Abstract
BackgroundSurface roughness has a significant effect on leaf wettability. Consequently, it influences the efficiency and effectiveness of pesticide application. Therefore, roughness measurement of leaf surface offers support to the relevant research efforts. To characterize surface roughness, the prevailing methods have drawn support from large equipment that often come with high costs and poor portability, which is not suitable for field measurement. Additionally, such equipment may even suffer from inherent drawbacks like the absence of relationship between pixel intensity and corresponding height for scanning electron microscope (SEM).ResultsAn imaging system with variable object distance was created to capture images of plant leaves, and a method based on shape from focus (SFF) was proposed. The given space-variantly blurred images were processed with the proposed algorithm to obtain the surface roughness of plant leaves. The algorithm improves the current SFF method through image alignment, focus distortion correction, and the introduction of NaN values that allows it to be applied for precise 3d-reconstruction and small-scale surface roughness measurement.ConclusionCompared with methods that rely on optical three-dimensional interference microscope, the method proposed in this paper preserves the overall topography of leaf surface, and achieves superior cost performance at the same time. It is clear from experiments on standard gauge blocks that the RMSE of step was approximately 4.44 µm. Furthermore, according to the Friedman/Nemenyi test, the focus measure operator SML was expected to demonstrate the best performance.
Highlights
Surface roughness has a significant effect on leaf wettability
The height of surface gets larger as the color shifts from cool tone to warm tone, and the Sum‐modified Laplacian (SML) operator was chosen for focus measure in shape from focus (SFF) renderings
The performance of the 4 focus measure operators were quantified by Root Mean Square Error (RMSE) and Pearson correlation on the step between the two precise gauge blocks
Summary
Surface roughness has a significant effect on leaf wettability. it influences the efficiency and effectiveness of pesticide application. The prevailing methods have drawn support from large equipment that often come with high costs and poor portability, which is not suitable for field measurement. Such equipment may even suffer from inherent drawbacks like the absence of relationship between pixel intensity and corresponding height for scanning electron microscope (SEM). Speckles formed by white light interferer compose optical sections, and the leaf surface can be reconstructed from these sections This procedure is often automated and faster, but it may omit the most valuable information concerning the spatial organization of a surface [11]
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