Lecture 13: Generative Models
32x32 CIFAR-10 32x32 ImageNet. Fei-Fei Li & Justin Johnson & Serena Yeung Lecture 13 - 33 May 18, 2017 PixelRNN and PixelCNN Improving PixelCNN performance - Gated convolutional layers - Short-cut connections - Discretized logistic loss - Multi-scale - Training tricks
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