Lettuce Canopy Area Measurement Using Static Supervised Neural Networks Based on Numerical Image Textural Feature Analysis of Haralick and Gray Level Co-Occurrence Matrixs

Ronnie S. Concepcion, Sandy C. Lauguico, Jonnel D. Alejandrino, E. Dadios, E. Sybingco
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引用次数: 16

Abstract

Leaf canopy area is a fundamental crop growth characteristic that encompasses the spatial area covered by plants. However, non-destructive and automatic computation of lettuce canopy area is still open research. This study presents a vision-based system with color space thresholding and machine learning models in measuring the photosynthetic productivity of aquaponic lettuce based on canopy area derived from the numerical image textural features of Haralick and gray level co-occurrence matrix (GLCM). Lettuce images on different growth stages with varying photosynthetic pigment intensities and geometrical structures are extracted with contrast, correlation, energy, homogeneity, entropy, variance, and information measure of correlations 1 and 2 features. For multi-band color space thresholding, CIELab bested RGB, HSV, and YCbCr colour spaces in segmenting the lettuce plant with sensitivity and specificity measures of 94.77% and 97.16% respectively. For measuring the lettuce canopy area, RMSE was recorded as 50.23% for fitness function neural network (FFNN), 20.46% for radial basis function neural network (RBFNN), 15.11% for exact radial basic function neural network (RBEFNN) and 13.54% for generalized regression neural network (GRNN). Comparative analysis revealed that the two-hidden layer GRNN model with 0.09 spread value and 240 hidden neurons bested other machine learning models in terms of RMSE without overfitting.
基于Haralick和灰度共生矩阵数值图像纹理特征分析的静态监督神经网络莴苣冠层面积测量
叶冠面积是作物生长的基本特征,它包含了植物覆盖的空间面积。然而,生菜冠层面积的无损自动计算仍处于研究阶段。本研究提出了一种基于视觉的系统,结合颜色空间阈值和机器学习模型,基于Haralick和灰度共生矩阵(GLCM)的数值图像纹理特征,基于冠层面积测量水培莴苣的光合生产力。利用相关性1和相关性2的对比度、相关性、能量、均匀性、熵、方差和信息测度等特征提取不同光合色素强度和几何结构的不同生育期生菜图像。对于多波段色彩空间阈值分割,CIELab以94.77%和97.16%的灵敏度和特异性分别优于RGB、HSV和YCbCr色彩空间。适应度函数神经网络(FFNN)的RMSE为50.23%,径向基函数神经网络(RBFNN)的RMSE为20.46%,精确径向基函数神经网络(rbenn)的RMSE为15.11%,广义回归神经网络(GRNN)的RMSE为13.54%。对比分析表明,具有0.09扩散值和240个隐藏神经元的两隐层GRNN模型在RMSE方面优于其他机器学习模型,且没有过拟合。
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