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Workflow Design Analysis for High Resolution Satellite Image Analysis

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arxiv 1905.09766 v2 pith:GVAEK2EA submitted 2019-05-23 cs.DC

Workflow Design Analysis for High Resolution Satellite Image Analysis

classification cs.DC
keywords designanalysisimageryhighsatelliteanalyzedatasetimage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Ecological sciences are using imagery from a variety of sources to monitor and survey populations and ecosystems. Very High Resolution (VHR) satellite imagery provide an effective dataset for large scale surveys. Convolutional Neural Networks have successfully been employed to analyze such imagery and detect large animals. As the datasets increase in volume, O(TB), and number of images, O(1k), utilizing High Performance Computing (HPC) resources becomes necessary. In this paper, we investigate a task-parallel data-driven workflows design to support imagery analysis pipelines with heterogeneous tasks on HPC. We analyze the capabilities of each design when processing a dataset of 3,000 VHR satellite images for a total of 4~TB. We experimentally model the execution time of the tasks of the image processing pipeline. We perform experiments to characterize the resource utilization, total time to completion, and overheads of each design. Based on the model, overhead and utilization analysis, we show which design approach to is best suited in scientific pipelines with similar characteristics.

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