Abstract

The utilization of high-resolution aerial imagery such as the National Agriculture Imagery Program (NAIP) data is often hampered by a lack of methods for retrieving surface reflectance from digital numbers. This study developed a new relative radiometric correction method to retrieve 1 m surface reflectance from NAIP imagery. The advantage of this method lies in the adaptive identification of pseudoinvariant (PIV) pixels from a time series of Landsat images that can fully characterize the temporally spectral variations of land surface. The identified PIV pixels allow for an effective conversion of digital numbers to surface reflectance, as demonstrated through the validation at 150 sites across the contiguous United States. The results show substantial improvement in the agreement of NAIP-derived normalized difference vegetation index (NDVI) values with Landsat-derived NDVI reference. Across the sites, root mean square error and mean absolute error were reduced from 0.37 ± 0.14 to 0.08 ± 0.07 and from 0.91 ± 0.64 to 0.18 ± 0.52, respectively. Over 70% PIV pixels on average were derived from vegetated areas, while water and developed areas together contributed 27% of the PIV pixels. As the NAIP program is continuing to generate new images across the country, the advantages of its high spatial resolution, national coverage, long time series, and regular revisits will make it an increasingly crucial data source for a variety of research and management applications. The proposed method could benefit many agricultural, hydrological, and urban studies that rely on NAIP imagery to quantify land surface patterns and dynamics. It could also be applied to improve the preprocessing of high-resolution aerial imagery in other countries.

Highlights

  • The National Agriculture Imagery Program (NAIP) orthoimagery is the only high-resolution aerial imagery with repeated nationwide coverage in the United States

  • The range of thresholds determined in this study was RcRoeemmmootpteeaSSreeannsbs..l22e00t11o99,t11h11e, xxthFFOOreRRshPPEoEEEldRR oRRfEEV0V.II0EE2WW0–0.027 recommended for MODIS time series [37,40]

  • This study developed a new relative radiometric correction method to retrieve 1 m surface reflectance from NAIP imagery

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Summary

Introduction

The National Agriculture Imagery Program (NAIP) orthoimagery is the only high-resolution aerial imagery with repeated nationwide coverage in the United States It is available at the spatial resolution of 0.6 to 2 meters with very low cloud coverage and consists of repeat images during the growing season with two or three year cycles for more than 15 years [1]. The conversion from DNs to surface reflectance is increasingly understood as a minimum standard for analysis-ready data in order to ensure consistency when comparing images over time and from different sensors [16] This is important to the calculations of many multispectral indices, such as the normalized difference vegetation index (NDVI) and the normalized difference water index (NDWI), that are very sensitive to atmospheric effects. This is mainly due to a lack of easy access to radiometric response data for the sensors used and the lack of methods for retrieving surface reflectance from NAIP DN values [1]

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