Adaptive image attribute editing model and editing method based on classification adversarial network

The invention provides an adaptive image attribute editing model based on a classification adversarial network, and the method achieves the accurate attribute conversion and high-quality image generation functions through the construction of an upcoiler residual network and the addition of an attrib...

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Hauptverfasser: XIANG JINHAI, LIU YING, NI FUCHUAN
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creator XIANG JINHAI
LIU YING
NI FUCHUAN
description The invention provides an adaptive image attribute editing model based on a classification adversarial network, and the method achieves the accurate attribute conversion and high-quality image generation functions through the construction of an upcoiler residual network and the addition of an attribute adversarial classifier Atta-cls in a discriminator. A decoder is constructed by adopting an upper convolution residual error network Trresnet, attribute features and content features are selectively extracted, the problem of limitation of jump connection in a deep encoder decoder structure is solved, the attribute features of a target image are enhanced, a more accurate and high-quality image is generated, and the performance of a model is improved. Under the influence of the idea of the generative adversarial network, an attribute adversarial classifier Atta-cls understands the deficiency of the converted image in an adversarial learning mode for the attribute difference, and further optimizes the converted im
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
HANDLING RECORD CARRIERS
PHYSICS
PRESENTATION OF DATA
RECOGNITION OF DATA
RECORD CARRIERS
title Adaptive image attribute editing model and editing method based on classification adversarial network
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