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Roughness Analysis of Sea Surface From Visible Images by Texture

Hailang Pan, Peilin Gao, Huicheng Zhou, Ruixue Ma, Jingsong Yang, Xin Zhang

2020IEEE Access23 citationsDOIOpen Access PDF

Abstract

This paper presents a roughness analysis of sea surface from visible images by feature measurements of texture for the first time. The algorithms presented in this paper include six texture feature measurements of sea surface use gray level co-occurrence matrix, gray level-gradient co-occurrence matrix, Tamura texture feature, autocorrelation function, edge frequency and fractional Brownian motion autocorrelation. The empirical relationship between wind speeds (or sea surface roughness) and image texture roughness are estimated based on the extracted data. Our experiments have demonstrated that our texture methods and empirical relation between wind speeds and image texture roughness can potentially be used to analyze sea surface roughness from visible images.

Topics & Concepts

AutocorrelationSurface roughnessSurface finishImage textureTexture (cosmology)Computer visionArtificial intelligenceFeature (linguistics)Fractional Brownian motionGeologyComputer scienceMathematicsImage processingMaterials scienceBrownian motionImage (mathematics)StatisticsPhilosophyLinguisticsComposite materialOcean Waves and Remote SensingCoastal and Marine DynamicsAeolian processes and effects
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