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Product typeBook
Published inDec 2020
Reading LevelIntermediate
PublisherPackt
ISBN-139781838826789
Edition1st Edition
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Soon Yau Cheong
Soon Yau Cheong
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Soon Yau Cheong

Soon Yau Cheong is an AI consultant and the founder of Sooner.ai Ltd. With a history of being associated with industry giants such as NVIDIA and Qualcomm, he provides consultation in the various domains of AI, such as deep learning, computer vision, natural language processing, and big data analytics. He was awarded a full scholarship to study for his PhD at the University of Bristol while working as a teaching assistant. He is also a mentor for AI courses with Udacity.
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Understanding the fundamentals of GANs

The purpose of generative models is to learn a data distribution and to sample from it to generate new data. With the models that we looked at in the previous chapters, namely PixelCNN and VAE, their generative part gets to look at the image distribution during training. Thus, they are known as explicit density models. In contrast, the generative part in a GAN never gets to look at the images directly; rather, it is only told whether the generated images look real or fake. For this reason, GANs are categorized as implicit density models.

We could use an analogy to compare the explicit and implicit models. Let's say an art student, G, was given a collection of Picasso paintings and asked to learn how to draw fake Picasso paintings. The student can look at the collections as they learn to paint, so that is an explicit model. In a different scenario, we ask student G to forge Picasso paintings, but we don't show them any paintings...

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Hands-On Image Generation with TensorFlow
Published in: Dec 2020Publisher: PacktISBN-13: 9781838826789

Author (1)

author image
Soon Yau Cheong

Soon Yau Cheong is an AI consultant and the founder of Sooner.ai Ltd. With a history of being associated with industry giants such as NVIDIA and Qualcomm, he provides consultation in the various domains of AI, such as deep learning, computer vision, natural language processing, and big data analytics. He was awarded a full scholarship to study for his PhD at the University of Bristol while working as a teaching assistant. He is also a mentor for AI courses with Udacity.
Read more about Soon Yau Cheong