Understanding the Kalman filter with a simple radar example

(kalmanfilter.net)

60 points | by alex_be 2 hours ago ago

11 comments

  • palata 4 minutes ago ago
  • alex_be 2 hours ago ago

    Author here.

    I recently updated the homepage of my Kalman Filter tutorial with a new example based on a simple radar tracking problem. The goal was to make the Kalman Filter understandable to anyone with basic knowledge of statistics and linear algebra, without requiring advanced mathematics.

    The example starts with a radar measuring the distance to a moving object and gradually builds intuition around noisy measurements, prediction using a motion model, and how the Kalman Filter combines both. I also tried to keep the math minimal while still showing where the equations come from.

    I would really appreciate feedback on clarity. Which parts are intuitive? Which parts are confusing? Is the math level appropriate?

    If you have used Kalman Filters in practice, I would also be interested to hear whether this explanation aligns with your intuition.

    • seanhunter 10 minutes ago ago

      Firstly I think the clarity in general is good. The one piece I think you could do with explaining early on is which pieces of what you are describing are the model of the system and which pieces are the Kalman filter. I was following along as you built the markov model of the state matrix etc and then you called those equations the Kalman filter, but I didn't think we had built a Kalman filter yet.

      Your early explanation of the filter (as a method for estimating the state of a system under uncertainty) was great but (unless I missed it) when you introduced the equations I wasn't clear that was the filter. I hope that makes sense.

    • magicalhippo 42 minutes ago ago

      I just glossed through for now so might have missed it, but it seemed you pulled the process noise matrix Q out of a hat. I guess it's explained properly in the book but would be nice with some justification for why the entries are what they are.

      • alex_be 22 minutes ago ago

        To keep the example focused and reasonably short, I treated Q matrix as given and concentrated on building intuition around prediction and update. But you're right that this can feel like it appears out of nowhere.

        The derivation of the Q matrix is a separate topic and requires additional assumptions about the motion model and noise characteristics, which would have made the example significantly longer. I cover this topic in detail in the book.

        I'll consider adding a brief explanation or reference to make that step clearer. Thanks for pointing this out.

    • KellyCriterion 4 minutes ago ago

      You could do a line extension of your product, like "Kalman Filter in Financial Markets" and sell additional copies :)

    • renjimen 28 minutes ago ago

      You lead with "Moreover, it is an optimal algorithm that minimizes state estimation uncertainty." By the end of the tutorial I understood what this meant, but "optimal algorithm" is a vague term I am unfamiliar with (despite using Kalman Filters in my work). It might help to expand on the term briefly before diving into the math, since IIUC it's the key characteristic of the method.

      • alex_be 18 minutes ago ago

        That's a good point. "Optimal" in this context means that, under the standard assumptions (linear system, Gaussian noise, correct model), the Kalman Filter minimizes the estimation error covariance. In other words, it provides the minimum-variance estimate among all linear unbiased estimators.

        You're right that the term can feel vague without that context. I’ll consider adding a short clarification earlier in the introduction to make this clearer before diving into the math. Thanks for the suggestion.

  • smokel 23 minutes ago ago

    This seems to be an ad for a fairly expensive book on a topic that is described in detail in many (free) resources.

    See for example: https://rlabbe.github.io/Kalman-and-Bayesian-Filters-in-Pyth...

    Is there something in this particular resource that makes it worth buying?

    • cwood-sdf 7 minutes ago ago

      i haven't seen much from other kalman filter resources, but i can say that this book is incredibly detailed and i would highly recommend it

      if you dont want to buy the book, most of the linear kalman filter stuff is available for free: https://kalmanfilter.net/kalman-filter-tutorial.html

  • joshu 12 minutes ago ago

    i liked how https://www.bzarg.com/p/how-a-kalman-filter-works-in-picture... uses color visualization to explain