On the use of uncertainty in classifying Aedes Albopictus mosquitoes
- URL: http://arxiv.org/abs/2110.15912v1
- Date: Fri, 29 Oct 2021 16:58:25 GMT
- Title: On the use of uncertainty in classifying Aedes Albopictus mosquitoes
- Authors: Gereziher Adhane and Mohammad Mahdi Dehshibi and David Masip
- Abstract summary: Convolutional neural networks (CNNs) have been used by several studies to recognise mosquitoes in images.
This paper proposes using the Monte Carlo Dropout method to estimate the uncertainty scores in order to rank the classified samples.
- Score: 1.6758573326215689
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The re-emergence of mosquito-borne diseases (MBDs), which kill hundreds of
thousands of people each year, has been attributed to increased human
population, migration, and environmental changes. Convolutional neural networks
(CNNs) have been used by several studies to recognise mosquitoes in images
provided by projects such as Mosquito Alert to assist entomologists in
identifying, monitoring, and managing MBD. Nonetheless, utilising CNNs to
automatically label input samples could involve incorrect predictions, which
may mislead future epidemiological studies. Furthermore, CNNs require large
numbers of manually annotated data. In order to address the mentioned issues,
this paper proposes using the Monte Carlo Dropout method to estimate the
uncertainty scores in order to rank the classified samples to reduce the need
for human supervision in recognising Aedes albopictus mosquitoes. The estimated
uncertainty was also used in an active learning framework, where just a portion
of the data from large training sets was manually labelled. The experimental
results show that the proposed classification method with rejection outperforms
the competing methods by improving overall performance and reducing
entomologist annotation workload. We also provide explainable visualisations of
the different regions that contribute to a set of samples' uncertainty
assessment.
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