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JournalISSN: 2105-1232

Image Processing On Line 

Image Processing On Line
About: Image Processing On Line is an academic journal published by Image Processing On Line. The journal publishes majorly in the area(s): Computer science & Source code. It has an ISSN identifier of 2105-1232. It is also open access. Over the lifetime, 224 publications have been published receiving 7099 citations. The journal is also known as: IPOL.


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Journal ArticleDOI
TL;DR: LSD is a linear-time Line Segment Detector giving subpixel accurate results and uses an a contrario validation approach according to Desolneux, Moisan, and Morel’s theory.
Abstract: LSD is a linear-time Line Segment Detector giving subpixel accurate results. It is designed to work on any digital image without parameter tuning. It controls its own number of false detections: on average, one false alarm is allowed per image [1]. The method is based on Burns, Hanson, and Riseman’s method [2], and uses an a contrario validation approach according to Desolneux, Moisan, and Morel’s theory [3, 4]. The version described here includes some further

714 citations

Journal ArticleDOI
TL;DR: In any digital image, the measurement of the three observed color values at each pixel is subject to some perturbations, due to the random nature of the photon counting process in each sensor.
Abstract: In any digital image, the measurement of the three observed color values at each pixel is subject to some perturbations. These perturbations are due to the random nature of the photon counting process in each sensor. The noise can be amplified by digital corrections of the camera or by any image processing software. For example, tools removing blur from images or increasing the contrast enhance the noise.

657 citations

Journal ArticleDOI
TL;DR: The algorithm is an efficient numerical scheme, which solves a relaxed version of the problem by alternate minimization and allows discontinuities in the flow field, while being more robust to noise than the classical approach by Horn and Schunck.
Abstract: This article describes an implementation of the optical flow estimation method introduced by Zach, Pock and Bischof in 2007. This method is based on the minimization of a functional containing a data term using the L 1 norm and a regularization term using the total variation of the flow. The main feature of this formulation is that it allows discontinuities in the flow field, while being more robust to noise than the classical approach by Horn and Schunck. The algorithm is an efficient numerical scheme, which solves a relaxed version of the problem by alternate minimization. Source Code A C implementation of this algorithm is provided. The source code and an online demo are accessible at the web page of this article 1 .

385 citations

Journal ArticleDOI
TL;DR: AffineSIFT (ASIFT), simulates a set of sample views of the initial images, obtainable by varying the two camera axis orientation parameters, namely the latitude and the longitude angles, which are not treated by the SIFT method.
Abstract: If a physical object has a smooth or piecewise smooth boundary, its images obtained by cameras in varying positions undergo smooth apparent deformations. These deformations are locally well approximated by affine transforms of the image plane. In consequencethe solid object recognition problem has often been led back to the computation of affine invariant image local features. The similarity invariance (invariance to translation, rotation, and zoom) is dealt with rigorously by the SIFT method The method illustrated and demonstrated in this work, AffineSIFT (ASIFT), simulates a set of sample views of the initial images, obtainable by varying the two camera axis orientation parameters, namely the latitude and the longitude angles, which are not treated by the SIFT method. Then it applies the SIFT method itself to all images thus generated. Thus, ASIFT covers effectively all six parameters of the affine transform. Source Code The source code (ANSI C), its documentation, and the online demo are accessible at the IPOL web page of this article 1 .

329 citations

Journal ArticleDOI
TL;DR: An open-source implementation of BM3D is proposed, the description of the method is rewritten with a new notation, and the choice of all parameter methods is discussed to confirm their actual optimality.
Abstract: BM3D is a recent denoising method based on the fact that an image has a locally sparse representation in transform domain. This sparsity is enhanced by grouping similar 2D image patches into 3D groups. In this paper we propose an open-source implementation of the method. We discuss the choice of all parameter methods and confirm their actual optimality. The description of the method is rewritten with a new notation. We hope this new notation is more transparent than in the original paper. A final index gives nonetheless the correspondence between the new notation and the original notation.

321 citations

Performance
Metrics
No. of papers from the Journal in previous years
YearPapers
202314
202230
20215
202010
201921
201821