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Deep learning based multi-temporal crop classification

机译:基于深度学习的多时间作物分类

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This study aims to develop a deep learning based classification framework for remotely sensed time series. The experiment was carried out in Yolo County, California, which has a very diverse irrigated agricultural system dominated by economic crops. For the challenging task of classifying summer crops using Landsat Enhanced Vegetation Index (EVI) time series, two types of deep learning models were designed: one is based on Long Short-Term Memory (LSTM), and the other is based on one-dimensional convolutional (Conv1D) layers. Three widely-used classifiers were also tested for comparison, including a gradient boosting machine called XGBoost, Random Forest, and Support Vector Machine. Although LSTM is widely used for sequential data representation, in this study its accuracy (82.41%) and F1 score (0.67) were the lowest among all the classifiers. Among non-deep-learning classifiers, XGBoost achieved the best result with 84.17% accuracy and an F1 score of 0.69. The highest accuracy (85.54%) and F1 score (0.73) were achieved by the Conv1D-based model, which mainly consists of a stack of Conv1D layers and an inception module. The behavior of the Conv1D-based model was inspected by visualizing the activation on different layers. The model employs EVI time series by examining shapes at various scales in a hierarchical manner. Lower Conv1D layers of the optimized model capture small scale temporal variations, while upper layers focus on overall seasonal patterns. Conv1D layers were used as an embedded multi-level feature extractor in the classification model which automatically extracts features from input time series during training. The automated feature extraction reduces the dependency on manual feature engineering and pre-defined equations of crop growing cycles. This study shows that the Conv1D-based deep learning framework provides an effective and efficient method of time series representation in multi-temporal classification tasks.
机译:本研究旨在为远程感测时间序列开发基于深入的学习分类框架。该实验是在加利福尼亚州尤罗县进行的,这是一个非常多样化的灌溉农业体系,主导经济作物。对于使用Landsat增强植被指数(EVI)时间序列进行分类夏季作物的具有挑战性的任务,设计了两种类型的深度学习模型:一个基于长短短期记忆(LSTM),另一类基于一维卷积(Conv1d)层。还测试了三种广泛使用的分类器进行比较,包括称为XGBoost,随机林和支持向量机的梯度升压机。尽管LSTM广泛用于顺序数据表示,但在这项研究中,其精度(82.41%)和F1得分(0.67)是所有分类器中最低的。在非深度学习分类器中,XGBoost获得了84.17%的最佳结果,精度为84.17%,F1得分为0.69。基于Conv1d的模型实现了最高精度(85.54%)和F1分数(0.73),主要由一堆Conv1D层和成立模块组成。通过在不同层上的激活来检查基于CONV1D的模型的行为。该模型通过以分层方式检查各种尺度的形状来采用EVI时间序列。优化模型的降低Conv1D层捕获小规模的时间变化,而上层专注于整体季节性模式。 CONV1D层用作分类模型中的嵌入式多级别特征提取器,其在训练期间自动提取来自输入时间序列的功能。自动特征提取减少了对手动特征工程和作物日益增长的循环的预定义方程的依赖性。本研究表明,基于CONC1D的深度学习框架在多时间分类任务中提供了一种有效且有效的时间序列表示方法。

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