Phytoplankton hotspot prediction with an unsupervised spatial community model. Kalmbach, A., Girdhar, Y., Sosik, H., M., & Dudek, G. In 2017 IEEE International Conference on Robotics and Automation (ICRA), pages 4906-4913, 5, 2017. IEEE.
Phytoplankton hotspot prediction with an unsupervised spatial community model [link]Website  doi  abstract   bibtex   
Many interesting natural phenomena are sparsely distributed and discrete. Locating the hotspots of such sparsely distributed phenomena is often difficult because their density gradient is likely to be very noisy. We present a novel approach to this search problem, where we model the co-occurrence relations between a robot's observations with a Bayesian nonparametric topic model. This approach makes it possible to produce a robust estimate of the spatial distribution of the target, even in the absence of direct target observations. We apply the proposed approach to the problem of finding the spatial locations of the hotspots of a specific phytoplankton taxon in the ocean. We use classified image data from Imaging FlowCytobot (IFCB), which automatically measures individual microscopic cells and colonies of cells. Given these individual taxon-specific observations, we learn a phytoplankton community model that characterizes the co-occurrence relations between taxa. We present experiments with simulated robot missions drawn from real observation data collected during a research cruise traversing the US Atlantic coast. Our results show that the proposed approach outperforms nearest neighbor and k-means based methods for predicting the spatial distribution of hotspots from in-situ observations.
@inproceedings{
 title = {Phytoplankton hotspot prediction with an unsupervised spatial community model},
 type = {inproceedings},
 year = {2017},
 pages = {4906-4913},
 websites = {https://arxiv.org/abs/1703.07309,http://ieeexplore.ieee.org/document/7989568/},
 month = {5},
 publisher = {IEEE},
 id = {c93e5127-c339-33fc-b200-48c3abcab907},
 created = {2016-09-12T15:50:42.000Z},
 file_attached = {true},
 profile_id = {2331788d-b144-3e67-ab8c-4abd7ab569c5},
 last_modified = {2019-12-09T12:48:30.406Z},
 read = {true},
 starred = {false},
 authored = {true},
 confirmed = {true},
 hidden = {false},
 citation_key = {Kalmbach2017},
 folder_uuids = {a08eb1a8-df79-49b6-a3fe-c57f8c286952,9fe02bf3-6f9f-4e86-a6e6-c0190f2a6db9},
 private_publication = {false},
 abstract = {Many interesting natural phenomena are sparsely distributed and discrete. Locating the hotspots of such sparsely distributed phenomena is often difficult because their density gradient is likely to be very noisy. We present a novel approach to this search problem, where we model the co-occurrence relations between a robot's observations with a Bayesian nonparametric topic model. This approach makes it possible to produce a robust estimate of the spatial distribution of the target, even in the absence of direct target observations. We apply the proposed approach to the problem of finding the spatial locations of the hotspots of a specific phytoplankton taxon in the ocean. We use classified image data from Imaging FlowCytobot (IFCB), which automatically measures individual microscopic cells and colonies of cells. Given these individual taxon-specific observations, we learn a phytoplankton community model that characterizes the co-occurrence relations between taxa. We present experiments with simulated robot missions drawn from real observation data collected during a research cruise traversing the US Atlantic coast. Our results show that the proposed approach outperforms nearest neighbor and k-means based methods for predicting the spatial distribution of hotspots from in-situ observations.},
 bibtype = {inproceedings},
 author = {Kalmbach, Arnold and Girdhar, Yogesh and Sosik, Heidi M. and Dudek, Gregory},
 doi = {10.1109/ICRA.2017.7989568},
 booktitle = {2017 IEEE International Conference on Robotics and Automation (ICRA)}
}

Downloads: 0