1 July 2007 Automated algorithm for the identification of artifacts in mottled and noisy images
Onome Augustine Ugbeme, Eli Saber, Wencheng Wu, Kartheek Chandu
Author Affiliations +
Abstract
We describe a method for automatically classifying image-quality defects on printed documents. The proposed approach accepts a scanned image where the defect has been localized a priori and performs several appropriate image processing steps to reveal the region of interest. A mask is then created from the exposed region to identify bright outliers. Morphological reconstruction techniques are then applied to emphasize relevant local attributes. The classification of the defects is accomplished via a customized tree classifier that utilizes size or shape attributes at corresponding nodes to yield appropriate binary decisions. Applications of this process include automated/assisted diagnosis and repair of printers/copiers in the field in a timely fashion. The proposed technique was tested on a database of 276 images of synthetic and real-life defects with 94.95% accuracy.
©(2007) Society of Photo-Optical Instrumentation Engineers (SPIE)
Onome Augustine Ugbeme, Eli Saber, Wencheng Wu, and Kartheek Chandu "Automated algorithm for the identification of artifacts in mottled and noisy images," Journal of Electronic Imaging 16(3), 033015 (1 July 2007). https://doi.org/10.1117/1.2761920
Published: 1 July 2007
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CITATIONS
Cited by 3 scholarly publications and 3 patents.
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KEYWORDS
Image processing

Image segmentation

Databases

Image classification

Signal to noise ratio

Halftones

Binary data

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