Abstract
Crack evaluation is essential for effective classification of pavement cracks. Digital images of pavement cracks have been analyzed using techniques such as fuzzy set theory and neural networks. Bidimensional empirical mode decomposition (BEMD), a new image analysis method recently developed, can potentially be used for pavement crack evaluation. BEMD is an extension of the empirical mode decomposition (EMD), which can decompose nonlinear and nonstationary signals into basis functions called intrinsic mode functions (IMFs). IMFs are monocomponent functions that have well-defined instantaneous frequencies. EMD is a sifting process that is nonparametric and data driven; it does not depend on an a priori basis set. It is able to remove noise from signals without complicated convolution processes. BEMD decomposes an image into two-dimensional IMFs. The present paper explores pavement crack detection using BEMD together with the Sobel edge detector. A number of images are filtered with BEMD to remove noise, and the residual image analyzed with the Sobel edge detector for crack detection. The results are compared with results from the Canny edge detector, which uses a Gaussian filter for image smoothing before performing edge detection. The objective is to qualitatively explore how well BEMD is able to smooth an image for more effective edge detection with the Sobel method.
Highlights
Pavement evaluation is an essential part of a good pavement management system for effective maintenance, rehabilitation, and reconstruction (MR&R) decision making
The present paper explores pavement crack detection using a new method called the bidimensional empirical mode decomposition (BEMD) together with a well-known edge detector, the Sobel edge detector
A total of 15 asphalt concrete and portland cement concrete (PCC) images are analyzed with the Canny edge detector to detect cracks; the same images are again analyzed with the Sobel edge detector, but this time BEMD is first used to smooth the image before detection
Summary
Pavement evaluation is an essential part of a good pavement management system for effective maintenance, rehabilitation, and reconstruction (MR&R) decision making. A more objective and less expensive method of distress evaluation is automated pavement distress evaluation, which system consists of automatically getting images of distresses and analyzing them using feature selection methods such as edge detection techniques for distress detection and identification. Various image-processing techniques such as fuzzy set theory [1], neural networks [2], and Markov methods [3] have been used to analyze cracking in road pavements. A number of images are smoothed with BEMD to remove noise, and the residual image analyzed with the Sobel edge detector for crack detection. The objective is to qualitatively determine how EURASIP Journal on Advances in Signal Processing well BEMD is able to smooth an image for more effective edge detection using the Sobel method
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