- Видео 53
- Просмотров 85 238
2d3d.ai
Израиль
Добавлен 7 июн 2020
This channel is dedicated to talks about 2D, 3D and AI. Video, image, 3D modelling, depth maps, neural networks, everything goes.
Find us at:
Newsletter for updates ➜ eepurl.com/gJ1t-D
Subreddit for discussions ➜ www.reddit.com/r/2D3DAI/
Discord server for, well, discord ➜ discord.gg/MZuWSjF
Blog ➜ 2d3d.ai
Find us at:
Newsletter for updates ➜ eepurl.com/gJ1t-D
Subreddit for discussions ➜ www.reddit.com/r/2D3DAI/
Discord server for, well, discord ➜ discord.gg/MZuWSjF
Blog ➜ 2d3d.ai
Explainable, Adaptive, and Cross-Domain Few-Shot Learning (Part 2) - Dr. Leonid Karlinsky
Explainable, Adaptive, and Cross-Domain Few-Shot Learning (Part 2) - Dr. Leonid Karlinsky
Просмотров: 608
Видео
Introduction to Continual Learning - Davide Abati (CVPR 2020)
Просмотров 8 тыс.4 года назад
Introduction to Continual Learning - Davide Abati (CVPR 2020)
3D Scene Reconstruction from a Single Viewport - Maximilian Denninger (ECCV 2020)
Просмотров 1,9 тыс.4 года назад
3D Scene Reconstruction from a Single Viewport - Maximilian Denninger (ECCV 2020)
Blender pipeline to generate images for deep learning (BlenderProc) - Maximilian Denninger
Просмотров 11 тыс.4 года назад
Blender pipeline to generate images for deep learning (BlenderProc) - Maximilian Denninger
Visual Question Answering Based on Image and Video - Thao Minh Le
Просмотров 1,8 тыс.4 года назад
Visual Question Answering Based on Image and Video - Thao Minh Le
Council-GAN - Breaking the Cycle (CVPR 2020) - Ori Nizan
Просмотров 5974 года назад
Council-GAN - Breaking the Cycle (CVPR 2020) - Ori Nizan
Image Generation using Semantic Pyramid and GANs - Assaf Shocher (Google Research - CVPR 2020)
Просмотров 5564 года назад
Image Generation using Semantic Pyramid and GANs - Assaf Shocher (Google Research - CVPR 2020)
Maximizing Computer Vision's Field of View - 360° Computer Vision in Deep Learning (Dr. Marc Eder)
Просмотров 1,4 тыс.4 года назад
Maximizing Computer Vision's Field of View - 360° Computer Vision in Deep Learning (Dr. Marc Eder)
High-Resolution Networks: A Universal Architecture for Visual Recognition - Dr. Jingdong Wang
Просмотров 3,3 тыс.4 года назад
High-Resolution Networks: A Universal Architecture for Visual Recognition - Dr. Jingdong Wang
Commonsense Reasoning for Natural Language Processing Lecture - Dr. Vered Shwartz
Просмотров 2,7 тыс.4 года назад
Commonsense Reasoning for Natural Language Processing Lecture - Dr. Vered Shwartz
From neuroscience to a simple software - Machine Learning history lecture
Просмотров 2384 года назад
From neuroscience to a simple software - Machine Learning history lecture
Fake Anything: "The Art of Deep Learning" - Deep-Fake, GANs, Digital Art and a Live Hands-On Session
Просмотров 2 тыс.4 года назад
Fake Anything: "The Art of Deep Learning" - Deep-Fake, GANs, Digital Art and a Live Hands-On Session
HRNet Pose Estimation Over World Record Dwarf Launch!
Просмотров 7 тыс.4 года назад
HRNet Pose Estimation Over World Record Dwarf Launch!
thanks so much for having this stuff up. Watching through your videos and its super useful!
very glad to see how the author explain details and process of HRnet,thanks to this video
Great video, can we get more explanation regarding the mathematical part on each paper, wolud love it if you do so.
When VQA will be ready to use? Anytime soon?
More lectures like this based on computer vision concepts please!🔥
Great work, great presentation!
This was a perfect intro to BlenderProc. Thanks Maximilian for making such an awesome tool opensource and Peter for organising this session !
Thanks for u sharing
Thanks for your sharing. This is a great tutorial! I am Yanyi Zhang from Dalian University of Technology, China. I read your work recently and wanna explore this field in the future.
How can I get the results of this work?
Hi can you suggest me some pipeline for generating keypoint synthetic datasets using blender ?
What was the quality of the camera images and lidar points?
What kind of tools were used for annotation of camera and lidar data?
I love how peter also asks about the thought process of the author on how he came up with the ideas. Gem !
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
I'm just curious if the reconstructed geometry provide information such as for example, the volum of the backrest? or the width, height and length of it? would be great to hear back an answer
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
We have recently read about your work and want to study this topic in a more challenge open world setting. Much happy to see your videos here. Love from Northwestern Polytechnical University, China.
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Nice work
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Hey Peter, nice video, wondering why in the 3d to 3d decoder, you did classification of point cloud instead of using a CNN and comparing the output voxel with bceloss for example? thanks in advanced for the answer.
Hey is there a practical code or guide for me to test the knowledge i gained
great work, Thanks for hosting this
Hello, thank you for your video. It's clear and instructive. I am wondering about the color. Does the model keep the original picture color ? Can the 3D model has color, and for the unreveal part of the model can it guess the color ? How that it works ? Do you have resources to share with me ?
Thanks! No, there is no coloring in this model
Very good. Thank you!
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
... could you talk about artificial neural network with output layer binarized...?
Feel free to raise the question in our reddit/discord
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Great talk and this did not hit my research radar, helped me catch up with the state-of-the-art in this topic. I am trying to find the repo which is 404 given in the paper. It would be great if the authors can make their repo public to reproduce their results.
From Artem: The code will be public next monday latest (final clean ups before IROS)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Your Recording is awesome which helped to gain basic knowledge related to the project which is similar to the idea concept. The project is based on 3D reconstruction using 2 or 3 orthographic views(engineering drawings) please suggest to me how to get the solution.
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)
Would love to hear any comment or input you have. Did you find the content interesting? Is there a place for improvement? Please leave any feedback you have here in a comment :)