Cursive Scene Text Analysis by Deep Convolutional Linear Pyramids

September 27, 2018 ยท Declared Dead ยท ๐Ÿ› International Conference on Neural Information Processing

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Authors Saad Bin Ahmed, Saeeda Naz, Muhammad Imran Razzak, Rubiyah Yusof arXiv ID 1809.10792 Category cs.CV: Computer Vision Citations 4 Venue International Conference on Neural Information Processing Last Checked 3 months ago
Abstract
The camera captured images have various aspects to investigate. Generally, the emphasis of research depends on the interesting regions. Sometimes the focus could be on color segmentation, object detection or scene text analysis. The image analysis, visibility and layout analysis are the tasks easier for humans as suggested by behavioral trait of humans, but in contrast when these same tasks are supposed to perform by machines then it seems to be challenging. The learning machines always learn from the properties associated to provided samples. The numerous approaches are designed in recent years for scene text extraction and recognition and the efforts are underway to improve the accuracy. The convolutional approach provided reasonable results on non-cursive text analysis appeared in natural images. The work presented in this manuscript exploited the strength of linear pyramids by considering each pyramid as a feature of the provided sample. Each pyramid image process through various empirically selected kernels. The performance was investigated by considering Arabic text on each image pyramid of EASTR-42k dataset. The error rate of 0.17% was reported on Arabic scene text recognition.
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