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Advanced Computer Vision with TensorFlow

Exploit the power of TensorFlow to perform image processing
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Content

Platform: Udemy
Video: 1h 58m
Language: English
Next start: On Demand

Table of contents

Description

TensorFlow has been gaining immense popularity over the past few months, due to its power and simplicity to use. This video will help you leverage the power of TensorFlow to perform advanced image processing. This course is a continuation of the Intro to Computer Vision course, building on top of the skills learned in that course. In this course, you’ll dive deeper as we cover more advanced computer vision concepts.
You will implement multiple state-of-the-art deep learning papers from scratch using the TensorFlow-Keras API. This course will teach you how to construct efficient CNN architectures with CNN Squeeze layers and delayed downsampling . You’ll learn about residual learning with skip connections and deep residual blocks, and see how to implement a deep residual neural network for image recognition. You’ll find out about Google’s Inception module and depthwise separable convolutions and understand how to construct an extreme Inception architecture with TF-Keras.
Finally, you’ll be introduced to the exciting new world of adversarial neural networks, which are responsible for recent breakthroughs in synthetic image generation and implement an auxiliary conditional GAN.
About the Author
Marvin Bertin has authored online Deep Learning courses. Marvin is the technical editor of a deep learning book and a conference speaker. He has a bachelor’s degree in Mechanical Engineering and Masters in Data Science.
Marvin has worked at a deep learning start-up developing neural network architectures. He is currently working in the biotech industry building NLP machine learning solutions. At the forefront of next generation DNA sequencing, he builds intelligent applications with Machine Learning and Deep Learning for precision medicine.

You will learn

✓ Build efficient architecture for convolutional neural networks
✓ Construct a residual learning neural network for image recognition
✓ Build depthwise separable convolutional neural networks
✓ Construct conditional Generative Adversarial Networks (GAN)
✓ Build an advanced and powerful multi-class image classifier
✓ Build functional model class and methods with TensorFlow-Keras’ Functional API
✓ Build a computational graph representation of a Neural Network from state-of-the-art deep learning papers
✓ Optimize a neural network with stochastic gradient descent and other advanced optimization methods

Requirements

• A basic knowledge of TensorFlow will help you understand the concepts better.

This course is for

• This course is for Python developers who are interested in learning how to perform image processing using TensorFlow.
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Platform: Udemy
Video: 1h 58m
Language: English
Next start: On Demand

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