Тёмный

Recognize custom objects with TensorFlow.js. 

Google for Developers
Подписаться 2,4 млн
Просмотров 7 тыс.
50% 1

In this video learn how to re-create the popular Teachable Machine website for the purpose of recognizing any object via image classification. Here you will use the MobileNet base model, chop off the classification head, and then replace it with your own new classification head for the task that you want to solve - recognizing a custom object it never saw before! Even better this will all happen in less than a minute on most machines, right in your web browser with TensorFlow.js.
Catch more episodes from Machine Learning for Web Developers (Web ML) → goo.gle/learn-WebML
Check out TensorFlow on RU-vid → goo.gle/TensorFlow-RU-vid
Subscribe to Google Developers → goo.gle/developers
Connect with Jason Mayes to ask questions:
LinkedIn → goo.gle/3GwgeLw
Twitter →goo.gle/3Xh6MT7
Discord →goo.gle/3WWVO5t
Use #WebML to share your learnings and creations from this course to meet your peers on social media!
See what others have already made with Web ML → goo.gle/made-with-tfjs

Наука

Опубликовано:

 

7 фев 2023

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии : 5   
@GoogleDevelopers
@GoogleDevelopers Год назад
Catch more episodes from Machine Learning for Web Developers (Web ML) → goo.gle/learn-WebML
@lucelysandre
@lucelysandre Год назад
Thanks Google team!
@forheuristiclifeksh7836
@forheuristiclifeksh7836 18 дней назад
0:30 transfer learning with mobile net
@TIPSEDITINGBANGLA
@TIPSEDITINGBANGLA Год назад
nice
Далее
5.3: Using layers models for transfer learning
9:26
Просмотров 2,1 тыс.
Вопрос Ребром - Субо
49:41
Просмотров 1,4 млн
Cómo Abrir una Imagen en python 2024
4:02
How web developers can use machine learning
7:42
Просмотров 21 тыс.
The moment we stopped understanding AI [AlexNet]
17:38
Просмотров 813 тыс.
#engineering #diy #amazing #electronic #fyp
0:59
Просмотров 2,4 млн
ЗАБЫТЫЙ IPHONE 😳
0:31
Просмотров 20 тыс.
ЗАБЫТЫЙ IPHONE 😳
0:31
Просмотров 20 тыс.