Skip-Convolutions for Efficient Video Processing with Amir Habibian

EPISODE 496

Join our list for notifications and early access to events

About this Episode

Today we kick off our CVPR coverage joined by Amir Habibian, a senior staff engineer manager at Qualcomm Technologies. In our conversation with Amir, whose research primarily focuses on video perception, we discuss a few papers they presented at the event. We explore the papers Skip-Convolutions for Efficient Video Processing, which looks at training discrete variables end to end into visual neural networks. We also discuss his work on his FrameExit paper, which proposes a conditional early exiting framework for efficient video recognition.
Connect with Amir

Thanks to our sponsor Qualcomm AI Research

Qualcomm AI Research is dedicated to advancing AI to make its core capabilities — perception, reasoning, and action — ubiquitous across devices. Their work makes it possible for billions of users around the world to have AI-enhanced experiences on devices powered by Qualcomm Technologies. To learn more about what Qualcomm Technologies is up to on the research front, visit twimlai.com/qualcomm.

Qualcomm Technologies Logo

More from TWIML

Leave a Reply

Your email address will not be published. Required fields are marked *