Media Summary: More related to our work is Active Stereo Net that proposes a Title: GSAT: Geometric Traversability Estimation using Self-Supervised Sim-to-Real Adaptation for Visual Robotic Manipulation

Icra 2020 Presentation Self Supervised - Detailed Analysis & Overview

More related to our work is Active Stereo Net that proposes a Title: GSAT: Geometric Traversability Estimation using Self-Supervised Sim-to-Real Adaptation for Visual Robotic Manipulation For more information about Stanford's online Artificial Intelligence programs visit: This lecture covers: 1.

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ICRA 2020 presentation: Self-Supervised Learning of State Estimation for Deformable Objects
Self-Supervised Depth Completion for Active Stereo [ICRA presentation]
What Is Self-Supervised Learning and Why Care?
Self-Supervised Learning of Appliance Usage - ICLR 2020
[ICRA 2026] GSAT: Geometric Traversability Estimation using Self-supervised Learning
Self-Supervised Deep Pose Corrections for Robust Visual Odometry (ICRA'20)
[ICRA 2020 Presentation] Motion2Vec: Semi-Supervised Representation Learning from Surgical Videos
[ICRA'24]Crossway Diffusion - the 7min presentation
"Self-Supervised Learning of Lidar Segmentation for Autonomous Indoor Navigation" @ ICRA 2021
Self-Supervised Sim-to-Real Adaptation for Visual Robotic Manipulation
Self-Supervised Depth Correction of Lidar Measurements from Map Consistency Loss, ICRA 2024
[ICRA 2026] KISS-IMU: Self-supervised Inertial Odometry with Motion-balanced Learning
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ICRA 2020 presentation: Self-Supervised Learning of State Estimation for Deformable Objects

ICRA 2020 presentation: Self-Supervised Learning of State Estimation for Deformable Objects

Self

Self-Supervised Depth Completion for Active Stereo [ICRA presentation]

Self-Supervised Depth Completion for Active Stereo [ICRA presentation]

More related to our work is Active Stereo Net that proposes a

What Is Self-Supervised Learning and Why Care?

What Is Self-Supervised Learning and Why Care?

What is

Self-Supervised Learning of Appliance Usage - ICLR 2020

Self-Supervised Learning of Appliance Usage - ICLR 2020

Project website: http://sapple.csail.mit.edu/ Paper: https://openreview.net/pdf?id=B1lJzyStvS.

[ICRA 2026] GSAT: Geometric Traversability Estimation using Self-supervised Learning

[ICRA 2026] GSAT: Geometric Traversability Estimation using Self-supervised Learning

Title: GSAT: Geometric Traversability Estimation using

Self-Supervised Deep Pose Corrections for Robust Visual Odometry (ICRA'20)

Self-Supervised Deep Pose Corrections for Robust Visual Odometry (ICRA'20)

"

[ICRA 2020 Presentation] Motion2Vec: Semi-Supervised Representation Learning from Surgical Videos

[ICRA 2020 Presentation] Motion2Vec: Semi-Supervised Representation Learning from Surgical Videos

paper: https://arxiv.org/pdf/2006.00545.pdf website: https://sites.google.com/view/motion2vec short video: ...

[ICRA'24]Crossway Diffusion - the 7min presentation

[ICRA'24]Crossway Diffusion - the 7min presentation

This video is the

"Self-Supervised Learning of Lidar Segmentation for Autonomous Indoor Navigation" @ ICRA 2021

"Self-Supervised Learning of Lidar Segmentation for Autonomous Indoor Navigation" @ ICRA 2021

Recording of the following

Self-Supervised Sim-to-Real Adaptation for Visual Robotic Manipulation

Self-Supervised Sim-to-Real Adaptation for Visual Robotic Manipulation

Self-Supervised Sim-to-Real Adaptation for Visual Robotic Manipulation

Self-Supervised Depth Correction of Lidar Measurements from Map Consistency Loss, ICRA 2024

Self-Supervised Depth Correction of Lidar Measurements from Map Consistency Loss, ICRA 2024

Self

[ICRA 2026] KISS-IMU: Self-supervised Inertial Odometry with Motion-balanced Learning

[ICRA 2026] KISS-IMU: Self-supervised Inertial Odometry with Motion-balanced Learning

Title: KISS-IMU:

Stanford CS231N | Spring 2025 | Lecture 12: Self-Supervised Learning

Stanford CS231N | Spring 2025 | Lecture 12: Self-Supervised Learning

For more information about Stanford's online Artificial Intelligence programs visit: https://stanford.io/ai This lecture covers: 1.