
$169.40
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