DocumentCode :
2021903
Title :
Iterated Document Content Classification
Author :
An, Chang ; Baird, Henry S. ; Xiu, Pingping
Author_Institution :
Lehigh Univ., Bethlehem
Volume :
1
fYear :
2007
fDate :
23-26 Sept. 2007
Firstpage :
252
Lastpage :
256
Abstract :
We report an improved methodology for training classifiers for document image content extraction, that is, the location and segmentation of regions containing handwriting, machine-printed text, photographs, blank space, etc. Our previous methods classified each individual pixel separately (rather than regions): this avoids the arbitrariness and restrictiveness that result from constraining region shapes (to, e.g., rectangles). However, this policy also allows content classes to vary frequently within small regions, often yielding areas where several content classes are mixed together. This does not reflect the way that real content is organized: typically almost all small local regions are of uniform class. This observation suggested a post-classification methodology which enforces local uniformity without imposing a restricted class of region shapes. We choose features extracted from small local regions (e.g. 4-5 pixels radius) with which we train classifiers that operate on the output of previous classifiers, guided by ground truth. This provides a sequence of post-classifiers, each trained separately on the results of the previous classifier. Experiments on a highly diverse test set of 83 document images show that this method reduces per-pixel classification errors by 23%, and it dramatically increases the occurrence of large contiguous regions of uniform class, thus providing highly usable near-solid ´masks´ with which to segment the images into distinct classes. It continues to allow a wide range of complex, non-rectilinear region shapes.
Keywords :
content-based retrieval; document image processing; image classification; image retrieval; document image content extraction; iterated document content classification; per-pixel classification errors; region shapes; Classification tree analysis; Data mining; Feature extraction; Image analysis; Image retrieval; Image segmentation; Information retrieval; Pixel; Shape; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Document Analysis and Recognition, 2007. ICDAR 2007. Ninth International Conference on
Conference_Location :
Parana
ISSN :
1520-5363
Print_ISBN :
978-0-7695-2822-9
Type :
conf
DOI :
10.1109/ICDAR.2007.4378714
Filename :
4378714
Link To Document :
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