Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Ma, Changxiao, Yuan, Chao, Shi, Xincheng, Ma, Yuzhuo, Zhang, Yongfei, Zhou, Longkun, Zhang, Yujia, Li, Shangze, Xu, Yifan
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2512.02554
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866918227989233664
author Ma, Changxiao
Yuan, Chao
Shi, Xincheng
Ma, Yuzhuo
Zhang, Yongfei
Zhou, Longkun
Zhang, Yujia
Li, Shangze
Xu, Yifan
author_facet Ma, Changxiao
Yuan, Chao
Shi, Xincheng
Ma, Yuzhuo
Zhang, Yongfei
Zhou, Longkun
Zhang, Yujia
Li, Shangze
Xu, Yifan
contents Person re-identification (ReID) suffers from a lack of large-scale high-quality training data due to challenges in data privacy and annotation costs. While previous approaches have explored pedestrian generation for data augmentation, they often fail to ensure identity consistency and suffer from insufficient controllability, thereby limiting their effectiveness in dataset augmentation. To address this, We introduce OmniPerson, the first unified identity-preserving pedestrian generation pipeline for visible/infrared image/video ReID tasks. Our contributions are threefold: 1) We proposed OmniPerson, a unified generation model, offering holistic and fine-grained control over all key pedestrian attributes. Supporting RGB/IR modality image/video generation with any number of reference images, two kinds of person poses, and text. Also including RGB-to-IR transfer and image super-resolution abilities.2) We designed Multi-Refer Fuser for robust identity preservation with any number of reference images as input, making OmniPerson could distill a unified identity from a set of multi-view reference images, ensuring our generated pedestrians achieve high-fidelity pedestrian generation.3) We introduce PersonSyn, the first large-scale dataset for multi-reference, controllable pedestrian generation, and present its automated curation pipeline which transforms public, ID-only ReID benchmarks into a richly annotated resource with the dense, multi-modal supervision required for this task. Experimental results demonstrate that OmniPerson achieves SoTA in pedestrian generation, excelling in both visual fidelity and identity consistency. Furthermore, augmenting existing datasets with our generated data consistently improves the performance of ReID models. We will open-source the full codebase, pretrained model, and the PersonSyn dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02554
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OmniPerson: Unified Identity-Preserving Pedestrian Generation
Ma, Changxiao
Yuan, Chao
Shi, Xincheng
Ma, Yuzhuo
Zhang, Yongfei
Zhou, Longkun
Zhang, Yujia
Li, Shangze
Xu, Yifan
Computer Vision and Pattern Recognition
Person re-identification (ReID) suffers from a lack of large-scale high-quality training data due to challenges in data privacy and annotation costs. While previous approaches have explored pedestrian generation for data augmentation, they often fail to ensure identity consistency and suffer from insufficient controllability, thereby limiting their effectiveness in dataset augmentation. To address this, We introduce OmniPerson, the first unified identity-preserving pedestrian generation pipeline for visible/infrared image/video ReID tasks. Our contributions are threefold: 1) We proposed OmniPerson, a unified generation model, offering holistic and fine-grained control over all key pedestrian attributes. Supporting RGB/IR modality image/video generation with any number of reference images, two kinds of person poses, and text. Also including RGB-to-IR transfer and image super-resolution abilities.2) We designed Multi-Refer Fuser for robust identity preservation with any number of reference images as input, making OmniPerson could distill a unified identity from a set of multi-view reference images, ensuring our generated pedestrians achieve high-fidelity pedestrian generation.3) We introduce PersonSyn, the first large-scale dataset for multi-reference, controllable pedestrian generation, and present its automated curation pipeline which transforms public, ID-only ReID benchmarks into a richly annotated resource with the dense, multi-modal supervision required for this task. Experimental results demonstrate that OmniPerson achieves SoTA in pedestrian generation, excelling in both visual fidelity and identity consistency. Furthermore, augmenting existing datasets with our generated data consistently improves the performance of ReID models. We will open-source the full codebase, pretrained model, and the PersonSyn dataset.
title OmniPerson: Unified Identity-Preserving Pedestrian Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.02554