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Image Labeler: Label Earth Science Images for Machine LearningThe application of machine learning for image-based classification of earth science phenomena, such as hurricanes, is relatively new. While extremely useful, the techniques used for image-based phenomena classification require storing and managing an abundant supply of labeled images in order to produce meaningful results. Existing methods for dataset management and labeling include maintaining categorized folders on a local machine, a process that can be cumbersome and not scalable. Image Labeler is a fast and scalable web-based tool that facilitates the rapid development of image-based earth science phenomena datasets, in order to aid deep learning application and automated image classification/detection. Image Labeler is built with modern web technologies to maximize the scalability and availability of the platform. It has a user-friendly interface that allows tagging multiple images relatively quickly. Essentially, Image Labeler improves upon existing techniques by providing researchers with a shareable source of tagged earth science images for all their machine learning needs. Here, we demonstrate Image Labeler’s current image extraction and labeling capabilities including supported data sources, spatiotemporal subsetting capabilities, individual project management and team collaboration for large scale projects.
Document ID
20190033505
Acquisition Source
Marshall Space Flight Center
Document Type
Presentation
Authors
Acharya, Ashish
(Alabama Univ. Huntsville, AL, United States)
Freitag, Brian ORCID
(Alabama Univ. Huntsville, AL, United States)
Gurung, Iksha
(Alabama Univ. Huntsville, AL, United States)
Maskey, Manil ORCID
(NASA Marshall Space Flight Center Huntsville, AL, United States)
Ramachandran, Rahul ORCID
(NASA Marshall Space Flight Center Huntsville, AL, United States)
Kaulfus, Aaron
(Alabama Univ. Huntsville, AL, United States)
Date Acquired
December 12, 2019
Publication Date
December 9, 2019
Subject Category
Computer Programming And Software
Report/Patent Number
MSFC-E-DAA-TN76058
Report Number: MSFC-E-DAA-TN76058
Meeting Information
Meeting: American Geophysical Union (AGU) Fall Meeting 2019
Location: San Francisco, CA
Country: United States
Start Date: December 9, 2019
End Date: December 13, 2019
Sponsors: American Geophysical Union (AGU)
Funding Number(s)
CONTRACT_GRANT: NNM11AA01A
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
Single Expert
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