Abstract

Identification of crop species is an important issue in agricultural management. In recent years, many studies have explored this topic using multi-spectral and hyperspectral remote sensing data. In this study, we perform dedicated research to propose a framework for mapping crop species by combining hyperspectral and Light Detection and Ranging (LiDAR) data in an object-based image analysis (OBIA) paradigm. The aims of this work were the following: (i) to understand the performances of different spectral dimension-reduced features from hyperspectral data and their combination with LiDAR derived height information in image segmentation; (ii) to understand what classification accuracies of crop species can be achieved by combining hyperspectral and LiDAR data in an OBIA paradigm, especially in regions that have fragmented agricultural landscape and complicated crop planting structure; and (iii) to understand the contributions of the crop height that is derived from LiDAR data, as well as the geometric and textural features of image objects, to the crop species’ separabilities. The study region was an irrigated agricultural area in the central Heihe river basin, which is characterized by many crop species, complicated crop planting structures, and fragmented landscape. The airborne hyperspectral data acquired by the Compact Airborne Spectrographic Imager (CASI) with a 1 m spatial resolution and the Canopy Height Model (CHM) data derived from the LiDAR data acquired by the airborne Leica ALS70 LiDAR system were used for this study. The image segmentation accuracies of different feature combination schemes (very high-resolution imagery (VHR), VHR/CHM, and minimum noise fractional transformed data (MNF)/CHM) were evaluated and analyzed. The results showed that VHR/CHM outperformed the other two combination schemes with a segmentation accuracy of 84.8%. The object-based crop species classification results of different feature integrations indicated that incorporating the crop height information into the hyperspectral extracted features provided a substantial increase in the classification accuracy. The combination of MNF and CHM produced higher classification accuracy than the combination of VHR and CHM, and the solely MNF-based classification results. The textural and geometric features in the object-based classification could significantly improve the accuracy of the crop species classification. By using the proposed object-based classification framework, a crop species classification result with an overall accuracy of 90.33% and a kappa of 0.89 was achieved in our study area.

Highlights

  • Precise crop mapping is vitally important in agriculture and agricultural management, such as crop damage estimation [1], crop acreage and yield estimation [2], and precision agriculture [3]

  • For the VHR-based segmentation scheme, the VHR image was a false color composition of three hyperspectral imagery bands (R: band centered at 826 nm, G: band centered at 683 nm, B: band centered at 540 nm); in the VHR/Canopy Height Model (CHM)-based segmentation, the CHM data that were derived from Light Detection and Ranging (LiDAR) data were expected to provide differentiation between different crop species; and for the CHM/MNF-based segmentation, the MNF feature was generated by hyperspectral data to provide spectral differences for different crop species

  • We proposed a framework for mapping crop species by combining hyperspectral and

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Summary

Introduction

Precise crop mapping is vitally important in agriculture and agricultural management, such as crop damage estimation [1], crop acreage and yield estimation [2], and precision agriculture [3]. Crops mapped in detail are basic data and materials for scientific study and governmental decision-making. Compared with conventional field investigation approaches, remote sensing has been considered to be a cost-effective, labor-saving, and time-efficient method of vegetation mapping that has been widely applied in crop mapping [4]. It is challenging for multi-spectral remote sensing data to discriminate between different species of crops. Hyperspectral remote sensing data, which has narrow spectral bands of up to hundreds from the visible to the infrared region of the spectrum, are more powerful in identifying different crop species than multi-spectral images. In order to investigate the capability of hyperspectral data in distinguishing different crops, studies on the choosing of appropriate hyperspectral data waveband locations were performed [6,7]

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