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首页> 外文期刊>Journal of crop science and Biotechnology >Estimating canopy cover from color digital camera image of rice field.
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Estimating canopy cover from color digital camera image of rice field.

机译:从稻田的彩色数码相机图像估算机盖覆盖率。

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Canopy cover (CC) is a good predictor variable for plant growth parameters such as leaf area index and aboveground biomass. A nondestructive, low-cost, and convenient method is presented for estimating CC using digital camera image analysis. CC was estimated by the ratio of plant pixels to total pixels of digital camera image of rice field. To determine the criteria for segmenting the rice plant from variable soil background, three mosaic images for rice plant, flooded/bare soil, and algae-infested background were prepared from digital camera images that were taken in various field conditions. An image analysis program was developed in Visual Basic to extract red, green, and blue (RGB) features from the mosaic images, calculate RGB-based color indices, and compute the minimum segmentation error for separating rice plant from background. When judged by the segmentation error, modified excessive green index (MEGI) showed the highest potential for segmenting rice plant from flooded/bare soil background, followed by normalized green (g) and excessive green index (EGI). At the threshold MEGI value of 0.03, the segmentation error was the lowest as 0.13%. Any single index considered was not satisfactory in segmenting rice plant from algae-infested background. However, a discriminant function of 1.2553EGI+0.01735G-0.01474B was successful in segmenting rice plant from flooded/bare soil and algaeinfested background with segmentation errors of 0.34 and 1.17%, respectively. CC for four rice varieties from tillering to booting stage was estimated based on the threshold value of MEGI and discriminant function and also manually using commercial software. Both estimates of CC showed good relationship of r2=0.94, suggesting that a digital camera could be used efficiently for measuring the CC of rice field.
机译:冠层覆盖度(CC)是植物生长参数(如叶面积指数和地上生物量)的良好预测变量。提出了一种无损,低成本且方便的方法,用于使用数码相机图像分析估算CC。 CC通过稻田数码相机图像中植物像素占总像素的比率估算。为了确定从可变土壤背景中分割水稻植株的标准,根据在各种田间条件下拍摄的数码相机图像,准备了三个水稻植株,淹水/裸露土壤和藻类侵染背景的马赛克图像。在Visual Basic中开发了一个图像分析程序,以从镶嵌图像中提取红色,绿色和蓝色(RGB)特征,计算基于RGB的颜色指数,并计算用于将水稻植物与背景分离的最小分割误差。通过分割误差判断时,改良的过度绿色指数(MEGI)显示了从淹水/裸土背景中分割水稻植株的最大潜力,其次是归一化绿色(g)和过度绿色指数(EGI)。在MEGI阈值0.03时,分割误差最低,为0.13%。从藻类侵染背景中分离水稻植株时,所考虑的任何单一指标均不令人满意。然而,判别函数1.2553EGI + 0.01735G-0.01474B成功地将水淹/光秃土壤和藻类侵染的背景中的水稻植物进行了分割,分割误差分别为0.34和1.17%。根据MEGI的阈值和判别函数,并使用商业软件手动估算了从分er到孕穗期的四个水稻品种的CC。两者的CC估计值均显示出r 2 = 0.94的良好关系,表明数码相机可有效地用于测量稻田的CC。

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