LGSQE: LIGHTWEIGHT GENERATED SAMPLE QUALITY EVALUATION
Ganning Zhao, Vasileios Magoulianitis, Suya You, C.-C. Jay Kuo
-
SPS
IEEE Members: $11.00
Non-members: $15.00
Despite prolific work on evaluating generative models, little research has been done on the quality evaluation of an individual generated sample. To address this problem, a lightweight generated sample quality evaluation (LGSQE) method is proposed in this work. In the training stage of LGSQE, a binary classifier is trained on real and synthetic samples, where real and synthetic data are labeled by 0 and 1, respectively. In the inference stage, the classifier assigns soft labels (ranging from 0 to 1) to each generated sample. The value of the soft label indicates the quality level; namely, the quality is better if its soft label is closer to 0. LGSQE can serve as a post-processing module for quality control. Furthermore, LGSQE can be used to evaluate the performance of generative models, such as accuracy, AUC, precision, and recall, by aggregating sample-level quality. Experiments are conducted on several datasets and generative models to demonstrate that LGSQE can preserve the same performance rank order as that predicted by the Fr ́echet Inception Distance (FID) but with significantly lower complexity.