Quality Evaluation of GANs Using Cross Local Intrinsic Dimensionality
This addresses the challenge of measuring GAN performance for researchers and practitioners, though it is incremental as it builds on existing evaluation methods.
The paper tackled the problem of evaluating GAN quality by proposing CrossLID, a metric based on local intrinsic dimensionality, which showed strong correlation with training progress and sensitivity to mode collapse in experiments on 4 benchmark image datasets.
Generative Adversarial Networks (GANs) are an elegant mechanism for data generation. However, a key challenge when using GANs is how to best measure their ability to generate realistic data. In this paper, we demonstrate that an intrinsic dimensional characterization of the data space learned by a GAN model leads to an effective evaluation metric for GAN quality. In particular, we propose a new evaluation measure, CrossLID, that assesses the local intrinsic dimensionality (LID) of real-world data with respect to neighborhoods found in GAN-generated samples. Intuitively, CrossLID measures the degree to which manifolds of two data distributions coincide with each other. In experiments on 4 benchmark image datasets, we compare our proposed measure to several state-of-the-art evaluation metrics. Our experiments show that CrossLID is strongly correlated with the progress of GAN training, is sensitive to mode collapse, is robust to small-scale noise and image transformations, and robust to sample size. Furthermore, we show how CrossLID can be used within the GAN training process to improve generation quality.