CVHCLGApr 1, 2019

HYPE: A Benchmark for Human eYe Perceptual Evaluation of Generative Models

arXiv:1904.01121v4133 citations
AI Analysis

This provides a validated, efficient benchmark for researchers and practitioners to directly assess generative model quality, addressing a key bottleneck in the field.

The authors tackled the lack of standardized human evaluation for generative models by introducing HYPE, a benchmark grounded in psychophysics that reliably measures perceptual realism, finding it can track model improvements and produce consistent rankings across datasets like CelebA and ImageNet.

Generative models often use human evaluations to measure the perceived quality of their outputs. Automated metrics are noisy indirect proxies, because they rely on heuristics or pretrained embeddings. However, up until now, direct human evaluation strategies have been ad-hoc, neither standardized nor validated. Our work establishes a gold standard human benchmark for generative realism. We construct Human eYe Perceptual Evaluation (HYPE) a human benchmark that is (1) grounded in psychophysics research in perception, (2) reliable across different sets of randomly sampled outputs from a model, (3) able to produce separable model performances, and (4) efficient in cost and time. We introduce two variants: one that measures visual perception under adaptive time constraints to determine the threshold at which a model's outputs appear real (e.g. 250ms), and the other a less expensive variant that measures human error rate on fake and real images sans time constraints. We test HYPE across six state-of-the-art generative adversarial networks and two sampling techniques on conditional and unconditional image generation using four datasets: CelebA, FFHQ, CIFAR-10, and ImageNet. We find that HYPE can track model improvements across training epochs, and we confirm via bootstrap sampling that HYPE rankings are consistent and replicable.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes