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首页> 外文期刊>Acta Horticulturae >Estimation of wild blueberry fruit yield using digital color photography.
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Estimation of wild blueberry fruit yield using digital color photography.

机译:使用数字彩色摄影估算野生蓝莓的产量。

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The wild blueberry industry of North America may benefit significantly from precision agriculture technology. Currently, crop management practices are implemented on an average basis without considering the substantial variation in soil properties, bare spots, topographic features, and yield in blueberry fields. Yield maps along with fertility, weed, and topographic maps can be used to generate prescription maps for site-specific application of agrochemicals. Two wild blueberry fields were selected in central Nova Scotia to evaluate a photographic method for fruit yield estimation. A 10-megapixel 24-bit digital color camera was mounted on a tripod and pointed downwards to take photographs of the blueberry crop from a height of approximately 1 m. At harvest time, blueberry crop images were collected in each field at 30 different sample locations displaying a range in yield. Actual fruit yield was sampled from the same locations by hand-harvesting a 0.5x0.5 m quadrat, using a commercial blueberry rake. Custom image processing software was developed to count the blue pixels of ripe fruit in the quadrat region of each image and express it as a percentage of total quadrat pixels. Linear regression was used to calibrate the fruit yield with percentage blue pixels separately in each field and then the calibration equation of field 1 was used to predict fruit yield in field 2 for validation of the method. Percentage blue pixels correlated highly significantly with manually harvested fruit yield in field 1 (R2=0.98, n=30) and field 2 (R2=0.99, n=30). The correlation between actual and predicted fruit yield in the second field (validation) was also highly significant (R2=0.99, n=30, RMSE=277 kg/ha). Non-significance of the t-test for actual versus predicted yield indicated that there was no bias in the yield estimation and that the predicted yield was accurate. Based on these results, an automated yield monitoring system consisting of a digital camera, computer, and DGPS will be developed and incorporated into a harvester to monitor and map blueberry fruit yield in real time.
机译:北美的野生蓝莓产业可能会从精密农业技术中受益匪浅。当前,作物管理实践是平均执行的,没有考虑到土壤性质,裸露斑点,地形特征和蓝莓田产量的实质性变化。产量图以及肥力,杂草和地形图可用于生成处方图,以特定地点使用农药。在新斯科舍省中部选择了两个野生蓝莓田,以评估用照相方法估算水果产量。将10兆像素的24位数字彩色摄像机安装在三脚架上,并向下指向以从大约1 m的高度拍摄蓝莓作物的照片。在收获时,在每个田地的30个不同样本位置收集了蓝莓作物图像,显示了一定的产量范围。实际的水果产量是通过使用商用蓝莓耙从同一地点手工收获0.5x0.5 m的四方取样的。开发了自定义图像处理软件,以计算每个图像的方形区域中成熟水果的蓝色像素,并将其表示为总方形像素的百分比。使用线性回归分别在每个字段中用蓝色像素百分比校准水果产量,然后使用字段1的校准方程式预测字段2中的水果产量以验证该方法。区域1(R 2 = 0.98,n = 30)和区域2(R 2 = 0.99,n = 30)中蓝色像素百分比与人工收获的水果产量高度相关)。在第二个田间(验证)的实际和预测的水果产量之间的相关性也非常显着(R 2 = 0.99,n = 30,RMSE = 277 kg / ha)。 t检验对于实际产量与预期产量的不显着性表明,产量估算中没有偏差,并且预测产量是准确的。基于这些结果,将开发由数码相机,计算机和DGPS组成的自动化产量监控系统,并将其集成到收割机中,以实时监控和绘制蓝莓果实的产量。

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