Abstract

Different types of noise interference lead to low accuracy of image edge detection and severe loss of feature extraction details. A new noise-robust edge detection method is proposed, which uses a set of multiscale anisotropic morphological directional derivatives to extract the edge map of an input image. The main advantage of the method is that high edge resolution is maintained while reducing noise interference. The following five parts form the whole framework of this paper. First, multiscale anisotropic morphologic directional derivatives (MSAMDDs) are proposed to filter and obtain the local gray value of the image. Second, the edge strength map (ESM) is extracted by using spatial matching filters. In the third stage, multiscale edge direction maps (EDMs) based on the directional matched filters are fused, and the new EDM is constructed. Fourth, edge contours are obtained by embedding the ESM and the EDM into the standard route of Canny detection. Finally, the precision-recall curve and Pratt’s figure of merit (FOM) are used to evaluate the proposed method against eight state-of-the-art methods on three data sets. The experimental results show that the proposed method can perform better for noise-free (F-measure value of 0.776) and Gaussian noise (FOM value of 95.75%) and attains the best performance in impulse noise images (highest FOM value of 98.90%).

Highlights

  • The edge strength map (ESM), at the same time, is extracted by the space matching filter based on the multiscale anisotropic morphologic directional derivative (MSAMDD) matrices, embedding the ESM and edge direction maps (EDMs) into a routine Canny edge detection process

  • In this paper, a new fusion edge detection method is disclosed, which extracts the edge strength map (ESM) through the idea of a spatially responsive filter combined with anisotropic morphology

  • It relies on the expression of the anisotropic morphology of the directional matched filter to gain the maximum value from the argument group, and the edge direction map (EDM) is obtained

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Summary

INTRODUCTION

The handcrafted-based edge detection methods [8]–[11] process the pixel’s gray value through the first-order or second-order differential operation This type of method is noise-sensitive, for which prepositive smoothing is indispensable. X. Yu et al.: Multiscale Anisotropic Morphological Directional Derivatives for Noise-Robust Image Edge Detection anisotropic partial differential equation based on the fringe feature, which has a smoothing effect and edge sharpening, but it is not applicable for images with high noise density. Soria et al [22] proposed a network architecture model that generates thin edges This method can be used to better realize the edge extraction of images, but it is susceptible to different noise interferences.

ANISOTROPIC MORPHOLOGICAL DIRECTIONAL DERIVATIVES
LOCAL CONTRAST EQUALIZATION
EXPERIMENTAL CONFIGURATION
Findings
CONCLUSIONS
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