Identification of Water-Stressed Area in Maize Crop Using Uav Based Remote Sensing

A. Kumar, Shreeshan S, Tejasri N, P. Rajalakshmi, W. Guo, B. Naik, B. Marathi, U. Desai
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引用次数: 7

Abstract

Agronomic inputs such as water , nutrients and fertilisers play a vital role in the health, growth and yield of crops. The lack of each of these inputs induces biotic and abiotic stress in the crop. Farmers are relying on groundwater because of decreased rainfall. The irrigation method can be improved by acquiring awareness of the health of crops and soils. In general, crop and soil quality is controlled by means of manual observation, which is time-consuming, labour-intensive and contributes to incorrect choices and substantial waste of resources. There is also an immediate need to automate the inspection process that will finally benefit farmers and agricultural scientists. In this paper, the identification of the water-stressed areas in the crop(maize) field has been studied, and an Unmanned Aerial Vehicle (UAV) based remote sensing is used to automate the crop health-monitoring process. We proposed a framework (model) based on Convolutional Neural Networks (CNN) to identify the stressed and normal/healthy areas in the maize crop field. The performance of the proposed framework has been compared with different models of CNN, such as ResNet50, VGG-19, and Inception-v3. The results show that the proposed model outperforms the baseline models and successfully classify stressed and normal areas with 95 % accuracy on train data and 93 % accuracy with 0.9370 precision and 0.9403 F1 score on test data.
基于无人机的玉米作物缺水区遥感识别
水、养分和肥料等农艺投入对作物的健康、生长和产量起着至关重要的作用。每一种投入的缺乏都会引起作物的生物和非生物胁迫。由于降雨量减少,农民依赖地下水。通过了解作物和土壤的健康状况,可以改进灌溉方法。一般来说,作物和土壤质量是通过人工观察来控制的,这是耗时的,劳动密集型的,并导致错误的选择和大量的资源浪费。目前还迫切需要自动化检验过程,这最终将使农民和农业科学家受益。本文研究了作物(玉米)田缺水区域的识别,并利用无人机(UAV)遥感技术实现作物健康监测过程的自动化。提出了一种基于卷积神经网络(CNN)的框架(模型)来识别玉米作物田间的胁迫区和正常/健康区。本文将该框架的性能与不同的CNN模型(如ResNet50、VGG-19和Inception-v3)进行了比较。结果表明,本文提出的模型优于基线模型,在列车数据和测试数据上分别以95%和93%的精度和0.9370的精度和0.9403的F1分数对应力区和法向区进行了分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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