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Adapting a Generative Adversarial Network to New Data Sources for Image Classification

机译:使生成的对抗网络适应新的数据源以进行图像分类

摘要

Mechanisms are provided to implement a generative adversarial network (GAN) that is trained based on labeled image data, unlabeled image data, and generated image data generated by a generator of the GAN. The GAN comprises a loss function that comprises error components for each of the labeled image data, unlabeled image data, and generated image data which is used to train the GAN. A new data source for which the trained GAN is to be adapted is identified and the trained GAN is adapted for the new data source. Image data in the new data source is classified by applying the adapted GAN to the data in the new data source. Adapting the trained GAN includes obtaining a minimized set of labeled images and utilizing the minimized set of images to perform the adapting of the trained GAN.
机译:提供了用于实现基于标记图像数据,未标记图像数据以及由GAN的生成器生成的生成图像数据进行训练的生成对抗网络(GAN)的机制。 GAN包括损失函数,该损失函数包括针对每个标记图像数据,未标记图像数据以及用于训练GAN的生成图像数据的误差分量。识别训练的GAN要适应的新数据源,并且训练的GAN适应于新的数据源。通过将适应的GAN应用于新数据源中的数据,可以对新数据源中的图像数据进行分类。适应训练有素的GAN包括获得最小化的标记图像集,并利用该最小化的图像集来执行训练有素GAN的自适应。

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