One-Shot Learning with Triplet Loss for Vegetation Classification Tasks
- URL: http://arxiv.org/abs/2012.07403v2
- Date: Fri, 15 Jan 2021 19:34:55 GMT
- Title: One-Shot Learning with Triplet Loss for Vegetation Classification Tasks
- Authors: Alexander Uzhinskiy (1), Gennady Ososkov (1), Pavel Goncharov (1),
Andrey Nechaevskiy (1), Artem Smetanin (2) ((1) Joint Institute for Nuclear
Research, Dubna, Moscow region, Russia, (2) ITMO University, Saint
Petersburg, Russia)
- Abstract summary: Triplet loss function is one of the options that can significantly improve the accuracy of the One-shot Learning tasks.
Starting from 2015, many projects use Siamese networks and this kind of loss for face recognition and object classification.
- Score: 45.82374977939355
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Triplet loss function is one of the options that can significantly improve
the accuracy of the One-shot Learning tasks. Starting from 2015, many projects
use Siamese networks and this kind of loss for face recognition and object
classification. In our research, we focused on two tasks related to vegetation.
The first one is plant disease detection on 25 classes of five crops (grape,
cotton, wheat, cucumbers, and corn). This task is motivated because harvest
losses due to diseases is a serious problem for both large farming structures
and rural families. The second task is the identification of moss species (5
classes). Mosses are natural bioaccumulators of pollutants; therefore, they are
used in environmental monitoring programs. The identification of moss species
is an important step in the sample preprocessing. In both tasks, we used
self-collected image databases. We tried several deep learning architectures
and approaches. Our Siamese network architecture with a triplet loss function
and MobileNetV2 as a base network showed the most impressive results in both
above-mentioned tasks. The average accuracy for plant disease detection
amounted to over 97.8% and 97.6% for moss species classification.
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