利用智能t恤和作物协议进行农业活动识别

Sanat Sarangi, Somya Sharma, B. Jagyasi
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引用次数: 4

摘要

准确识别农业活动对提高农业生产力有直接影响,包括提高作物产量、在需要时向农民提供精确培训以及衡量他们的努力。此外,农业活动不是相互独立的。任何作物的种植都与一种被称为作物协议的农民活动模式相关联。我们为农民开发了一种名为smart t-shirt的本土服装,提出了一种活动分类模型,该模型对七个类别的平均活动预测准确率超过88%。许多分类器的性能- svm, Naive Byes, K-NN, LDA和qda -被严格评估和比较用于活动预测。我们还提出了一个模型,当报告活动的证据不明确时,使用与作物协议相关的先验信息来识别主要活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agricultural activity recognition with smart-shirt and crop protocol
Accurate recognition of agricultural activity has a direct bearing on improving farm productivity in terms of achieving crop yield improvements, imparting precision training to farmers wherever needed, and measuring their efforts. Moreover, farm activities are not independent of each other. Cultivation of any crop is associated with a defined pattern of farmer activities called the crop protocol. With an indigenously developed garment for the farmer called smart-shirt, we propose a model for activity classification which has a mean activity prediction accuracy of over 88% for seven classes. The performance of numerous classifiers-SVM, Naive Byes, K-NN, LDA and QDA-is rigorously evaluated and compared for activity prediction. We also propose a model to use the a priori information associated with the crop protocol to recognize the major activity when presented with an unclear evidence of reported activities.
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