Data scientists need annotated data (and lots of it) to train the deep neural networks (DNNs) at the core of AI workflows. Obtaining annotated data or annotating data yourself is a challenging and time-consuming process.
For example, it took about 3,100 total hours for members of Intel’s own data annotation team to annotate more than 769,000 objects for just one of our algorithms. To help solve this challenge, Intel is conducting research to find better methods of data annotation and deliver tools that help developers do the same.
2016
Vatic as a web-based annotation solution.2017
Internal version with support for images and attributes.2018
First public release on GitHub.2021
Dataset as the first-class citizen.202X
Data platform.Contact Us:
Russia, Nizhny Novgorod, Turgeneva street 30 (campus TGV)
Feedback from users helps Intel determine future direction for CVAT’s development. We hope to improve the tool’s user experience, feature set, stability, automation features and ability to be integrated with other services and encourage members of the community to take an active part in CVAT’s development.
- You can ask questions anytime in public Gitter chat.
- You can find answers to your questions on Stack Overflow.
- We have is a separate Gitter chat for developers to discuss the development of CVAT.
- Visit our GitHub repository.