Abstract

Automatic cloud detection and classification using satellite cloud imagery have various meteorological applications such as weather forecasting and climate monitoring. Cloud pattern analysis is one of the research hotspots recently. Since satellites sense the clouds remotely from space, and different cloud types often overlap and convert into each other, there must be some fuzziness and uncertainty in satellite cloud imagery. Satellite observation is susceptible to noises, while traditional cloud classification methods are sensitive to noises and outliers; it is hard for traditional cloud classification methods to achieve reliable results. To deal with these problems, a satellite cloud classification method using adaptive fuzzy sparse representation-based classification (AFSRC) is proposed. Firstly, by defining adaptive parameters related to attenuation rate and critical membership, an improved fuzzy membership is introduced to accommodate the fuzziness and uncertainty of satellite cloud imagery; secondly, by effective combination of the improved fuzzy membership function and sparse representation-based classification (SRC), atoms in training dictionary are optimized; finally, an adaptive fuzzy sparse representation classifier for cloud classification is proposed. Experiment results on FY-2G satellite cloud image show that, the proposed method not only improves the accuracy of cloud classification, but also has strong stability and adaptability with high computational efficiency.

Highlights

  • Meteorological satellites have advantages such as a wide range of spatial observations, high temporal resolution, all-weather observation, etc

  • In the proposed adaptive fuzzy sparse representation-based classification (AFSRC), the centers and radius R of hyperspheres for the membership value calculations were determined by support vector data description (SVDD), and Gaussian kernel function was used in SVDD

  • Since traditional fuzzy membership has poor flexibility and is inconsistent with the distribution characteristics of samples for cloud classification, by defining adaptive parameters related to attenuation rate and critical membership, an adaptive fuzzy membership function is constructed and combined with sparse representation classifier

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Summary

Introduction

Meteorological satellites have advantages such as a wide range of spatial observations, high temporal resolution, all-weather observation, etc. Satellite cloud imagery has become one of the important means for weather forecasting and climate analysis [1,2,3], especially for forecasting and monitoring some natural disasters, such as typhoons, floods, snowstorms, forest fires, etc. Cloud classification is one of the fundamental works of satellite cloud image processing. The current commonly used methods for cloud classification are threshold based methods (including simple threshold method and histogram based method mainly), statistical based methods, and artificial intelligence based methods [4]. Histogram based method [7] improves the simple threshold method by taking advantage of statistical properties of the partial or global histograms of satellite cloud images, Sensors 2016, 16, 2153; doi:10.3390/s16122153 www.mdpi.com/journal/sensors

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