Deep Learning :Adv. Computer Vision (object detection+more!)
Deep Learning :Adv. Computer Vision (object detection+more!), available at $59.99, has an average rating of 3.85, with 42 lectures, 2 quizzes, based on 1049 reviews, and has 25349 subscribers.
You will learn about computer vision deep learning TensorFlow This course is ideal for individuals who are Python developers curious about deep learning or Developers curious about computer vision It is particularly useful for Python developers curious about deep learning or Developers curious about computer vision.
Enroll now: Deep Learning :Adv. Computer Vision (object detection+more!)
Summary
Title: Deep Learning :Adv. Computer Vision (object detection+more!)
Price: $59.99
Average Rating: 3.85
Number of Lectures: 42
Number of Quizzes: 2
Number of Published Lectures: 40
Number of Curriculum Items: 44
Number of Published Curriculum Objects: 40
Original Price: $19.99
Quality Status: approved
Status: Live
What You Will Learn
- computer vision
- deep learning
- TensorFlow
Who Should Attend
- Python developers curious about deep learning
- Developers curious about computer vision
Target Audiences
- Python developers curious about deep learning
- Developers curious about computer vision
Latest update: I will show you both how to use a pretrained model and how to train one yourself with a custom dataset on Google Colab.
This course is a complete guide for setting up TensorFlow object detection api, Transfer learning and a lot more
I think what you’ll find is that, this course is so entirely different from the previous one, you will be impressed at just how much material we have to cover.
Here is the details about the project.
Here we will star from colab understating because that will help to use free GPU provided by google to train up our model.
We’re going to bridge the gap between the basic CNN architecture you already know and love, to modern, novel architectures such as ResNet, and Inception.
We will understand object detection modules in detail using both tensorflow object detection api as well as YOLO algorithms.
We’ll be looking at a state-of-the-art algorithm called RESNET and MobileNetV2which is both faster and more accurate than its predecessors.
One best thing is you will understand the core basics of CNN and how it converts to object detection slowly.
I hope you’re excited to learn about these advanced applications of CNNs Yolo and Tensorflow, I’ll see you in class!
AMAGING FACTS:
· This course give’s you full hand’s on experience of training models in colab GPU.
· Instead of focusing on the detailed inner workings of CNNs (which we’ve already done), we’ll focus on high-level building blocks. The result? Almost zero math.
· Another result? No complicated low-level code such as that written in Tensorflow, Theano,YOLO, or PyTorch (although some optional exercises may contain them for the very advanced students). Most of the course will be in Keras which means a lot of the tedious, repetitive stuff is written for you.
Suggested Prerequisites:
· Know how to build, train, and use a CNN using some library (preferably in Python)
· Understand basic theoretical concepts behind convolution and neural networks
· Decent Python coding skills, preferably in data science and the Numpy Stack
Who this course is for:
· Students and professionals who want to take their knowledge of computer vision and deep learning to the next level
· Anyone who wants to learn about object detection algorithms like SSD and YOLO
· Anyone who wants to learn how to write code for neural style transfer
· Anyone who wants to use transfer learning
· Anyone who wants to shorten training time and build state-of-the-art computer vision nets fast
· Anyone who is starting with computer vison
Course Curriculum
Chapter 1: Introduction to Computer Vision and Deep Learning
Lecture 1: Introduction to Computer Vision
Lecture 2: What is computer vision?
Lecture 3: Overview of image processing and analysis.
Chapter 2: Fundamentals of Image Processing
Lecture 1: Fundamentals of Image Processing
Lecture 2: Image Representation and Preprocessing
Lecture 3: Understanding Image Resolution
Lecture 4: Color Depth and Image Formats
Chapter 3: Introduction to Neural Networks
Lecture 1: General Idea about Neural Network
Lecture 2: Mounting google drive on google colab
Lecture 3: Exercise Training a Neural Network on colab
Lecture 4: CNN-Components
Chapter 4: Creating Your First Transfer learning model
Lecture 1: Image labeling with image data generator
Lecture 2: Creating Simple Model and train it first
Lecture 3: Testing your model performance
Lecture 4: Generating Confusion Matrix and saving the model
Lecture 5: Coding Exercise: Train CNN model with your own images
Lecture 6: Creating First Transfer-learning Program
Chapter 5: Introduction to State of Art models
Lecture 1: Module Intro
Lecture 2: RESNET Intro
Lecture 3: RESNET50
Lecture 4: Training Residual Neural Network
Lecture 5: Introduction to MobileNet
Lecture 6: Training MobileNet
Chapter 6: Model Explainability and feature-maps
Lecture 1: Introduction to Feature-maps
Lecture 2: Feature-map with shafley Exercise
Chapter 7: Introduction to object detection with Yolo
Lecture 1: Yolo Object detection Tutorial
Lecture 2: training object detection model with own data
Chapter 8: Object Detection with TensorFlow
Lecture 1: TensorFlow object detection API setup
Lecture 2: multiple object detection with TenserFlow
Lecture 3: Cards Project : On student demand
Chapter 9: Cv2 experiments
Lecture 1: Eyes-Face-detector-cv2-python
Lecture 2: Cv2-Live-video-Transformations
Lecture 3: Cv2-Contoor-detection
Chapter 10: Bonus Theory lectures and Exercises
Lecture 1: Recap to Logistic Regression and binary cross entropy loss
Lecture 2: Exercise: on Logistic Regression
Lecture 3: Recap Multiclass Logistic Regression : Cross Entropy loss | SoftMax
Lecture 4: Exercise : on Multiclass Logistics / SoftMax
Chapter 11: bonus
Lecture 1: Solving a neural network on paper
Lecture 2: CNN Components
Lecture 3: PCA – Principle component analysis
Instructors
-
Jay Bhatt
Data Scientist by Profession Instructor by Passion
Rating Distribution
- 1 stars: 10 votes
- 2 stars: 10 votes
- 3 stars: 26 votes
- 4 stars: 36 votes
- 5 stars: 967 votes
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