Abstract

Accurate crop type identification and crop area estimation from remote sensing data in tropical regions are still considered challenging tasks. The more favorable weather conditions, in comparison to the characteristic conditions of temperate regions, permit higher flexibility in land use, planning, and management, which implies complex crop dynamics. Moreover, the frequent cloud cover prevents the use of optical data during large periods of the year, making SAR data an attractive alternative for crop mapping in tropical regions. This paper evaluates the effectiveness of Deep Learning (DL) techniques for crop recognition from multi-date SAR images from tropical regions. Three DL strategies are investigated: autoencoders, convolutional neural networks, and fully-convolutional networks. The paper further proposes a post-classification technique to enforce prior knowledge about crop dynamics in the target area. Experiments conducted on a Sentinel-1 multitemporal sequence of a tropical region in Brazil reveal the pros and cons of the tested methods. In our experiments, the proposed crop dynamics model was able to correct up to 16.5% of classification errors and managed to improve the performance up to 3.2% and 8.7% in terms of overall accuracy and average F1-score, respectively.

Highlights

  • Two different protocols were considered for all four approaches (RFpixel, autoencoders for patch-based classification (AEpatch), CNNpatch, and FCNpixel), as described

  • The results revealed that RFpatch consistently outperformed AEpatch both in terms of Overall Accuracy (OA) and average F1-score, by a low margin

  • Recall that CNNpatch learns features in an end-to-end way, whereas RFpatch relies on engineered features

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Summary

Introduction

With the expected increase in the human population to more than 9.8 billion by 2050 [3], coupled with the predicted worldwide growth of per capita income, the demand for food is expected to escalate in the near future [4]. There is, an urgent need for conceiving of efficient and sustainable strategies for the agricultural sector in order to enhance food security for the current and future human population. In this context, in order to support the successful production, processing, marketing, and distribution of the major crop types, timely and accurate information about agricultural activities is essential. To meet the challenge of sustaining agricultural productivity growth, scientists and decision-makers require data produced by efficient agricultural monitoring processes

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