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Computer Vision Decoded

By: EveryPoint
  • Summary

  • A tidal wave of computer vision innovation is quickly having an impact on everyone's lives, but not everyone has the time to sit down and read through a bunch of news articles and learn what it means for them. In Computer Vision Decoded, we sit down with Jared Heinly, the Chief Scientist at EveryPoint, to discuss topics in today’s quickly evolving world of computer vision and decode what they mean for you. If you want to be sure you understand everything happening in the world of computer vision, don't miss an episode!
    © EveryPoint, Inc
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Episodes
  • A Computer Vision Scientist Reacts to the iPhone 15 Announcement
    Sep 18 2023

    In this episode of Computer Vision Decoded, we are going to dive into our in-house computer vision expert's reaction to the iPhone 15 and iPhone 15 Pro announcement.

    We dive into the camera upgrades, decode what a quad sensor means, and even talk about the importance of depth maps.

    Episode timeline:

    00:00 Intro
    02:59 iPhone 15 Overview
    05:15 iPhone 15 Main Camera
    07:20 Quad Pixel Sensor Explained
    15:45 Depth Maps Explained
    22:57 iPhone 15 Pro Overview
    27:01 iPhone 15 Pro Cameras
    32:20 Spatial Video
    36:00 A17 Pro Chipset

    This episode is brought to you by EveryPoint. Learn more about how EveryPoint is building an infinitely scalable data collection and processing platform for the next generation of spatial computing applications and services: https://www.everypoint.io

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    42 mins
  • OpenMVG Decoded: Pierre Moulon's 10 Year Journey Building Open-Source Software
    May 5 2023

    In this episode of Computer Vision Decoded, we are going to dive into Pierre Moulon's 10 years experience building OpenMVG. We also cover the impact of open-source software in the computer vision industry and everything involved in building your own project. There is a lot to learn here!

    Our episode guest, Pierre Moulon, is a computer vision research scientist and creator of OpenMVG - a library for computer-vision scientists and targeted for the Multiple View Geometry community.

    The episode follow's Pierre's journey building OpenMVG which he wrote about as an article in his GitHub repository.

    Explore OpenMVG on GitHub: https://github.com/openMVG/openMVG
    Pierre's article on building OpenMVG: https://github.com/openMVG/openMVG/discussions/2165

    Episode timeline:

    00:00 Intro
    01:00 Pierre Moulon's Background
    04:40 What is OpenMVG?
    08:43 What is the importance of open-source software for the computer vision community?
    12:30 What to look for deciding to use an opensource project
    16:27 What is Multi View Geometry?
    24:24 What was the biggest challenge building OpenMVG?
    31:00 How do you grow a community around an open-source project
    38:09 Choosing a licensing model for your open-source project
    43:07 Funding and sponsorship for your open-source project
    46:46 Building an open-source project for your resume
    49:53 How to get started with OpenMVG

    Contact:
    Follow Pierre Moulon on LinkedIn: https://www.linkedin.com/in/pierre-moulon/
    Follow Jared Heinly on Twitter: https://twitter.com/JaredHeinly
    Follow Jonathan Stephens on Twitter at: https://twitter.com/jonstephens85

    This episode is brought to you by EveryPoint. Learn more about how EveryPoint is building an infinitely scalable data collection and processing platform for the next generation of spatial computing applications and services: https://www.everypoint.io

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    56 mins
  • Understanding Implicit Neural Representations with Itzik Ben-Shabat
    Apr 21 2023

    In this episode of Computer Vision Decoded, we are going to dive into implicit neural representations.

    We are joined by Itzik Ben-Shabat, a Visiting Research Fellow at the Australian National Universit (ANU) and Technion – Israel Institute of Technology as well as the host of the Talking Paper Podcast.

    You will learn a core understanding of implicit neural representations, key concepts and terminology, how it's being used in applications today, and Itzik's research into improving output with limit input data.

    Episode timeline:

    00:00 Intro
    01:23 Overview of what implicit neural representations are
    04:08 How INR compares and contrasts with a NeRF
    08:17 Why did Itzik pursued this line of research
    10:56 What is normalization and what are normals
    13:13 Past research people should read to learn about the basics of INR
    16:10 What is an implicit representation (without the neural network)
    24:27 What is DiGS and what problem with INR does it solve?
    35:54 What is OG-I NR and what problem with INR does it solve?
    40:43 What software can researchers use to understand INR?
    49:15 What information should non-scientists be focused to learn about INR?

    Itzik's Website: https://www.itzikbs.com/
    Follow Itzik on Twitter: https://twitter.com/sitzikbs
    Follow Itzik on LinkedIn: https://www.linkedin.com/in/yizhak-itzik-ben-shabat-67b3b1b7/
    Talking Papers Podcast: https://talking.papers.podcast.itzikbs.com/

    Follow Jared Heinly on Twitter: https://twitter.com/JaredHeinly
    Follow Jonathan Stephens on Twitter at: https://twitter.com/jonstephens85

    Referenced past episode- What is CVPR: https://share.transistor.fm/s/15edb19d

    This episode is brought to you by EveryPoint. Learn more about how EveryPoint is building an infinitely scalable data collection and processing platform for the next generation of spatial computing applications and services: https://www.everypoint.io

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    55 mins

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