Boosting rare benthic macroinvertebrates taxa identification with
one-class classification
- URL: http://arxiv.org/abs/2002.10420v1
- Date: Wed, 12 Feb 2020 09:46:24 GMT
- Title: Boosting rare benthic macroinvertebrates taxa identification with
one-class classification
- Authors: Fahad Sohrab, Jenni Raitoharju
- Abstract summary: Taxa identification currently requires tedious manual expert work and cannot be scaled-up efficiently.
Deep convolutional neural networks (CNNs) provide a viable way to significantly increase the biomonitoring volumes.
One-class classification models are traditionally trained with much fewer samples and they can provide a mechanism to indicate samples potentially belonging to the rare classes for human inspection.
- Score: 6.65010897396803
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Insect monitoring is crucial for understanding the consequences of rapid
ecological changes, but taxa identification currently requires tedious manual
expert work and cannot be scaled-up efficiently. Deep convolutional neural
networks (CNNs), provide a viable way to significantly increase the
biomonitoring volumes. However, taxa abundances are typically very imbalanced
and the amounts of training images for the rarest classes are simply too low
for deep CNNs. As a result, the samples from the rare classes are often
completely missed, while detecting them has biological importance. In this
paper, we propose combining the trained deep CNN with one-class classifiers to
improve the rare species identification. One-class classification models are
traditionally trained with much fewer samples and they can provide a mechanism
to indicate samples potentially belonging to the rare classes for human
inspection. Our experiments confirm that the proposed approach may indeed
support moving towards partial automation of the taxa identification task.
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