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Journal ArticleDOI

Discriminating clear sky from clouds with MODIS

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TLDR
The MODIS cloud mask algorithm as discussed by the authors uses several cloud detection tests to indicate a level of confidence that the MEDIS is observing clear skies, which is ancillary input to MEDIS land, ocean, and atmosphere science algorithms to suggest processing options.
Abstract
The MODIS cloud mask uses several cloud detection tests to indicate a level of confidence that the MEDIS is observing clear skies. It will be produced globally at single-pixel resolution; the algorithm uses as many as 14 of the MEDIS 36 spectral bands to maximize reliable cloud detection and to mitigate past difficulties experienced by sensors with coarser spatial resolution or fewer spectral bands. The MEDIS cloud mask is ancillary input to MEDIS land, ocean, and atmosphere science algorithms to suggest processing options. The MEDIS cloud mask algorithm will operate in near real time in a limited computer processing and storage facility with simple easy-to-follow algorithm paths. The MEDIS cloud mask algorithm identifies several conceptual domains according to surface type and solar illumination, including land, water, snow/ice, desert, and coast for both day and night. Once a pixel has been assigned to a particular domain (defining an algorithm path), a series of threshold tests attempts to detect the presence of clouds in the instrument field of view. Each cloud detection test returns a confidence level that the pixel is clear ranging in value from 1 (high) to zero (low). There are several types of tests, where detection of different cloud conditions relies on different tests. Tests capable of detecting similar cloud conditions are grouped together. While these groups are arranged so that independence between them is maximized, few, if any, spectral tests are completely independent. The minimum confidence from all tests within a group is taken to be representative of that group. These confidences indicate absence of particular cloud types. The product of all the group confidences is used to determine the confidence of finding clear-sky conditions. This paper outlines the MEDIS cloud masking algorithm. While no present sensor has all of the spectral bands necessary for testing the complete MEDIS cloud mask, initial validation of some of the individual cloud tests is presented using existing remote sensing data sets.

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Citations
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Journal ArticleDOI

Arctic cloud macrophysical characteristics from CloudSat and CALIPSO

TL;DR: In this article, the authors presented a new cloud macrophysical property characteristic analysis for the Arctic, including cloud occurrence fraction (COF), vertical distributions, and probability density functions (PDF) of cloud base and top heights.
Journal ArticleDOI

Development of a support vector machine based cloud detection method for MODIS with the adjustability to various conditions

TL;DR: An adjustment procedure is proposed, which quantitatively judges, whether an addition is actually effective for reduction of the frequency of incorrect results, and the cloud detection method incorporating the SVM is able to integrate practical adjustment procedures.
Journal ArticleDOI

A cloud detection algorithm-generating method for remote sensing data at visible to short-wave infrared wavelengths

TL;DR: In this article, a cloud detection algorithm-generating (CDAG) method was proposed for remote sensing data from visible to short-wave infrared (SWIR) bands with high spatial resolution.
Journal ArticleDOI

Seasonality of MODIS LST over Southern Italy and correlation with land cover, topography and solar radiation

TL;DR: In this paper, the influence of factors such as topography and the land cover on LST spatio-temporal variations was quantified and the relation between LST and the influential factors varies with the season during the year.
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Estimation of Daily Air Temperature Based on MODIS Land Surface Temperature Products over the Corn Belt in the US

TL;DR: The results show that using Ts-night for estimating Tmax could result in a higher accuracy than usingTs-day for a similar estimate, and the estimation of Tmax was improved by 0.19–1.93 °C for crops, deciduous forest and developed areas, respectively, when compared with using only Ts-day orTs-night data.
References
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Journal ArticleDOI

Development of methods for mapping global snow cover using moderate resolution imaging spectroradiometer data

TL;DR: The SNOMAP algorithm as discussed by the authors was developed to map global snow cover using Earth Observing System (EOS) Moderate Resolution Imaging Spectroradiometer (MODIS) data beginning at launch in 1998.
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Remote sensing of cloud, aerosol, and water vapor properties from the moderate resolution imaging spectrometer (MODIS)

TL;DR: The authors describe the status ofMODIS-N and its companion instrument MODIS-T (tilt), a tiltable cross-track scanning spectrometer with 32 uniformly spaced channels between 0.410 and 0.875 mu m, used for determining the total precipitable water vapor and atmospheric stability.
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An improved method for detecting clear sky and cloudy radiances from AVHRR data

TL;DR: In this article, the authors proposed a scheme to identify cloud-free and cloud-filled pixels (i.e. fields of view) from satellite radiance data, which consists of five daytime or five night-time tests applied to each individual pixel to determine whether that pixel is cloud free, partly cloudy or cloud filled.
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GEMI: a non-linear index to monitor global vegetation from satellites

TL;DR: A new vegetation index is proposed which has been designed specifically to reduce the relative effects of these undesirable atmospheric perturbations, while maintaining the information about the vegetation cover.
Journal ArticleDOI

Cloud Detection Using Satellite Measurements of Infrared and Visible Radiances for ISCCP

TL;DR: In this article, the cloud detection part of the International Satellite Cloud Climatology Project (ISCCP) analysis is described, and the detection algorithm is supported by global, multiyear surveys of the statistical behavior of satellite-measured infrared and visible radiances to determine those characteristics that differentiate cloudy and clear scenes and how these characteristics vary among climate regimes.
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