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Migrating Monarch Butterfly Localization Using Multi-Sensor Fusion Neural Networks

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arxiv 1912.06907 v1 pith:3BEG5LVY submitted 2019-12-14 eess.SP cs.LG

Migrating Monarch Butterfly Localization Using Multi-Sensor Fusion Neural Networks

classification eess.SP cs.LG
keywords butterflylocalizationalgorithmmigrationmonarchsensordatadegree
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Details of Monarch butterfly migration from the U.S. to Mexico remain a mystery due to lack of a proper localization technology to accurately localize and track butterfly migration. In this paper, we propose a deep learning based butterfly localization algorithm that can estimate a butterfly's daily location by analyzing a light and temperature sensor data log continuously obtained from an ultra-low power, mm-scale sensor attached to the butterfly. To train and test the proposed neural network based multi-sensor fusion localization algorithm, we collected over 1500 days of real world sensor measurement data with 82 volunteers all over the U.S. The proposed algorithm exhibits a mean absolute error of <1.5 degree in latitude and <0.5 degree in longitude Earth coordinate, satisfying our target goal for the Monarch butterfly migration study.

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