Litcius/Paper detail

Sampling Strategies for GAN Synthetic Data

Binod Bhattarai, Seungryul Baek, Rumeysa Bodur, Tae‐Kyun Kim

202038 citationsDOIOpen Access PDF

Abstract

Generative Adversarial Networks (GANs) have been used widely to generate large volumes of synthetic data. This data is being utilised for augmenting with real examples in order to train deep Convolutional Neural Networks (CNNs). Studies have shown that the generated examples lack sufficient realism to train deep CNNs and are poor in diversity. Unlike previous studies of randomly augmenting the synthetic data with real data, we present our simple, effective and easy to implement synthetic data sampling methods to train deep CNNs more efficiently and accurately. To this end, we propose to maximally utilise the parameters learned during training of the GAN itself. These include discriminator's realism confidence score and the confidence on the target label of the synthetic data. In addition to this, we explore reinforcement learning (RL) to automatically search a subset of meaningful synthetic examples from a large pool of GAN synthetic data. We evaluate our method on two challenging face attribute classification data sets viz. AffectNet and CelebA. Our extensive experiments clearly demonstrate the need of sampling synthetic data before augmentation, which also improves the performance of one of the state-of-the-art deep CNNs in vitro.

Topics & Concepts

DiscriminatorSynthetic dataComputer scienceArtificial intelligenceConvolutional neural networkDeep learningSampling (signal processing)Machine learningGenerative adversarial networkTraining setPattern recognition (psychology)Filter (signal processing)DetectorComputer visionTelecommunicationsGenerative Adversarial Networks and Image SynthesisFace recognition and analysisMusic and Audio Processing