Cloud Particles Images Features Extraction Based on LabVIEW

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In order to have a better understanding of cloud precipitation physics process, cloud particles images features extraction is needed. This paper puts forward a solution, which is based on LabVIEW platform and the NI Vision Development Module. LabVIEW and NI Vision reduce the development period and improve the efficiency of development. It can real-time process cloud particle images, display area, contour and the number of cloud particles. It also makes further statistical analysis and histogram representation of features. Test results show that: it can be used to test different types of cloud particles images, and has simple interface with good usability and reliability.

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2278-2282

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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