Podcast thumbnail for View Dependent

View Dependent

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by View Dependent

5.0(5 reviews)
19 episodes
Updated Daily
Accepts GuestsHas SponsorsLocation 🇺🇸

Podcast Overview

Welcome to the View Dependent podcast, where we talk to leaders in the 3D reconstruction space of Radiance Field technologies, focusing on methods like Neural Radiance Fields (#NeRFs), Gaussian Splatting (#3DGS), Gaussian Ray Tracing (#3DGRT), and Diffusion based models.

Language

🇺🇲

Publishing Since

6/22/2023

1 verified contact email on file for View Dependent

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Recent Episodes

Episode thumbnail for Jan Held on Triangle Splatting, Mesh Splatting, and Radiance Fields In Traditional Pipelines

May 13, 2026

Jan Held on Triangle Splatting, Mesh Splatting, and Radiance Fields In Traditional Pipelines

<p>Jan Held joins View Dependent to walk through his research into alternative primitives for radiance fields, with a focus on what each choice enables for traditional rendering pipelines. We cover the full arc — 3D Convex Splatting → Triangle Splatting → Triangle Splatting+ → Mesh Splatting → Nexels — and what each step solved. Then we get into his work at SpAItial on world models that reconstruct explorable scenes from a single image, and where reconstruction and generative approaches each fit.</p><p><br></p>

Episode thumbnail for Gaussian Splatting with Bernhard Kerbl

December 23, 2024

Gaussian Splatting with Bernhard Kerbl

Bernhard Kerbl discusses Gaussian Splatting and real-time radiance field rendering with Michael Rubloff and MrNeRF in this interview.

Episode thumbnail for Radiance Fields and The Future with Jon Barron

December 5, 2024

Radiance Fields and The Future with Jon Barron

Google researcher Jon Barron discusses the discovery of NeRF and subsequent Radiance Field methods with Michael Rubloff and Mr. NeRF in this interview.

19 total episodes available

Recent guests on View Dependent

Guests from recent episodes — sign up to see every guest that has ever appeared on this show.

Bernhard Kerbl

Guest

Jon Barron

Guest

Antoine Guédon

Guest

Arthur Brussee

Guest

Junyi Zhang

Guest

Hengyi Wang

Guest

Wieland Morgenstern

Guest

David Rhodes

Guest

Ruben Diaz

Guest

Will Eastcott

Guest

Jonathan Stephens

Guest

Zan Gojcic

Guest

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Frequently asked questions

Have a different question and can't find the answer you're looking for? Reach out to our support team by sending us an email and we'll get back to you as soon as we can.

What is View Dependent?

Welcome to the View Dependent podcast, where we talk to leaders in the 3D reconstruction space of Radiance Field technologies, focusing on methods like Neural Radiance Fields (#NeRFs), Gaussian Splatting (#3DGS), Gaussian Ray Tracing (#3DGRT), and Diffusion based models.

How often does this podcast release new episodes?

This podcast updates daily.

Where can I listen to this podcast?

This podcast is available on 4 platforms including Apple Podcasts, Spotify, and more. You can also use the RSS feed directly.

Does this podcast accept guests?

Yes, this podcast regularly features guests.

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