Transfer Learning in Computer Vision a case Study
The conclusion to the series on computer vision talks about the benefits of transfer learning and how anyone can train networks with reasonable accuracy. Usually, articles and tutorials on the web don't include methods and hacks to improve accuracy. The aim of this article is to help you get the most information from one source. Stick on till the end to build your own classifier. The ImageNet moment was remarkable in computer vision and deep learning, as it created opportunities for people to reuse the knowledge procured through several hours or days of training with high-end GPUs.
Apr-19-2020, 17:09:51 GMT