Self-Supervised Feature Learning by Learning to Spot Artifacts

S. Jenni, P. Favaro
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引用次数: 115

Abstract

We introduce a novel self-supervised learning method based on adversarial training. Our objective is to train a discriminator network to distinguish real images from images with synthetic artifacts, and then to extract features from its intermediate layers that can be transferred to other data domains and tasks. To generate images with artifacts, we pre-train a high-capacity autoencoder and then we use a damage and repair strategy: First, we freeze the autoencoder and damage the output of the encoder by randomly dropping its entries. Second, we augment the decoder with a repair network, and train it in an adversarial manner against the discriminator. The repair network helps generate more realistic images by inpainting the dropped feature entries. To make the discriminator focus on the artifacts, we also make it predict what entries in the feature were dropped. We demonstrate experimentally that features learned by creating and spotting artifacts achieve state of the art performance in several benchmarks.
通过学习发现人工制品的自监督特征学习
提出了一种基于对抗性训练的自监督学习方法。我们的目标是训练一个判别器网络来区分真实图像和具有合成伪像的图像,然后从其中间层中提取可以转移到其他数据域和任务的特征。为了生成带有伪影的图像,我们预训练了一个高容量的自编码器,然后我们使用损坏和修复策略:首先,我们冻结自编码器,并通过随机删除其条目来损坏编码器的输出。其次,我们用修复网络增强解码器,并以对抗鉴别器的方式训练解码器。修复网络通过重新绘制丢失的特征项来帮助生成更逼真的图像。为了使鉴别器专注于工件,我们还使其预测特征中的哪些条目被删除。我们通过实验证明,通过创建和发现工件来学习的特征在几个基准中达到了最先进的性能状态。
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