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Currently learning Position Based Dynamics. Soft Body Simulation is fun!

16,868 görüntüleme • 1 yıl önce •via X (Twitter)

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Marius Fabry 🍣 profil fotoğrafı
Marius Fabry 🍣1 yıl önce

Did some experiments with this a long time ago, but also wanted it to be multiplayer over network, which proved difficult 😂

PowerBeatsVR profil fotoğrafı
PowerBeatsVR3 yıl önce

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SpyreIO profil fotoğrafı
SpyreIO1 yıl önce

Looks awesome! I've done a ton of rigid body kinematics, but never soft body. Level with me: is it difficult? What solver are you using?

matsuoka-601 profil fotoğrafı
matsuoka-6011 yıl önce

This solver is the one I've been implementing for about 2 weeks. The core idea of this simulation is pretty simple — Position Based Dynamics (PBD) with distance and volume constraint (see section 4.3 in the original PBD paper), which you can implement <200 LOC I guess.

Iwo Plaza | TypeGPU profil fotoğrafı
Iwo Plaza | TypeGPU1 yıl önce

Looks so good that it’s making me hungry 😭🥝🍋‍🟩🍏

Javier Meseguer profil fotoğrafı
Javier Meseguer1 yıl önce

Looks great!

Surf Da Earf profil fotoğrafı
Surf Da Earf1 yıl önce

so sic, softbodys are sweet

GoPal profil fotoğrafı
GoPal1 yıl önce

what are you using to visualise it

matsuoka-601 profil fotoğrafı
matsuoka-6011 yıl önce

I'm using three.js. Each blob is just a collection of triangles, so drawing it is pretty easy.

Terence Watson profil fotoğrafı
Terence Watson1 yıl önce

my son would love this. i need to do this too

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