Visual Script and Language Identification
This work addresses script and language identification problems for video-text and handwritten text analysis, representing an incremental improvement with specific gains.
The paper tackles script and language identification in video-text and handwritten text by using hand-crafted texture features and an artificial neural network, achieving near state-of-the-art performance for script identification and state-of-the-art for visual language identification.
In this paper we introduce a script identification method based on hand-crafted texture features and an artificial neural network. The proposed pipeline achieves near state-of-the-art performance for script identification of video-text and state-of-the-art performance on visual language identification of handwritten text. More than using the deep network as a classifier, the use of its intermediary activations as a learned metric demonstrates remarkable results and allows the use of discriminative models on unknown classes. Comparative experiments in video-text and text in the wild datasets provide insights on the internals of the proposed deep network.