Frost damage is one of the main factors leading to wheat yield reduction. Therefore, the detection of wheat frost accurately and efficiently is beneficial for growers to take corresponding measures in time to reduce economic loss. To detect the wheat frost, in this paper we create a hyperspectral wheat frost data set by collecting the data characterized by temperature, wheat yield, and hyperspectral information provided by the handheld hyperspectral spectrometer. However, due to the imbalance of data, that is, the number of healthy samples is much higher than the number of frost damage samples, a deep learning algorithm tends to predict biasedly towards the healthy samples resulting in model overfitting of the healthy samples. Therefore, we propose a method based on deep cost-sensitive learning, which uses a one-dimensional convolutional neural network as the basic framework and incorporates cost-sensitive learning with fixed factors and adjustment factors into the loss function to train the network. Meanwhile, the accuracy and score are used as evaluation metrics. Experimental results show that the detection accuracy and the score reached 0.943 and 0.623 respectively, this demonstration shows that this method not only ensures the overall accuracy but also effectively improves the detection rate of frost samples.
翻译:冷冻小麦的检测准确而有效,有利于种植者及时采取相应措施减少经济损失。为了检测小麦霜,我们在本文中通过收集以温度、小麦产量和手持超光谱光谱仪提供的超光谱信息为特征的数据,创建了超光谱小麦霜数据组。然而,由于数据不平衡,即健康样品的数量远远高于冷冻损害样品的数量,深层学习算法往往偏向健康样品,导致模型过于适合健康样品。因此,我们提出一种基于深度成本敏感的学习方法,将单维电动神经网络作为基本框架,并将具有固定因素和调整因素的成本敏感学习纳入损失函数,以培训网络。与此同时,精确度和分数被用作评估指标。实验结果显示,检测准确性和得分分别达到0.943和0.623,这表明这一方法不仅确保了整体准确性,而且有效地改进了岩石样品的检测率。