基于集成U-Net框架的无人机捕获玉米干旱胁迫分割

N. Tejasri, G. U. Sai, P. Rajalakshmi, B. BalajiNaik, U. B. Desai
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引用次数: 2

摘要

水对任何作物生产都是必不可少的。缺乏足够的水供应导致作物的非生物胁迫。准确识别受干旱影响的作物是实现可持续农业产量的必要条件。图像数据在研究作物的反应中起着至关重要的作用。航空成像方法的最新发展使我们能够通过将RGB相机与无人机集成来捕获RGB玉米数据。在这项工作中,我们提出了一个快速收集数据的管道,对数据进行预处理,并应用基于深度学习的模型来分割在受控水分条件下生长的受干旱影响/胁迫和未受影响/健康的RGB玉米作物。基于U-Net和U-Net++架构开发了基于集成的干旱应力分割框架。集成框架基于叠加方法,通过平均微调U-Net和U-Net++模型的预测来生成输出掩码。实验结果表明,集成框架在测试集上的平均IoU为0.71,骰子系数为0.74,优于单个U-Net和U-Net++模型。
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Drought Stress Segmentation on Drone captured Maize using Ensemble U-Net framework
Water is essential for any crop production. Lack of sufficient supply of water supply causes abiotic stress in crops. Accurate identification of the crops affected by drought is required for achieving sustainable agricultural yield. The image data plays a crucial role in studying the crop's response. Recent developments in aerial-based imaging methods allow us to capture RGB maize data by integrating an RGB camera with the drone. In this work, we propose a pipeline to collect data rapidly, pre-process the data and apply deep learning based models to segment drought affected/stressed and unaffected/healthy RGB maize crop grown in controlled water conditions. We develop an ensemble-based framework based on U-Net and U-Net++ architectures for the drought stress segmentation task. The ensemble framework is based on the stacking approach by averaging the predictions of fine-tuned U-Net and U-Net++ models to generate the output mask. The experimental results showed that the ensemble framework performed better than individual U-Net and U-Net++ models on the test set with a mean IoU of 0.71 and a dice coefficient of 0.74.
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