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Convolutional neural networks in predicting cotton yield from images of commercial fields

机译:从商业领域图像预测棉花产量的卷积神经网络

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One way to improve the quality of mechanized cotton harvesting is to change harvester settings and adjustments throughout the process, according to information obtained during the operation. We believe that yield predictions are important for managing the quality of operation, aiming at increasing efficiency and reducing losses. Therefore, this study aimed to develop an automated system for cotton yield prediction from color images acquired by a simple mobile device. We propose a robust approach to environmental conditions, training detection algorithms with images acquired at different times throughout the day, and evaluating three different scenarios (low-, average-, and high-demand computational resources). The experimental results for the average demand computational scenario, which are suitable for real-time deployment on low-cost devices such as smartphones and other ARM-processed devices, indicated the possibility of counting bolls using images acquired at different times throughout the day, with mean errors of 8.84% (similar to 5 bolls). Furthermore, we observed a 17.86% error when predicting yield using 205 images from the testing dataset, which is equivalent to about 19.14 g.
机译:提高机械化棉花收割质量的一种方法是根据操作期间获得的信息改变整个过程的收割机设置和调整。我们认为,旨在提高效率和降低损失,产生效率的产量预测是重要的。因此,本研究旨在开发由简单移动设备获取的彩色图像的棉花产量预测的自动化系统。我们提出了一种稳健的环境条件方法,培训训练算法在整个日期的不同时间获取的图像,并评估三种不同的场景(低,平均和高需求计算资源)。适用于平均需求计算场景的实验结果,适用于智能手机等低成本设备上的实时部署,表明了在整天不同时间获取的图像计算铃声的可能性平均误差为8.84%(类似于5个铃声)。此外,当使用来自测试数据集的205个图像预测产量时,我们观察到17.86%的错误,这相当于约19.14g。

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