Skip to main content

The Center for Brains, Minds & Machines

MENU
  • Videos
  • Search
  • Home
  • About »►
    • Our Vision
    • People »►
      • Alumni
    • Partners
    • External Advisory Committee
    • Reports
    • Support the Center
    • Title IX
    • Contact Us
  • Research »►
    • Vision
    • Modules »►
      • Visual Stream
      • Memory and Executive Function | Brain OS
      • The Cognitive Core
      • Symbolic Compositional Models
    • CBMM Alumni Seed Grants »►
      • Modeling Human Goal Inference as Inverse Planning in Real Scenes
      • Computational models of human social interaction perception
      • Invariance in Visual Cortex Neurons as Defined Through Deep Generative Networks
      • Sleep Network Dynamics Underlying Flexible Memory Consolidation and Learning
      • Neurally-plausible mental-state recognition from observable actions
    • Principal Investigators
    • Datasets and Code
    • 2013-2018 Research »►
      • CBMM Turing++ questions
      • Research Collaborations
      • Research Thrusts
      • Development of Intelligence
      • Neural Circuits for Intelligence
      • Vision and Language
      • Social Intelligence
      • Theoretical Frameworks for Intelligence
      • Exploring Future Directions
      • Projects by Thrust
      • Development of Intelligence
      • Neural Circuits for Intelligence
      • Vision and Language
      • Social Intelligence
      • Theoretical Frameworks for Intelligence
      • Exploring Future Directions
  • News + Events
  • Publications »►
    • CBMM Memos
    • All Publications
    • Views & Reviews
    • Datasets and Code
    • CBMM on Github
    • CBMM Publication Acknowledgement
    • In Press & Submitted
  • Outreach »►
    • Undergraduate Summer Research Internships in Neuroscience »►
      • FAQs
      • Year 2018
      • Year 2017
      • Year 2016
      • Year 2015
      • Year 2014
    • Quantitative Methods Workshop
    • Undergraduate Lecture Series »►
      • Lecture Videos
      • Undergraduate Lecture Series 2018
      • Undergraduate Lecture Series 2017
      • Undergraduate Lecture Series 2015
      • Undergraduate Lecture Series 2014
    • Summer Workshop for Teachers »►
      • 2017 Summer Workshop for Teachers
      • 2016 Summer Workshop for Teachers
      • 2015 Summer Workshop for Teachers
    • Learning Hub
    • Partner Institutions
    • Intro to Machine Learning
    • BMM Summer Course
    • Contact us about Outreach
  • Education »►
    • BMM Summer Course »►
      • BMM Summer Course Home
      • Summer Course Fellows
      • BMM Summer Course 2025
      • BMM Summer Course 2024
      • BMM Summer Course 2023
      • BMM Summer Course 2022
      • BMM Summer Course 2021
      • BMM Summer Course 2020
      • BMM Summer Course 2019
      • BMM Summer Course 2018
      • BMM Summer Course 2017
      • BMM Summer Course 2016
      • BMM Summer Course 2015
      • BMM Summer Course 2014
    • Courses
    • Learning Hub
    • Graduate Education
    • Undergraduate Education
    • Postdoctoral Programs
    • Computational Tutorials »►
      • Schedule
      • Recordings
  • Learning Hub
  • Knowledge Transfer »►
    • Goals
    • Industrial Partnerships
    • Knowledge Transfer Events
    • BMM Summer Course
    • International Programs
    • Workshops, Conferences, & Symposia »►
      • Information-Theoretic Principles in Cognitive Systems
      • Shared Visual Representations in Human & Machine Intelligence (SVRHM) 2022
      • Shared Visual Representations in Human & Machine Intelligence (SVRHM) 2021
      • Shared Visual Representations in Human & Machine Intelligence (SVRHM) 2020
      • REGML 2020 | Regularization Methods for Machine Learning
      • MLCC 2020 @ simula Machine Learning Crash Course
      • Shared Visual Representations in Human and Machine Intelligence (SVRHM) Workshop 2019
      • Limitations of Deep Learning Workshop
      • A workshop on language and vision at CVPR 2019
      • Symbols in the Brain Workshop
      • A workshop on language and vision at CVPR 2018
      • Learning Disentangled Representations: from Perception to Control
      • Kinds of intelligence
      • A workshop on language and vision at CVPR 2017
      • Science of Intelligence: Computational Principles of Natural and Artificial Intelligence
      • CBMM Workshop on Speech Representation, Perception and Recognition
      • Intuitive Physics
      • BMM Workshop Sestri Levante
      • Deep Learning: Theory, Algorithms and Applications
      • Biophysical principles of brain oscillations and their meaning for information processing
      • Neural Information Processing Systems (NIPS) 2015
      • A Turing++ Question: Who is there?
      • CVPR 2015 Language and Vision Workshop
      • Engineering and Reverse Engineering Reinforcement Learning
      • Learning Data Representation: Hierarchies and Invariance

Search form

  • Videos
  • Search
  • Home
  • About »
    • Our Vision
    • People »
      • Alumni
    • Partners
    • External Advisory Committee
    • Reports
    • Support the Center
    • Title IX
    • Contact Us
  • Research »
    • Vision
    • Modules »
      • Visual Stream
      • Memory and Executive Function | Brain OS
      • The Cognitive Core
      • Symbolic Compositional Models
    • CBMM Alumni Seed Grants »
      • Modeling Human Goal Inference as Inverse Planning in Real Scenes
      • Computational models of human social interaction perception
      • Invariance in Visual Cortex Neurons as Defined Through Deep Generative Networks
      • Sleep Network Dynamics Underlying Flexible Memory Consolidation and Learning
      • Neurally-plausible mental-state recognition from observable actions
    • Principal Investigators
    • Datasets and Code
    • 2013-2018 Research »
      • CBMM Turing++ questions
      • Research Collaborations
      • Research Thrusts
      • Development of Intelligence
      • Neural Circuits for Intelligence
      • Vision and Language
      • Social Intelligence
      • Theoretical Frameworks for Intelligence
      • Exploring Future Directions
      • Projects by Thrust
      • Development of Intelligence
      • Neural Circuits for Intelligence
      • Vision and Language
      • Social Intelligence
      • Theoretical Frameworks for Intelligence
      • Exploring Future Directions
  • News + Events
  • Publications »
    • CBMM Memos
    • All Publications
    • Views & Reviews
    • Datasets and Code
    • CBMM on Github
    • CBMM Publication Acknowledgement
    • In Press & Submitted
  • Outreach »
    • Undergraduate Summer Research Internships in Neuroscience »
      • FAQs
      • Year 2018
      • Year 2017
      • Year 2016
      • Year 2015
      • Year 2014
    • Quantitative Methods Workshop
    • Undergraduate Lecture Series »
      • Lecture Videos
      • Undergraduate Lecture Series 2018
      • Undergraduate Lecture Series 2017
      • Undergraduate Lecture Series 2015
      • Undergraduate Lecture Series 2014
    • Summer Workshop for Teachers »
      • 2017 Summer Workshop for Teachers
      • 2016 Summer Workshop for Teachers
      • 2015 Summer Workshop for Teachers
    • Learning Hub
    • Partner Institutions
    • Intro to Machine Learning
    • BMM Summer Course
    • Contact us about Outreach
  • Education »
    • BMM Summer Course »
      • BMM Summer Course Home
      • Summer Course Fellows
      • BMM Summer Course 2025
      • BMM Summer Course 2024
      • BMM Summer Course 2023
      • BMM Summer Course 2022
      • BMM Summer Course 2021
      • BMM Summer Course 2020
      • BMM Summer Course 2019
      • BMM Summer Course 2018
      • BMM Summer Course 2017
      • BMM Summer Course 2016
      • BMM Summer Course 2015
      • BMM Summer Course 2014
    • Courses
    • Learning Hub
    • Graduate Education
    • Undergraduate Education
    • Postdoctoral Programs
    • Computational Tutorials »
      • Schedule
      • Recordings
  • Learning Hub
  • Knowledge Transfer »
    • Goals
    • Industrial Partnerships
    • Knowledge Transfer Events
    • BMM Summer Course
    • International Programs
    • Workshops, Conferences, & Symposia »
      • Information-Theoretic Principles in Cognitive Systems
      • Shared Visual Representations in Human & Machine Intelligence (SVRHM) 2022
      • Shared Visual Representations in Human & Machine Intelligence (SVRHM) 2021
      • Shared Visual Representations in Human & Machine Intelligence (SVRHM) 2020
      • REGML 2020 | Regularization Methods for Machine Learning
      • MLCC 2020 @ simula Machine Learning Crash Course
      • Shared Visual Representations in Human and Machine Intelligence (SVRHM) Workshop 2019
      • Limitations of Deep Learning Workshop
      • A workshop on language and vision at CVPR 2019
      • Symbols in the Brain Workshop
      • A workshop on language and vision at CVPR 2018
      • Learning Disentangled Representations: from Perception to Control
      • Kinds of intelligence
      • A workshop on language and vision at CVPR 2017
      • Science of Intelligence: Computational Principles of Natural and Artificial Intelligence
      • CBMM Workshop on Speech Representation, Perception and Recognition
      • Intuitive Physics
      • BMM Workshop Sestri Levante
      • Deep Learning: Theory, Algorithms and Applications
      • Biophysical principles of brain oscillations and their meaning for information processing
      • Neural Information Processing Systems (NIPS) 2015
      • A Turing++ Question: Who is there?
      • CVPR 2015 Language and Vision Workshop
      • Engineering and Reverse Engineering Reinforcement Learning
      • Learning Data Representation: Hierarchies and Invariance

You are here

CBMM, NSF STC » About » People » Margaret S. Livingstone

People

CBMM is committed to developing and supporting new interdisciplinary collaborations that will further our understanding of intelligence.

Videos
Support Us

Margaret S. Livingstone

Margaret S. Livingstone
Margaret S.
Livingstone
Investigator
Harvard Medical School
Department:  Department of Neurobiology
Lab Affiliation(s):  http://livingstone.med.harvard.edu/

Associated Research Module: 

  • Module 1: Visual Stream

Associated Research Thrust: 

  • Neural Circuits for Intelligence
  • Principal Investigators
  • Exploring Future Directions
  • Principal Investigators
Faculty Profile

Past Advisees

Peter Schade - Research Assistant

Projects

Developmental dynamics of selectivity and invariance in macaque inferotemporal cortex

CBMM Publications

A. Bardon, Xiao, W., Ponce, C. R., Livingstone, M. S., and Kreiman, G., “Face neurons encode nonsemantic features”, Proceedings of the National Academy of Sciences, vol. 119, no. 16, 2022.
C. R. Ponce, Xiao, W., Schade, P. F., Hartmann, T. S., Kreiman, G., and Livingstone, M. S., “Evolving Images for Visual Neurons Using a Deep Generative Network Reveals Coding Principles and Neuronal Preferences”, Cell , vol. 177, p. 1009, 2019.
M. S. Livingstone, Arcaro, M. J., and Schade, P. F., “Cortex Is Cortex: Ubiquitous Principles Drive Face-Domain Development”, Trends in Cognitive Sciences, 2018.
M. J. Arcaro, Schade, P. F., Vincent, J. L., Ponce, C. R., and Livingstone, M. S., “Seeing faces is necessary for face-domain formation”, Nature Neuroscience, vol. 5631628, 2017.
  • Our Vision
  • People
    • Alumni
  • Partners
  • External Advisory Committee
  • Reports
  • Support the Center
  • Title IX
  • Contact Us

News & Videos:

January 6, 2025
Evaluating how brains generalize [Harvard University]
October 31, 2024
54th Rosenstiel Award for Basic Medical Research announced [Brandeis University]
September 11, 2024
US-based researchers win $1 million prize for their work on face recognition [Seattle Times]
May 2, 2019
  IMAGE: This figure shows natural images (right) and images evolved by neurons in the inferotemporal cortex of a monkey (left). Credit: Ponce, Xiao, and Schade et al./Cell
These trippy images were designed by AI to super-stimulate monkey neurons [EurekAlert!]
Support the Center Contact Us Terms of Use Privacy PolicyTitle IXAccessibility
Funded by the National Science Foundation
Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Science Foundation.
© 2025 Center for Brain, Minds, & Machines
Login