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Austrian Artificial Intelligence Podcast
Manuel Pasieka
72 episodes
2 days ago
Guest Interviews, discussing the possibilities and potential of AI in Austria. Question or Suggestions, write to austrianaipodcast@pm.me
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Technology
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All content for Austrian Artificial Intelligence Podcast is the property of Manuel Pasieka and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Guest Interviews, discussing the possibilities and potential of AI in Austria. Question or Suggestions, write to austrianaipodcast@pm.me
Show more...
Technology
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61. Jules Salzinger - AIT - Building explainable and generalizable AI Systems for Agriculture
Austrian Artificial Intelligence Podcast
1 hour 26 minutes 20 seconds
1 year ago
61. Jules Salzinger - AIT - Building explainable and generalizable AI Systems for Agriculture

Today on the podcast I have to pleasure to talk to Jules Salzinger, Computer Vision Researcher at the Vision & Automation Center of the AIT, the Austrian Institute of Technology.


Jules will share with us, his newest research on applying computer vision systems that analyze drone videos to perform remote plant phenotyping. This makes it possible to analyze plants growth, but as well how certain plant decease spreads within a field.


We will discuss how the diversity im biology and agriculture makes it challenging to build AI systems that generalize between plants, locations and time.


Jules will explain how in their latest research, they focus on performing experiments that provide insights on how to build effective AI systems for agriculture and how to apply them. All of this with the goal to build scalable AI system and to make their application not only possible but efficient and useful.


## TOC

00:00:00 Beginning

00:03:02 Guest Introduction

00:15:04 Supporting Agriculture with AI

00:22:56 Scalable Plant Phenotyping

00:37:33 Paper: TriNet

00:70:10 Major findings


### References

- Jules Salzinger: https://www.linkedin.com/in/jules-salzinger/

- VAC: https://www.ait.ac.at/en/about-the-ait/center/center-for-vision-automation-control

- https://www.ait.ac.at/en/about-the-ait/center/center-for-vision-automation-control

- AI in Agriculture: https://intellias.com/artificial-intelligence-in-agriculture/

- TriNet: Exploring More Affordable and Generalisable Remote Phenotyping with Explainable Deep Models: https://www.mdpi.com/2504-446X/8/8/407

Austrian Artificial Intelligence Podcast
Guest Interviews, discussing the possibilities and potential of AI in Austria. Question or Suggestions, write to austrianaipodcast@pm.me