Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

YouTube

The Quest to Create Engineer-Quality Models of the Mechanisms of Human Visual Object Recognition - Pt1

MITCBMM via YouTube

Overview

Explore the mechanisms of human visual object recognition in this comprehensive lecture by James DiCarlo from MIT. Delve into topics such as perception, systems level models, reverse engineering, and the astonishing hypothesis. Examine the invariance problem, nonhuman primate examples, and the monkey visual system. Learn about the ventral visual stream, infratemporal cortex, and their relevance to brain-machine interfaces and AI. Gain insights into visual neurophysiology and understand the motivation behind creating engineer-quality models of visual object recognition. Discover key takeaways and the importance of this research in advancing our understanding of human perception and its potential applications in technology.

Syllabus

Introduction
Why are you here
Perception
Astonishing Hypothesis
Systems Level Models
Reverse Engineering
Philosophy
Core Recognition
Testing
Invariance problem
Nonhuman primate example
Confusion matrix
Monkey visual system
How do neuroscientists know
The ventral visual stream
The infratemporal cortex
Why does this matter
Brain machine interfaces
AI relevance
Key takeaway
Motivation
Visual Neurophysiology

Taught by

MITCBMM

Reviews

Start your review of The Quest to Create Engineer-Quality Models of the Mechanisms of Human Visual Object Recognition - Pt1

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.