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Published:2025/12/17 4:22:33

ポーズ自由自在!最先端の人物画像生成技術、爆誕☆

1. 超要約: 拡散モデル(画像の生成AI)を使って、ポーズも見た目も自由自在な人物画像を作るよ!

2. ギャル的キラキラポイント✨

  • ● 3Dデータとか使わずに、色んな角度の写真とポーズの情報、テキストで、めっちゃリアルな画像が作れちゃう💖
  • ● 服のシワとか細かい部分も、めっちゃキレイに再現できるから、まるで本物みたい✨
  • ● 自分のアバター(分身)を、色んな服着せて、色んなポーズで作りまくれるって、激アツじゃん?🔥

3. 詳細解説

続きは「らくらく論文」アプリで

PMMD: A pose-guided multi-view multi-modal diffusion for person generation

Ziyu Shang / Haoran Liu / Rongchao Zhang / Zhiqian Wei / Tongtong Feng

Generating consistent human images with controllable pose and appearance is essential for applications in virtual try on, image editing, and digital human creation. Current methods often suffer from occlusions, garment style drift, and pose misalignment. We propose Pose-guided Multi-view Multimodal Diffusion (PMMD), a diffusion framework that synthesizes photorealistic person images conditioned on multi-view references, pose maps, and text prompts. A multimodal encoder jointly models visual views, pose features, and semantic descriptions, which reduces cross modal discrepancy and improves identity fidelity. We further design a ResCVA module to enhance local detail while preserving global structure, and a cross modal fusion module that integrates image semantics with text throughout the denoising pipeline. Experiments on the DeepFashion MultiModal dataset show that PMMD outperforms representative baselines in consistency, detail preservation, and controllability. Project page and code are available at https://github.com/ZANMANGLOOPYE/PMMD.

cs / cs.CV / cs.AI