Litcius/Paper detail

Research Progress on Remote Sensing Classification Methods for Farmland Vegetation

Dongliang Fan, Xiaoyun Su, Brian Weng, Tianshu Wang, Feiyun Yang

2021AgriEngineering16 citationsDOIOpen Access PDF

Abstract

Crop planting area and spatial distribution information have important practical significance for food security, global change, and sustainable agricultural development. How to efficiently and accurately identify crops in a timely manner by remote sensing in order to determine the crop planting area and its temporal–spatial dynamic change information is a core issue of monitoring crop growth and estimating regional crop yields. Based on hundreds of relevant documents from the past 25 years, in this paper, we summarize research progress in relation to farmland vegetation identification and classification by remote sensing. The classification and identification of farmland vegetation includes classification based on vegetation index, spectral bands, multi-source data fusion, artificial intelligence learning, and drone remote sensing. Representative studies of remote sensing methods are collated, the main content of each technology is summarized, and the advantages and disadvantages of each method are analyzed. Current problems related to crop remote sensing identification are then identified and future development directions are proposed.

Topics & Concepts

Remote sensingVegetation (pathology)Identification (biology)Remote sensing applicationVegetation IndexComputer scienceAgricultureEnvironmental scienceAgricultural engineeringNormalized Difference Vegetation IndexGeographyClimate changeHyperspectral imagingEngineeringEcologyPathologyMedicineBiologyArchaeologyRemote Sensing in AgricultureRemote Sensing and Land UseLand Use and Ecosystem Services
Research Progress on Remote Sensing Classification Methods for Farmland Vegetation | Litcius