Image Segmentation for a Hierarchical and Scalable Model
 
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Publication date: 2019-11-23
 
Eurasian J Anal Chem 2017;12(4):196–202
 
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ABSTRACT
A novel color segmentation approach robust is against digitization noise and adapted to contemporary document images. This is system scalable, hierarchical, versatile and completely automated, i.e user independent. It proposes an adaptive binarization/quantization without any penalizing information loss. This model may be used for many purposes. For instance, we rely on it to carry out the first steps leading to advertisement recognition in document images. Furthermore, the color segmentation output is used to localize text areas and enhance optical character recognition (OCR) performances. We held tests on a variety of magazine images to point up our contribution to the well-known OCR product Abby Finer-Reader. We also get promising results with our ad detection system on a large set of complex layout testing images.
eISSN:1306-3057