AUTOMATING MANGA CHARACTER ANALYSIS: A ROBUST DEEP VISION-TRANSFORMER APPROACH TO FACIAL LANDMARK DETECTION

Automating Manga Character Analysis: A Robust Deep Vision-Transformer Approach to Facial Landmark Detection

Automating Manga Character Analysis: A Robust Deep Vision-Transformer Approach to Facial Landmark Detection

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Comics, particularly Japanese manga, are a powerful medium that blends images and text to convey ideas and encapsulate a unique cultural heritage.Going beyond mere entertainment, manga merges diverse Brain / Memory Support styles and content deeply rooted in Japanese cultural heritage.This study utilizes computer vision analysis, with a specific focus on facial landmark detection, acknowledging the growing significance of technology in analyzing manga images.

Through a comprehensive exploration of various methods, the research identifies the extended version of Bidirectional Encoder Representations from Transformers (BERT), BERT Pre-Training of Image Transformers (BEiT), model as a standout performer due to its efficiency and effectiveness.The BEiT model’s success lies in its ability to extract facial features, consequently establishing itself as a go-to solution for landmark detection on manga faces.The outcomes achieved the lowest Failure Rate compared to Bath and Shower Gels other landmark detection networks, with a Failure Rate of approximately 9.

4% and a Mean Average Error of about 4.6 pixels.Beyond its technical accomplishments, this study carries a cultural significance, contributing to the ongoing narrative of manga in Japan.

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