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    基于物候及多样本数据集的作物类型遥感识别

    Remote sensing identification of crop types based on phenological features and a multi-sample dataset

    • 摘要: 针对作物识别受样本质量和相似地类干扰的问题,该文旨在探索一种基于作物物候期特征及多样本数据集的作物识别优化方法,提高作物识别精度。通过分析时序遥感数据中作物的物候期特征变化规律,确定不同作物的最佳监测物候期,从而提升作物识别的准确性和稳定性。在此基础上,选取包含多种样本数量与类型的多样化样本集,并构建深度卷积神经网络模型进行不同物候期与样本组合的对比实验。实验结果表明,样本质量对识别精度影响较大,同样本质量下,选取最佳监测物候期能显著改善识别效果,在最佳样本质量和物候期的组合下,总体识别精度达到84.88%,Kappa系数为0.770 1。该研究通过构建基于最佳物候期的多样化样本数据集并优化深度学习模型,为解决样本质量不足及生长周期相似导致的作物识别困难提供了新思路。

       

      Abstract: Crop identification is limited by sample quality and the interference from similar land types. To improve crop identification accuracy, this study explored an optimized crop identification method based on the phenological features of crops and a multi-sample dataset. Specifically, by analyzing the changes in phenological features of crops in time-series remote sensing data, this study determined the optimal phenophases for monitoring various crops, thereby improving the accuracy and stability of crop identification. Furthermore, a multi-sample dataset containing various sample sizes and types was constructed. Finally, a deep convolutional neural network (DCNN) model was developed to conduct comparative experiments under different combinations of phenophases and samples. The experimental results indicate that sample quality exerted a significant influence on crop identification accuracy. Under the same sample quality, selecting the optimal monitoring phenological period can significantly improve recognition performance. Under the combination of optimal sample quality and phenophases, the overall identification accuracy reached 84.88%, with a Kappa coefficient of 0.770 1. Overall, by constructing a multi-sample dataset based on the optimal phenophases for monitoring and optimizing the deep learning model, this study offers a novel approach for addressing the crop identification challenge posed by insufficient sample quality and similar growth cycles.

       

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