New Arrivals/Restock

Kalman Filter for Beginners: with MATLAB Examples

flash sale iconLimited Time Sale
Until the end
18
25
35

US$48.00 cheaper than the new price!!

Free shipping for purchases over $99 ( Details )
Free cash-on-delivery fees for purchases over $99
Please note that the sales price and tax displayed may differ between online and in-store. Also, the product may be out of stock in-store.
Used  US$32.00
quantity

Product details

Management number 231945936 Release Date 2026/06/18 List Price US$32.00 Model Number 231945936
Category

You opened a Kalman filter textbook, found four chapters of probability theory before the first equation, and closed it. This book is the alternative.The Kalman filter has a reputation problem. The algorithm itself isn't particularly hard — it's the way it has been taught for more than sixty years that makes it feel hard. Most books lead with derivations and proofs, and most readers never make it to the filter. If that's your story, this book was written for you.This book doesn't ask you to derive the Kalman filter. It asks you to run it. Every concept is introduced through a short MATLAB example you can run and modify. There's math, of course — but the math is there to explain what the code is doing, not the other way around.It also gives the Error-State Kalman Filter the introduction it has been missing. The ESKF is now the standard tool for orientation and pose estimation in drones, robots, AR headsets, and spacecraft, yet it's notoriously hard to learn — even experienced practitioners regularly confuse it with the ordinary EKF. This book draws the distinction sharply: why the ESKF exists, and how it relates to the EKF in terms a reader who finished the earlier chapters can follow. An appendix sketches the connection to Lie groups for those who want to keep going.The book teaches six filters and shows how they relate:Standard Kalman filter — the foundation, for linear systemsExtended Kalman filter — for nonlinear systemsUnscented Kalman filter — for when linearization breaks downParticle filter — for when the noise itself is non-GaussianError-State Kalman filter — the modern workhorse for fusing IMU data with other sensors when rotation is involvedComplementary filter — the frequency-domain alternative engineers reach for when a full Kalman filter is overkill Two unifying examples run through the book. The same radar-tracking problem is solved with the EKF, the UKF, and the particle filter, side by side, so you can see where each algorithm works best and where it doesn't. Tilt-attitude estimation — fusing a gyroscope and an accelerometer to figure out which way is up — is solved with the EKF, the ESKF, and the complementary filter. By the end you'll know not just what each filter is, but which one to reach for.What you need to bring: basic linear algebra and access to MATLAB or GNU Octave.What you leave with: the Kalman filter as a tool you can use, not a theory you fear. Read more

ASIN B0H3X1JWDL
ISBN13 979-8199497152
Language English
Publisher Independently published
Dimensions 7.44 x 0.45 x 9.69 inches
Item Weight 1.03 pounds
Print length 199 pages
Publication date June 1, 2026

Correction of product information

If you notice any omissions or errors in the product information on this page, please use the correction request form below.

Correction Request Form

Product Review

You must be logged in to post a review