ギャル心くすぐるポイント! ● LDM (潜在拡散モデル) っていう画像生成AIの、困った問題を解決したんだって!💖 ● MCLCっていう新しい魔法🧙♀️で、画像がめっちゃ綺麗になるらしい! ● 画像修復とか、医療とか、色んな分野で役立つって、すごくない!?🤩
詳細解説
リアルでの使いみちアイデア 💡 ネットショッピングの商品画像を、もっと可愛く加工できる!盛れる~🤳 💡 昔の写真とか動画を、AIで蘇らせて、思い出を鮮やかに!エモい🥺
もっと深掘りしたい子へ🔍
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With recent advances in generative models, diffusion models have emerged as powerful priors for solving inverse problems in each domain. Since Latent Diffusion Models (LDMs) provide generic priors, several studies have explored their potential as domain-agnostic zero-shot inverse solvers. Despite these efforts, existing latent diffusion inverse solvers suffer from their instability, exhibiting undesirable artifacts and degraded quality. In this work, we first identify the instability as a discrepancy between the solver's and true reverse diffusion dynamics, and show that reducing this gap stabilizes the solver. Building on this, we introduce Measurement-Consistent Langevin Corrector (MCLC), a theoretically grounded plug-and-play correction module that remedies the LDM-based inverse solvers through measurement-consistent Langevin updates. Compared to prior approaches that rely on linear manifold assumptions, which often do not hold in latent space, MCLC operates without this assumption, leading to more stable and reliable behavior. We experimentally demonstrate the effectiveness of MCLC and its compatibility with existing solvers across diverse image restoration tasks. Additionally, we analyze blob artifacts and offer insights into their underlying causes. We highlight that MCLC is a key step toward more robust zero-shot inverse problem solvers.