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A fast and easy method for predicting agricultural waste compost maturity by image-based deep learning

机译:通过基于图像的深度学习预测农业废物堆肥成熟度的快速简便方法

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摘要

Large amounts of agricultural wastes are generated in agricultural production, and composting this waste is one of the best ways to recycle resources. Compost maturity is an important criterion for measuring the quality of compost-products. Biochemical tests are conventional methods to evaluate compost maturity, but they are time consuming and difficult to perform. Therefore, convolutional neural networks (CNNs) were introduced to realize fast evaluation of compost maturity by analyzing images of different composting stages. Images of 3 different composting materials were collected to build 4 data sets, which included nearly 30,000 images, and a series of experiments were performed on them. The accuracy of proposed method was 99.7%, 99.4%, 99.7% and 99.5% on the 4 test sets, respectively. Experimental results demonstrate that the proposed CNN-based prediction model produces state of the art results and can be used to predict compost maturity during the composting process.
机译:在农业生产中产生了大量的农业废物,堆肥这种废物是回收资源的最佳方法之一。 堆肥成熟是测量堆肥产品质量的重要标准。 生化试验是评估钙成熟度的常规方法,但它们是耗时且难以执行的。 因此,引入了卷积神经网络(CNNS)以通过分析不同堆肥阶段的图像来实现堆肥成熟度的快速评估。 收集3种不同堆肥材料的图像以构建4个数据集,其中包括近30,000个图像,并对它们进行一系列实验。 拟议方法的准确性分别为4个试验组的99.7%,99.4%,99.7%和99.5%。 实验结果表明,所提出的基于CNN的预测模型产生现有技术的状态,并且可以用于在堆肥过程中预测堆肥成熟度。

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