Data Augmentation and Text Recognition on Khmer Historical Manuscripts
Dona Valy, Michel Verleysen, Sophea Chhun
Abstract
Analysis and recognition of historical documents faces many challenges, one of which is the scarcity of the ground truth data needed for most machine learning techniques, deep learning in particular. In this paper, we present a novel approach which significantly augments the word image samples generated from an existing dataset of Khmer ancient palm leaf manuscripts. Instead of segmenting real Khmer words, we combine the annotated glyphs into groups called sub-syllables. A new text recognition method is also proposed to take into account the spatially complex structure of Khmer writing. The proposed method is composed of two main modules: a feature generator and a decoder. The generator utilizes convolutional blocks, inception blocks, and also a bi-directional LSTM to encode information extracted from the input image so that it can be decoded by the attention-based decoder to predict the final text transcription. Experiments are conducted on a new dataset of groups of sub-syllables constructed from annotated glyphs of the SleukRith Set.