Title

Oceanic Rain Identification Using Multi-Fractal Analysis Of Quikscat Sigma-0

Abstract

The presence of rain over oceans interferes with the measurement of sea surface wind speed and direction from the SeaWinds scatterometer, and as a result, in rain regions wind measurements contain biases. In past research at the Central Florida Remote Sensing Lab, it has been observed that rain has multi-fractal behavior. In this paper we present an algorithm to detect the presence of rain so that rain regions are flagged. The forward and aft views of the high resolution horizontal polarization backscatter are used for the extraction of textural information with the help of multi-fractals. A negated multi-fractal exponent is computed to discriminate between wind and rain. Pixels with exponent value above a threshold are classified as rain pixels and those that do not meet the threshold are further examined with the help of correlation of the multi-fractal exponent within a predefined neighborhood of individual pixels. It was observed that the rain has less correlation within a neighborhood compared to wind. This property is utilized for reactivation of the pixels that fall below a certain threshold of correlation. An adaptive multifractal exponent and threshold is used, as we deal with a wide range of latitudes. Validation results are presented through comparison with the Tropical Rainfall Measurement Mission Microwave Imager (TMI) 2A12 rain retrieval product for one day. The results show that the algorithm is effective in identifying rain pixels. Some algorithm deficiencies in high wind speed regions are also discussed. Comparisons with other proposed approaches are also be presented. © Copyright 2005 IEEE.

Publication Date

1-1-2005

Publication Title

Proceedings of MTS/IEEE OCEANS, 2005

Volume

2005

Number of Pages

2656-2663

Document Type

Article; Proceedings Paper

Personal Identifier

scopus

DOI Link

https://doi.org/10.1109/OCEANS.2005.1640174

Socpus ID

33947108971 (Scopus)

Source API URL

https://api.elsevier.com/content/abstract/scopus_id/33947108971

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