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Published:2026/1/8 11:11:24

YOLOで古文書の筆跡鑑定!IT界隈もアゲ↑

  1. タイトル & 超要約 YOLOで古文書(こもんじょ)の筆跡鑑定(ひっせきかんてい)を爆速化!IT業界もアガる技術だよ☆

  2. ギャル的キラキラポイント

    • YOLOで文字を秒速(びょうそく)で特定!
    • 筆跡の特徴(とくちょう)をAI(エーアイ)が学習(がくしゅう)!
    • IT業界(ぎょうかい)で古文書が超活用(ちょうかつよう)!
  3. 詳細解説

    • 背景 古文書の筆跡鑑定って、時間もお金もかかる大変な作業だったの💦 でもAI(エーアイ)のおかげで、デジタル化が進んでるんだよね! IT業界でも、この技術にめっちゃ注目してるんだって!
    • 方法 YOLOっていうスゴイ技術を使って、古文書の文字を自動で探し出すよ🔍 見つけた文字から、筆跡(ひっせき)の特徴をAIが学習! だから、誰が書いた文字か、とかがめっちゃ簡単に分かるようになるの✨
    • 結果 YOLOのおかげで、今まで大変だった筆跡鑑定が、めちゃくちゃ速く、正確(せいかく)になったってこと💖 テンプレートマッチングっていう、ちょっと古いやり方よりも、断然(だんぜん)スゴイ結果が出たみたい!
    • 意義(ここがヤバい♡ポイント) IT業界では、この技術を使って、色んなサービスが作れるようになるんだって! 古文書の解析(かいせき)ツールとか、デジタルアーカイブサービスとか! 新しいビジネスも生まれちゃうかも🎵 歴史の研究(けんきゅう)とか文化財(ぶんかざい)の保護(ほご)にも貢献(こうけん)できるって、マジ神✨
  4. リアルでの使いみちアイデア💡

    • 古文書鑑定(こもんじょかんてい)プラットフォームで、スマホでパシャって鑑定できちゃう!
    • AI古文書検索エンジンで、知りたい情報が秒で見つかるようになるかも💖

続きは「らくらく論文」アプリで

Character Detection using YOLO for Writer Identification in multiple Medieval books

Alessandra Scotto di Freca / Tiziana D Alessandro / Francesco Fontanella / Filippo Sarria / Claudio De Stefano

Paleography is the study of ancient and historical handwriting, its key objectives include the dating of manuscripts and understanding the evolution of writing. Estimating when a document was written and tracing the development of scripts and writing styles can be aided by identifying the individual scribes who contributed to a medieval manuscript. Although digital technologies have made significant progress in this field, the general problem remains unsolved and continues to pose open challenges. ... We previously proposed an approach focused on identifying specific letters or abbreviations that characterize each writer. In that study, we considered the letter "a", as it was widely present on all pages of text and highly distinctive, according to the suggestions of expert paleographers. We used template matching techniques to detect the occurrences of the character "a" on each page and the convolutional neural network (CNN) to attribute each instance to the correct scribe. Moving from the interesting results achieved from this previous system and being aware of the limitations of the template matching technique, which requires an appropriate threshold to work, we decided to experiment in the same framework with the use of the YOLO object detection model to identify the scribe who contributed to the writing of different medieval books. We considered the fifth version of YOLO to implement the YOLO object detection model, which completely substituted the template matching and CNN used in the previous work. The experimental results demonstrate that YOLO effectively extracts a greater number of letters considered, leading to a more accurate second-stage classification. Furthermore, the YOLO confidence score provides a foundation for developing a system that applies a rejection threshold, enabling reliable writer identification even in unseen manuscripts.

cs / cs.CV