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[Keyword] Gaussian filter(5hit)

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  • Fast Image Denoising Algorithm by Estimating Noise Parameters

    Tuan-Anh NGUYEN  Min-Cheol HONG  

     
    PAPER-Image

      Vol:
    E98-A No:12
      Page(s):
    2694-2700

    This paper introduces a fast image denoising algorithm by estimating noise parameters without prior information about the noise. Under the assumption that additive noise has a Gaussian distribution, the noise parameters were estimated from an observed degraded image, and were used to define the constraints of a noise detection process that was coupled with a Markov random field (MRF). In addition, an adaptive modified weighted Gaussian filter with variable window sizes defined by the constraints on noise detection was used to control the degree of smoothness of the reconstructed image. Experimental results demonstrate the capability of the proposed algorithm.

  • A Modified Gaussian Filter for the Arbitrary Scale LP Enlargement Method

    Shuai YUAN  Akira TAGUCHI  Masahide ABE  Masayuki KAWAMATA  

     
    LETTER-Image

      Vol:
    E90-A No:5
      Page(s):
    1115-1120

    In this paper, we use a modified Gaussian filter to improve enlargement accuracy of the arbitrary scale LP enlargement method, which is based on the Laplacian pyramid representation (so called "LP method"). The parameters of the proposed algorithm are extracted through a theoretical analysis and an experimental estimation. Experimental results show that the proposed modified Gaussian filter is effective for the arbitrary scale LP enlargement method.

  • New Adaptive Vector Filter Based on Noise Estimate

    Mei YU  Gang Yi JIANG  Dong Mun HA  Tae Young CHOI  Yong Deak KIM  

     
    PAPER

      Vol:
    E82-A No:6
      Page(s):
    911-919

    In this paper, quasi-Gaussian filter, quasi-median filter and locally adaptive filters are introduced. A new adaptive vector filter based on noise estimate is proposed to suppress Gaussian and/or impulse noise. To estimate the type and degree of noise corruption, a noise detector and an edge detector are introduced, and two key parameters are obtained to characterize noise in color image. After globally estimating the type and degree of noise corruption, different locally adaptive filters are properly chosen for image enhancement. All noisy images, used to test filters in experiments, are generated by PaintShopPro and Photoshop software. Experimental results show that the new adaptive filter performs better in suppressing noise and preserving details than the filter in Photoshop software and other filters.

  • A Probabilistic Approach for Automatic Parameters Selection for the Hybrid Edge Detector

    Mohammed BENNAMOUN  Boualem BOASHASH  

     
    PAPER

      Vol:
    E80-A No:8
      Page(s):
    1423-1429

    We previously proposed a robust hybrid edge detector which relaxes the trade off between robustess against noise and accurate localization of the edges. This hybrid detector separates the tasks of localization and noise suppresion between two sub-detectors. In this paper, we present an extension to this hybrid detector to determine its optimal parameters, independently of the scene. This extension defines a probabilistic cost function using for criteria the probability of missing an edge buried in noise and the probability of detecting false edges. The optimization of this cost function allows the automatic selection of the parameters of the hybrid edge detector given the height of the minimum edge to be detected and the variance of the noise, σ2n. The results were applied to the 2D case and the performance of the adaptive hybrid detector was compared to other detectors.

  • A Contour-Based Part Segmentation Algorithm

    Mohammed BENNAMOUN  Boualem BOASHASH  

     
    PAPER-Image Theory

      Vol:
    E80-A No:8
      Page(s):
    1516-1521

    Within the framework of a previously proposed vision system, a new part-segmentation algorithm, that breaks an object defined by its contour into its constituent parts, is presented. The contour is assumed to be obtained using an edge detector. This decomposition is achieved in two stages. The first stage is a preprocessing step which consists of extracting the convex dominant points (CDPs) of the contour. For this aim, we present a new technique which relaxes the compromise that exists in most classical methods for the selection of the width of the Gaussian filter. In the subsequent stage, the extracted CDPs are used to break the object into convex parts. This is performed as follows: among all the points of the contour only the CDPs are moved along their normals nutil they touch another moving CDP or a point on the contour. The results show that this part-segmentation algorithm is invariant to transformations such as rotation, scaling and shift in position of the object, which is very important for object recognition. The algorithm has been tested on many object contours, with and without noise and the advantages of the algorithm are listed in this paper. Our results are visually similar to a human intuitive decomposition of objects into their parts.