Written text stands as a cornerstone of communication in our daily lives. However, it is not uncommon for letters to be marred by obscurities, blurriness, erasures, or obstructions, which can lead to misinterpretation and convey unintended meanings. In this study, we present a comprehensive solution to rectify this challenge, comprising three pivotal phases. In the initial phase, we employ an advanced Deep Learning-based text detection and recognition method, specifically utilizing the Text-Block technique to pinpoint textual blocks. In the subsequent phase, we employ a robust combination of database and ontology to reconstruct unclear words. The final phase involves transforming the recovered word into a vivid 3D object through Augmented Reality, leveraging the Vuforia engine. This visualization technique aids visually impaired individuals with inaccurate word comprehension. To validate our approach, we rigorously compared our text detection and recognition methods against prevailing state-of-the-art techniques, achieving unmatched precision. Furthermore, we administered a comprehensive questionnaire to a cohort of visually impaired participants, evaluating the solution against key metrics such as user experience, satisfaction, efficiency, and effectiveness. The results from this survey unequivocally demonstrate the superior quality and efficacy of our proposed methodology.