Neural Style Transfer

Neural style transfer

Neural style transfer is a class of software algorithms that use deep neural networks to manipulate digital images or videos to adopt the visual style of another image. It is commonly used to create artificial artwork from photographs, and has been used by artists and designers around the globe. Popular mobile apps such as DeepArt and Prisma also use NST techniques.

1 courses cover this concept

CS 230 Deep Learning

Stanford University

Fall 2022

An in-depth course focused on building neural networks and leading successful machine learning projects. It covers Convolutional Networks, RNNs, LSTM, Adam, Dropout, BatchNorm, Xavier/He initialization, and more. Students are expected to have basic computer science skills, probability theory knowledge, and linear algebra familiarity.

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