Abstract

Accurate and up-to-date information on the spatial and geographical characteristics of agricultural areas is an indispensable value for the various activities related to agriculture and research. Most agricultural studies and policies are carried out at the field level, for which precise boundaries are required. Today, high-resolution remote sensing images provide useful spatial information for plot delineation; however, manual processing is time-consuming and prone to human error. The objective of this paper is to explore the potential of deep learning (DL) approach, in particular a convolutional neural network (CNN) model, for the automatic outlining of agricultural plot boundaries from orthophotos over large areas with a heterogeneous landscape. Since DL approaches require a large amount of labeled data to learn, we have exploited the open data from the Land Parcel Identification System (LPIS) from the Chartered Community of Navarre, Spain. The boundaries of the agricultural plots obtained from our methodology were compared with those obtained using a state-of-the-art methodology known as gPb-UCM (global probability of boundary followed by ultrametric contour map) through an error measurement called the boundary displacement error index (BDE). In BDE terms, the results obtained by our method outperform those obtained from the gPb-UCM method. In this regard, CNN models trained with LPIS data are a useful and powerful tool that would reduce intensive manual labor in outlining agricultural plots.

Highlights

  • World food production needs to grow by 70% in developing countries to meet food demands of 9 billion people by 2050 [1]

  • In order to reduce the gap described above, in this paper we explored the use of a deep learning (DL) methodology for the automated mapping of agricultural plot boundaries over a large area with a heterogeneous landscape

  • It is important to point out that the precision obtained in the buffer class is not excellent (69%), this is not a disadvantage to the aim of this work, because agricultural plot boundaries are obtained from the parcel class

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Summary

Introduction

World food production needs to grow by 70% in developing countries to meet food demands of 9 billion people by 2050 [1]. Nutritious food for a growing world population; and, at the same time using natural resources more sustainably while making an effective contribution to climate change adaptation and mitigation [2]. For agriculture to be sustainable, agricultural practices must take full advantage of technology, research and development and adapt to local requirements. A. García-Pedrero et al.: DL for Automatic Outlining Agricultural Parcels: Exploiting the LPIS management of the agricultural sector [3]. A symbiosis between technical and investment-oriented organizations is necessary

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