Ilyas Qazi Mudassar, Ahmad Muneer, Mehmood Abid
Department of Information Systems, College of Computer Sciences and Information Technology, King Faisal University, Al Ahsa 31982, Saudi Arabia.
Endicott College of International Studies, Woosong University, Daejeon 34606, Republic of Korea.
Bioengineering (Basel). 2023 Jan 17;10(2):125. doi: 10.3390/bioengineering10020125.
Agriculture is the backbone of any country, and plays a viable role in the total gross domestic product (GDP). Healthy and fruitful crops are of immense importance for a government to fulfill the food requirements of its inhabitants. Because of land diversities, weather conditions, geographical locations, defensive measures against diseases, and natural disasters, monitoring crops with human intervention becomes quite challenging. Conventional crop classification and yield estimation methods are ineffective under unfavorable circumstances. This research exploits modern precision agriculture tools for enhanced remote crop yield estimation, and types classification by proposing a fuzzy hybrid ensembled classification and estimation method using remote sensory data. The architecture enhances the pooled images with fuzzy neighborhood spatial filtering, scaling, flipping, shearing, and zooming. The study identifies the optimal weights of the strongest candidate classifiers for the ensembled classification method adopting the bagging strategy. We augmented the imagery datasets to achieve an unbiased classification between different crop types, including jute, maize, rice, sugarcane, and wheat. Further, we considered flaxseed, lentils, rice, sugarcane, and wheat for yield estimation on publicly available datasets provided by the Food and Agriculture Organization (FAO) of the United Nations and the Word Bank DataBank. The ensemble method outperformed the individual classification methods for crop type classification on an average of 13% and 24% compared to the highest gradient boosting and lowest decision tree methods, respectively. Similarly, we observed that the gradient boosting predictor outperformed the multivariate regressor, random forest, and decision tree regressor, with a comparatively lower mean square error value on yield years 2017 to 2021. Further, the proposed architecture supports embedded devices, where remote devices can adopt a lightweight classification algorithm, such as MobilenetV2. This can significantly reduce the processing time and overhead of a large set of pooled images.
农业是任何国家的支柱,在国内生产总值(GDP)总量中发挥着重要作用。健康且丰收的作物对于政府满足其居民的粮食需求至关重要。由于土地多样性、天气条件、地理位置、疾病防御措施以及自然灾害等因素,通过人工干预来监测作物变得极具挑战性。传统的作物分类和产量估计方法在不利情况下效果不佳。本研究利用现代精准农业工具,通过提出一种使用遥感数据的模糊混合集成分类和估计方法,来增强远程作物产量估计和类型分类。该架构通过模糊邻域空间滤波、缩放、翻转、剪切和缩放来增强汇总图像。该研究为采用装袋策略的集成分类方法确定了最强候选分类器的最优权重。我们扩充了图像数据集,以实现不同作物类型(包括黄麻、玉米、水稻、甘蔗和小麦)之间的无偏分类。此外,我们在联合国粮食及农业组织(FAO)和世界银行数据库提供的公开可用数据集上,考虑了亚麻籽、小扁豆、水稻、甘蔗和小麦进行产量估计。与最高梯度提升方法和最低决策树方法相比,集成方法在作物类型分类方面分别平均比它们高出13%和24%,优于个体分类方法。同样,我们观察到梯度提升预测器在2017年至2021年的产量年份上,优于多元回归器、随机森林和决策树回归器,其均方误差值相对较低。此外,所提出的架构支持嵌入式设备,远程设备可以采用轻量级分类算法,如MobileNetV2。这可以显著减少大量汇总图像的处理时间和开销。