Towards Fine-grained Human Pose Transfer with Detail Replenishing Network
Lingbo Yang, Pan Wang, Chang Liu, Zhanning Gao, Peiran Ren, Xinfeng, Zhang, Shanshe Wang, Siwei Ma, Xiansheng Hua, Wen Gao

TL;DR
This paper introduces a new fine-grained human pose transfer method that enhances detail replenishment and semantic fidelity, significantly improving visual realism and accuracy over existing approaches.
Contribution
It proposes a novel framework combining content synthesis and feature transfer, along with a Detail Replenishing Network and comprehensive evaluation protocols for FHPT.
Findings
12-14% improvement in top-10 retrieval recall
5% higher joint localization accuracy
Near 40% gain in face identity preservation
Abstract
Human pose transfer (HPT) is an emerging research topic with huge potential in fashion design, media production, online advertising and virtual reality. For these applications, the visual realism of fine-grained appearance details is crucial for production quality and user engagement. However, existing HPT methods often suffer from three fundamental issues: detail deficiency, content ambiguity and style inconsistency, which severely degrade the visual quality and realism of generated images. Aiming towards real-world applications, we develop a more challenging yet practical HPT setting, termed as Fine-grained Human Pose Transfer (FHPT), with a higher focus on semantic fidelity and detail replenishment. Concretely, we analyze the potential design flaws of existing methods via an illustrative example, and establish the core FHPT methodology by combing the idea of content synthesis and…
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