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In this era of advanced technological innovation, the intersection of deep learning and historical exploration has opened new avenues for unraveling the mysteries of the past. This study delves into the realm of Historic Inscription Images Detection employing a sophisticated Convolutional Recurrent Neural Network (CRNN) architecture. The proposed CRNN model seamlessly combines the prowess of Convolutional Neural Networks for feature extraction with Recurrent Neural Networks for sequence understanding, presenting a robust solution for identifying inscriptions within historical images. Through an extensive dataset collection and annotation process, encompassing diverse inscriptions, our model learns to decipher the intricacies of varied fonts, sizes, and orientations. The training process involves optimizing hyperparameters, fine-tuning architecture, and employing advanced techniques such as Connectionist Temporal Classification (CTC). The evaluation on a comprehensive test set demonstrates the model's remarkable accuracy of 98.11%, showcasing its ability to precisely detect and transcribe historic inscriptions. This high level of accuracy positions the model as a powerful tool for archaeologists, historians, and cultural enthusiasts. This research not only contributes to the field of computer vision but also facilitates a deeper connection with our historical heritage. The findings showcase the potential of deep learning in unlocking the secrets embedded in ancient inscriptions, paving the way for a richer understanding of our collective past.
Sarala et al. (Fri,) studied this question.
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