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Application of Image Filtering Technique Based on Bounded Mean Oscillation Model in Studying on Rice Grain Morphology

机译:基于界定平均振荡模型的图像滤波技术在水稻晶粒形态学研究中的应用

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摘要

This study constructed a bounded mean oscillation (BMO) filter via the BMO algorithm and anisotropic nonlinear partial differential equation (PDE) to both denoise and enhance the digital image of rice grains. The Perona-Malik PDE model was used as control filter. Based on the quantitative evaluation of the morphological characteristics of rice grains, as obtained from preprocessed images, the BMO filtering effect is discussed. The results showed that grain length, grain width, and the length-width ratio obtained from BMO filter processed images did not significantly differ from manual measurements (p0.05). Moreover, a strong positive correlation was found between the average grain area and the thousand grain weight (R2=0.942, p0.001). The BMO filter was less disturbed by noise and the structure of the utilized algorithm was simpler compared with the Perona-Malik filter. The developed BMO filter was also superior to the Perona-Malik filter in retaining fine edge features of digital images. Moreover, its filtering effect remained stable for grain images of different rice varieties.
机译:该研究通过BMO算法和各向异性非线性部分微分方程(PDE)构成有界性平均振荡(BMO)滤波器到Denoise和增强米粒的数字图像。 PERONA-MALIK PDE模型用作控制滤波器。基于从预处理图像获得的水稻粒的形态学特性的定量评价,讨论了BMO滤波效果。结果表明,从BMO滤波器处理的图像获得的粒度长,粒度和长度宽度与手动测量没有显着不同(P> 0.05)。此外,平均晶粒面积和千粒重(R2 = 0.942,P <0.001)之间发现了强的正相关性。 BMO过滤器的噪声较小,并且利用算法的结构与Perona-Malik滤波器相比更简单。开发的BMO过滤器还优于Perona-Malik滤波器,以保持数字图像的细边特征。此外,其过滤效果对不同水稻品种的晶粒图像保持稳定。

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