Researchers have developed a novel contrastive learning approach called FakeCLR to enhance the performance of Data-Efficient Generative Adversarial Networks (DE-GANs). This breakthrough aims to address the latent space discontinuity issue in DE-GANs, which leads to under-diverse sample generation. FakeCLR introduces three innovative techniques: Noise-Related Latent Augmentation, Diversity-Aware Queue, and Forgetting Factor of Queue. Experiments have shown that FakeCLR outperforms existing DE-GAN methods in few-shot and limited-data generation tasks.
Source: https://dev.to/sahil_gupta_b12279b31bb11/fake-clr-exploring-contrastive-learning-for-solving-latent-discontinuity-in-data-efficient-gans-mcf