Abstract
Cracks considerably reduce the life span of pavement surfaces.
Currently, there is a need for the development of robust automated
distress evaluation systems that comprise a low-cost crack detection
method for performing fast and cost-effective roadway health monitoring
practices. Most of the current methods are costly and have
labor-intensive learning processes, so they are not suitable for small
local-level projects with limited resources or are only usable for
specific pavement types.
This paper proposes a new method that uses an improved version of the
weighted neighborhood pixels segmentation algorithm to detect cracks in
2-D pavement images. This method uses the Gaussian cumulative density
function as the adaptive threshold to overcome the drawback of fixed
thresholds in noisy environments. The proposed algorithm was tested on
300 images containing a wide range of noise representative of different
noise conditions. This method proved to be time and cost-efficient as it
took less than 3.15 seconds per 320 × 480 pixels image for a Xeon (R)
3.70 GHz CPU processor to determine the detection results. This makes
the model a perfect choice for county-level pavement maintenance
projects requiring cost-effective pavement crack detection systems. The
validation results were promising for the detection of low to
severe-level cracks (Accuracy = 97.3%, Precision = 79.21%, Recall=
89.18% and F1 score = 83.9%).