Kalman Filter from the Ground Up, 3rd edition
Alex Becker
KalmanFilter.NET, 2024
ISBN: 9789659312030;
Language: English
The Kalman Filter is an algorithm for estimating and predicting the state of a system in the presence of uncertainty, such as measurement noise or unknown influences of external factors. The Kalman Filter is an essential tool in areas like object tracking, navigation, robotics, and control. For instance, it can be applied to estimate the computer mouse trajectory by reducing noise and compensating for hand jitter, resulting in a more stable motion path. In addition to engineering, the Kalman Filter finds applications in financial market analysis, such as detecting stock price trends in noisy market data, and in meteorological applications for weather prediction.
Although the Kalman Filter is a simple concept, many educational resources present it through complex mathematical explanations and lack real-world examples or illustrations. This gives the impression that the topic is more complex than it actually is. Kalman Filter from the Ground Up presents an alternative approach that uses hands-on numerical examples and simple explanations to make the Kalman Filter easy to understand. It also includes examples with bad design scenarios where Kalman Filter fails to track the object correctly and discusses methods for correcting such issues. MATLAB is introduced and used to solve numerous examples in the book. In addition, a supplemental set of MATLAB code files is available for download.
By the end, you will not only understand the underlying concepts and mathematics but also be able to design and implement the Kalman Filter on your own.
웹사이트 선택
번역된 콘텐츠를 보고 지역별 이벤트와 혜택을 살펴보려면 웹사이트를 선택하십시오. 현재 계신 지역에 따라 다음 웹사이트를 권장합니다:
또한 다음 목록에서 웹사이트를 선택하실 수도 있습니다.
사이트 성능 최적화 방법
최고의 사이트 성능을 위해 중국 사이트(중국어 또는 영어)를 선택하십시오. 현재 계신 지역에서는 다른 국가의 MathWorks 사이트 방문이 최적화되지 않았습니다.
미주
- América Latina (Español)
- Canada (English)
- United States (English)
유럽
- Belgium (English)
- Denmark (English)
- Deutschland (Deutsch)
- España (Español)
- Finland (English)
- France (Français)
- Ireland (English)
- Italia (Italiano)
- Luxembourg (English)
- Netherlands (English)
- Norway (English)
- Österreich (Deutsch)
- Portugal (English)
- Sweden (English)
- Switzerland
- United Kingdom (English)