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Study of Texture Indicators Applied to Pavement Wear Analysis Based on 3D Image Technology. | LitMetric

Pavement texture characteristics can reflect early performance decay, skid resistance, and other information. However, most statistical texture indicators cannot express this difference. This study adopts 3D image camera equipment to collect texture data from laboratory asphalt mixture specimens and actual pavement. A pre-processing method was carried out, including data standardisation, slope correction, missing value and outlier processing, and envelope processing. Then the texture data were calculated based on texture separation, texture power spectrum, grey level co-occurrence matrix, and fractal theory to acquire six leading texture indicators and eight extended indicators. The Pearson correlation coefficient was used to analyse the correlation of different texture indicators. The distinction vector based on the information entropy is calculated to analyse the distinction of the indicators. High correlations between (energy) and (entropy), and (Minkowski dimension) were found. The (contrast) has low correlations with (macro-texture power spectrum area), and . However, the differentiation of and is more prominent, and the differentiation of the is smaller. , , and indicators based on macro-texture and the corresponding original texture have strong linear correlations. However, the microtexture indicators are not linearly correlated with the corresponding original texture indicators. , (micro-texture power spectrum area) and exhibit high degrees of numerical concentration for the same road sections and may be more statistically helpful in distinguishing the characteristics of the pavement performance decay of the road sections.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9269722PMC
http://dx.doi.org/10.3390/s22134955DOI Listing

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