TechRxiv
Prediction_of Crop_Yield Using Machine_Learning Approaches_for Agricultural_Data.pdf (1.84 MB)
Download file

Prediction of Crop Yield Using Machine Learning Approaches for Agricultural Data

Download (1.84 MB)
preprint
posted on 2023-07-20, 20:09 authored by Simanta HazraSimanta Hazra, Sunil Karforma, Abhishek Bandyopadhyay, Sayantani Chakraborty, Debasis Chakraborty

 In this paper, two crop datasets are investigated.  First one is numerical data which is downloaded crop dataset from   https://github.com/Shrey-B/AV-Janatahack-Machine-Learning-in-Agriculture obtained from US field data collection. The dataset contains 88858 labeled samples, eight features and three classes.  Second one is a collection of crop image data.  This dataset is downloaded from https://www.kaggle.com/datasets/aman2000jaiswal/agriculture .  Crop image dataset contains 1005 samples having five type of images namely maize, wheat, jute, rice and sugarcane. Each sample crop image consists of 224 × 224 pixels) of all category.    

Funding

NA

History

Email Address of Submitting Author

simanta.hazra@gmail.com

Submitting Author's Institution

Asansol Engineering College

Submitting Author's Country

  • India