Abstract

Radiometric normalization is an essential preprocessing step for almost all remote sensing applications such as change detection, image mosaic, and 3-D reconstruction. This article proposes a novel radiometric normalizing method based on spatiotemporal filtering using a reference moderate resolution imaging spectroradiometer (MODIS) product. This differs from traditional relative radiometric normalization (RRN) methods in two folds: first, the number of reference images is more than one, which introduces more complexities than RRN with a single reference image; second, the resolution of MODIS product is significantly lower, thus requiring the algorithms to accommodate scale differences. To address, our approach extends the traditional spatiotemporal filtering method with per image bias that represents both internal (e.g., sensor characteristics) and external (e.g., atmosphere and topography) against the reference data. In addition, we use the Kullback-Leibler divergence metric to statistically determine the resemblance degree between the temporal images for weighting. We applied our proposed method to normalize Landsat Operational Land Imager, Enhanced Thematic Mapper Plus +, and Sentinel MSI using MODIS Nadir BRDF-adjusted reflectance product, covering two study areas of 30 × 15 km2 and 32 × 52 km2, respectively, and we show a notable radiometric consistency over both temporal and spatial dimension after the processing through three comparative experiments with state-of-the-art methods. 1) 3–7% improvement in the contexts of transfer learning, which favors only images with consistent radiometric properties and 2) Mosaic results using our processed images show no apparent seamlines as compared with images processed by other methods.

Highlights

  • R ADIOMETRIC normalization is an essential preprocessing step for many remote sensing applications such as change detection, image mosaic, 3-D reconstruction, etc. [1]– [3]

  • We indicate the accuracy of transfer learning classification (TFC) using two measures: the overall accuracy (OA) and Kappa coefficient (KC)

  • We propose a radiometric normalization method for high resolution images that does not rely on in-situ data, rather on a well radiometric corrected, low resolution, and globally available reference product

Read more

Summary

Introduction

R ADIOMETRIC normalization is an essential preprocessing step for many remote sensing applications such as change detection, image mosaic, 3-D reconstruction, etc. [1]– [3]. RRN methods with the aim to homogenize spectral responses across temporal images do not demand for measures, and can only support limited applications, e.g., regional change detection and qualitative spatiotemporal analysis, thereby are much less demanding in terms of the needed in-situ data. Integrating both ARN and RRN for processing remote sensing raw images is obviously advantageous to achieve products that can be used for a wider scope of applications

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call