Abstract

Mapping agricultural crops is an important application of remote sensing. However, in many cases it is based either on hyperspectral imagery or on multitemporal coverage, both of which are difficult to scale up to large-scale deployment at high spatial resolution. In the present paper, we evaluate the possibility of crop classification based on single images from very high-resolution (VHR) satellite sensors. The main objective of this work is to expose performance difference between state-of-the-art parcel-based smoothing and purely data-driven conditional random field (CRF) smoothing, which is yet unknown. To fulfill this objective, we perform extensive tests with four different classification methods (Support Vector Machines, Random Forest, Gaussian Mixtures, and Maximum Likelihood) to compute the pixel-wise data term; and we also test two different definitions of the pairwise smoothness term. We have performed a detailed evaluation on different multispectral VHR images (Ikonos, QuickBird, Kompsat-2). The main finding of this study is that pairwise CRF smoothing comes close to the state-of-the-art parcel-based method that requires parcel boundaries (average difference ≈ 2.5%). Our results indicate that a single multispectral (R, G, B, NIR) image is enough to reach satisfactory classification accuracy for six crop classes (corn, pasture, rice, sugar beet, wheat, and tomato) in Mediterranean climate. Overall, it appears that crop mapping using only one-shot VHR imagery taken at the right time may be a viable alternative, especially since high-resolution multitemporal or hyperspectral coverage as well as parcel boundaries are in practice often not available.

Highlights

  • Monitoring agricultural lands and estimating crop production are crucial for countries whose economy heavily depends on agricultural commerce

  • We investigate a general framework for crop classification in agricultural lands from high-resolution, single-date optical satellite images, based on the conditional random field (CRF) formulation

  • We find that pairwise CRF smoothing comes close to the parcel-based method that requires parcel boundaries

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Summary

Introduction

Monitoring agricultural lands and estimating crop production are crucial for countries whose economy heavily depends on agricultural commerce. This includes keeping track of the past production, and short-term monitoring and yield estimation, to forecast agricultural production and inform marketing and trading decisions [1]. Up-to-date information of crop production is acquired by farmer declarations and/or ground visits of the fields. This procedure is subject to some errors and inconsistencies and time consuming and expensive [2]. There is a demand for automated crop classification. The problem has not yet been solved completely; in particular for high resolutions at the level of individual fields

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