Image Generators with Conditionally-Independent Pixel Synthesis

Existing image generator networks rely heavily on spatial convolutions and, optionally, self-attention blocks in order to gradually synthesize images in a coarse-to-fine manner. Here, we present a new architecture for image generators, where the color value at each pixel is computed independently gi...

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Hauptverfasser: Anokhin, Ivan, Demochkin, Kirill, Khakhulin, Taras, Sterkin, Gleb, Lempitsky, Victor, Korzhenkov, Denis
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creator Anokhin, Ivan
Demochkin, Kirill
Khakhulin, Taras
Sterkin, Gleb
Lempitsky, Victor
Korzhenkov, Denis
description Existing image generator networks rely heavily on spatial convolutions and, optionally, self-attention blocks in order to gradually synthesize images in a coarse-to-fine manner. Here, we present a new architecture for image generators, where the color value at each pixel is computed independently given the value of a random latent vector and the coordinate of that pixel. No spatial convolutions or similar operations that propagate information across pixels are involved during the synthesis. We analyze the modeling capabilities of such generators when trained in an adversarial fashion, and observe the new generators to achieve similar generation quality to state-of-the-art convolutional generators. We also investigate several interesting properties unique to the new architecture.
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subjects Computer Science - Artificial Intelligence
Computer Science - Computer Vision and Pattern Recognition
Computer Science - Learning
title Image Generators with Conditionally-Independent Pixel Synthesis
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