Explanation
Deep Learning : Adv. Computer Theory (Knowing something + more!), I think what you will find is that, in this course completely different from the previous one, you will be impressed by how much material we can cover. We’ll bridge the gap from the basic CNN architecture you already know and love, to modern, new architectures like ResNet, and Inception. We will understand in detail the components of object detection using both tensorflow object detection api as well as YOLO algorithms. We will look at modern algorithms called RESNET and MobileNetV2 which are both faster and more accurate than their predecessors. One of the best things is that you will understand the fundamentals of CNN and how it transforms object detection into slow motion.
I hope you enjoy learning about these advanced applications of CNNs Yolo and Tensorflow, I’ll see you in class! Instead of focusing on the detailed inner workings of CNNs (which we’ve done before), we’ll focus on the high-level architecture. The result? Almost zero math No complicated low-level coding like that written in Tensorflow, Theano, YOLO, or PyTorch (although optional exercises are included for more advanced students). Most of the course will be in Keras which means a lot of boring, repetitive stuff is written for you.
What will you learn?
- computer vision
- deep learning
- TensorFlow
Who is this course for?
- Python developers are interested in deep learning
- Developers are interested in computer vision
Guidelines for Deep Learning: Adv. Computer Vision (object discovery + more!)
- Publisher: Udemy
- Teacher: Jay Bhatt
- Language : English
- Level: Medium
- Number of courses: 29
- Duration: 5 hours and 50 minutes
Includes 2022-5
Requirements
Pictures
Sample Clip
Installation Guide
Extract files and watch your favorite player
Subtitle : English
Quality: 720p
Download Links
Password file: free download software
file size
4.41 GB