Abstract

Crop classification in agriculture is one of important applications for polarimetric synthetic aperture radar (PolSAR) data. For agricultural crop discrimination, compared with single-temporal data, multi-temporal data can dramatically increase crop classification accuracies since the same crop shows different external phenomena as it grows up. In practice, the utilization of multi-temporal data encounters a serious problem known as a “dimension disaster”. Aiming to solve this problem and raise the classification accuracy, this study developed a feature dimension reduction method using stacked sparse auto-encoders (S-SAEs) for crop classification. First, various incoherent scattering decomposition algorithms were employed to extract a variety of detailed and quantitative parameters from multi-temporal PolSAR data. Second, based on analyzing the configuration and main parameters for constructing an S-SAE, a three-hidden-layer S-SAE network was built to reduce the dimensionality and extract effective features to manage the “dimension disaster” caused by excessive scattering parameters, especially for multi-temporal, quad-pol SAR images. Third, a convolutional neural network (CNN) was constructed and employed to further enhance the crop classification performance. Finally, the performances of the proposed strategy were assessed with the simulated multi-temporal Sentinel-1 data for two experimental sites established by the European Space Agency (ESA). The experimental results showed that the overall accuracy with the proposed method was raised by at least 17% compared with the long short-term memory (LSTM) method in the case of a 1% training ratio. Meanwhile, for a CNN classifier, the overall accuracy was almost 4% higher than those of the principle component analysis (PCA) and locally linear embedded (LLE) methods. The comparison studies clearly demonstrated the advantage of the proposed multi-temporal crop classification methodology in terms of classification accuracy, even with small training ratios.

Highlights

  • It is very important to acquire crop type information in crop growing monitoring, biomass estimation, crop yield prediction, etc. [1,2,3]

  • These two sites were established by the European Space Agency (ESA) to evaluate the performances of crop classification with Sentinel-1 data

  • CTooncdleuasliownith the problem of the dimension disaster, this paper proposed an sparse auto-encoders (S-SAEs) to reduce the data dTimo deneasilowniothf sthcaetpterroinblgemfeaotfutrhees edximtraecntseidonfrdoimsamsteurl,tit-hteismppaoprearlpProolpSAosRedimanagSe-sS.ATEo tvoarlieddautceeththee pdearftoardmimanecnessioonf tohfespcarottpeorisnegdfSe-aStAurEes+eCxtNraNctestdraftreogmy,mthueltSie-tnetminpeol-r1aldPatoal,SaAloRnigmwagitehs.thTeoevsatlaibdlaistehethde gproerufnodrmtrauntchesmoafptshefoprrtowpooseexdpeSr-SimAeEn+taCl NsitNess,twraetreegyu,stehde

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Summary

Introduction

It is very important to acquire crop type information in crop growing monitoring, biomass estimation, crop yield prediction, etc. [1,2,3]. Several representative systems are available for civilian applications, including C-band Sentinel-1 systems [20,21], RADARSAT-2 and Radarsat Constellation Mission (RCM) [22,23], L-band Advanced Land Observing Satellite (ALOS) ALOS-PALSAR/PALSAR-2 [24,25], X-band Tandem-X [26], and X-band Constellation of Small Satellites for Mediterranean basin Observation (COMSMO) COMSMO -SkyMed constellation [27] Based on these operational systems, large amounts of multi-temporal PolSAR data can be collected and adopted for use in crop classification and other applications [28,29,30,31,32,33,34,35,36]

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