Is this Generated Person Existed in Real-world? Fine-grained Detecting and Calibrating Abnormal Human-body
About
Recent improvements in visual synthesis have significantly enhanced the depiction of generated human photos, which are pivotal due to their wide applicability and demand. Nonetheless, the existing text-to-image or text-to-video models often generate low-quality human photos that might differ considerably from real-world body structures, referred to as "abnormal human bodies". Such abnormalities, typically deemed unacceptable, pose considerable challenges in the detection and repair of them within human photos. These challenges require precise abnormality recognition capabilities, which entail pinpointing both the location and the abnormality type. Intuitively, Visual Language Models (VLMs) that have obtained remarkable performance on various visual tasks are quite suitable for this task. However, their performance on abnormality detection in human photos is quite poor. Hence, it is quite important to highlight this task for the research community. In this paper, we first introduce a simple yet challenging task, i.e., \textbf{F}ine-grained \textbf{H}uman-body \textbf{A}bnormality \textbf{D}etection \textbf{(FHAD)}, and construct two high-quality datasets for evaluation. Then, we propose a meticulous framework, named HumanCalibrator, which identifies and repairs abnormalities in human body structures while preserving the other content. Experiments indicate that our HumanCalibrator achieves high accuracy in abnormality detection and accomplishes an increase in visual comparisons while preserving the other visual content.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Human artifact detection | ArtifactLens benchmark suite (AIGC-HA, HAD, AbHuman, MagicBench, SynArtifact) cross-dataset 1.0 (train test) | Overall F162 | 14 | |
| Body Part Abnormality Detection | AIGC Human-Aware Absent 1K (test) | Hand Accuracy79.75 | 5 | |
| Body Part Abnormality Detection | AIGC Human-Aware Redundant 1K (test) | Hand Accuracy65.26 | 5 | |
| Human-body abnormality repair | AIGC dataset (test) | Human Concept Score22.77 | 2 | |
| Visual consistency | AIGC dataset | FID16.55 | 2 |