Deep Learning: Convolutional Neural Networks in Python
MP4 | Video: 1280x720 | Duration: 7.5 Hours | 900 MB | Subtitles: Spanich
Author: Lazy Programmer Inc. | Language: English,Spahish | Skill level: Intermediate
MP4 | Video: 1280x720 | Duration: 7.5 Hours | 900 MB | Subtitles: Spanich
Author: Lazy Programmer Inc. | Language: English,Spahish | Skill level: Intermediate
This is the 3rd part in my Data Science and Machine Learning series on Deep Learning in Python. At this point, you already know a lot about neural networks and deep learning, including not just the basics like backpropagation, but how to improve it using modern techniques like momentum and adaptive learning rates. You’ve already written deep neural networks in Theano and TensorFlow, and you know how to run code using the GPU.This course is all about how to use deep learning for computer vision using convolutional neural networks. These are the state of the art when it comes to image classification and they beat vanilla deep networks at tasks like MNIST.
In this course we are going to up the ante and look at the StreetView House Number (SVHN) dataset – which uses larger color images at various angles – so things are going to get tougher both computationally and in terms of the difficulty of the classification task. But we will show that convolutional neural networks, or CNNs, are capable of handling the challenge!
Because convolution is such a central part of this type of neural network, we are going to go in-depth on this topic. It has more applications than you might imagine, such as modeling artificial organs like the pancreas and the heart. I’m going to show you how to build convolutional filters that can be applied to audio, like the echo effect, and I’m going to show you how to build filters for image effects, like the Gaussian blur and edge detection.
Requirements
Install Python, Numpy, Scipy, Matplotlib, Scikit Learn, Theano, and TensorFlow
Learn about backpropagation from Deep Learning in Python part 1
Learn about Theano and TensorFlow implementations of Neural Networks from Deep Learning part 2