10 comments

  • jdhwosnhw a day ago ago

    Fyi the unscented Kalman filter is both easier to implement than the EKF, and also avoids several of the requirements that come along with the need to linearize (such as the differentiability requirement mentioned in the article). Also (to me, at least) the UKF is conceptually much cleaner, as the whole point is to place the approximation in the parameterization of the distribution, rather than on the function operating on that distribution.

    https://groups.seas.harvard.edu/courses/cs281/papers/unscent...

  • nickcw 20 hours ago ago

    Great demo! Very interesting to see that if you wiggle the hunter (1) back and forth the accuracy improves.

    I think this is expected but interesting to see as you see humans and animals doing exactly this to better gauge how far away something is.

    The accuracy also improves (but not as much) if you wiggle the target (2) back and forth which I wasn't expecting.

  • stonlyb a day ago ago

    Pilling on to say well done on the interactivity and visuals / design overall. I'm working to make producing posts like this universally accessible (http://motate.app/) and posts like yours are an inspiration.

    • a day ago ago
      [deleted]
  • jmux a day ago ago

    nice work! the interactive visuals are really cool

  • noen a day ago ago

    Really well written article, thank you!

  • treycluff a day ago ago

    I love a blog post with interaction

  • rayhanadev a day ago ago

    love seeing purdue hackers folks on hackernews :)

    • kritr a day ago ago

      I was going to say the same thing. Purdue Hackers has grown into a much needed space at Purdue, nice to see the effects going beyond.

  • j0h120311 10 hours ago ago

    [flagged]