2011
Other  Open Access

Nonlinear model identification and seethrough cancellation from recto-verso data

Salerno Emanuele, Martinelli Francesca, Tonazzini Anna

Document image processing  Seethrough cancellation  Nonlinear image models 

The problem of seethrough cancellation in digital images of double-sided documents is addressed. Previous approaches to solve this problem from recto-verso pairs of grayscale data images show a number of drawbacks, ranging from errors due to an inadequate data model to excessive computational complexities. While satisfying the need to assume a nonlinear convolutional mixture model and to estimate its parameters along with the recto and verso patterns, we propose a simple and fast strategy to estimate the trasparency of the paper and the seethrough convolutional kernel, thus enabling an efficient correction of this distortion. Compared to other separation strategies, our choice is slightly more cumbersome since average background values must be estimated and a pure showthrough area must be isolated manually by the operator. Although the procedure cannot be fully automatic, however, it outperforms other restoration strategies, especially if based on linear instantaneous models.



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BibTeX entry
@misc{oai:it.cnr:prodotti:206989,
	title = {Nonlinear model identification and seethrough cancellation from recto-verso data},
	author = {Salerno Emanuele and Martinelli Francesca and Tonazzini Anna},
	year = {2011}
}