基于增强数据的深度训练土壤分类系统的有效性研究

Vikas Khullar, S. Ahuja, Rai Gaurang Tiwar, Ambuj Kumar Agarwa
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引用次数: 9

摘要

农民需要了解特定作物的正确土壤类型,以最大限度地提高农业产量,这影响到不断增长的粮食需求。本文旨在通过应用深度学习方法,提出一种合适且高效的土壤分类系统。采集基于图像的土壤数据集,并根据算法要求进行预处理。首先使用机器学习分类算法实现分类,然后与深度学习算法进行比较。由于图像较少,在5个类别中大约有30张图像,因此算法训练的结果很低。为了提高精度,对数据进行了扩充。进一步,利用增强数据集训练机器学习和深度学习模型。在此基础上,提出了高效的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Efficacy of Deep Trained Soil Classification System with Augmented Data
Farmers need to be aware of the correct soil type for a specific crop to maximize agricultural yield, which affects the rising demand for food. In this paper, an appropriate and efficient soil classification system was aimed to propose by implementing deep learning approaches. Image-based soil data set was collected and pre-processed according to algorithmic requirements. Initially, classification was implemented using machine learning classification algorithms and then it compares with deep learning algorithms. Due to fewer images approximately 30 images in five categories, algorithmic training was resulted in low. To improve accuracy data augmentation was implemented. Further, the augmented dataset was utilized to train the machine learning and deep learning models. Based on the comparison, efficient algorithms were proposed.
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