CVLGOct 29, 2021

A deep convolutional neural network for classification of Aedes albopictus mosquitoes

arXiv:2110.15956v133 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for scalable classification in citizen science projects to control mosquito-borne diseases, but it is incremental as it applies existing methods to a specific dataset.

The study tackled the problem of automating mosquito species classification from images to aid disease monitoring, achieving a testing accuracy of 94% using deep convolutional neural networks.

Monitoring the spread of disease-carrying mosquitoes is a first and necessary step to control severe diseases such as dengue, chikungunya, Zika or yellow fever. Previous citizen science projects have been able to obtain large image datasets with linked geo-tracking information. As the number of international collaborators grows, the manual annotation by expert entomologists of the large amount of data gathered by these users becomes too time demanding and unscalable, posing a strong need for automated classification of mosquito species from images. We introduce the application of two Deep Convolutional Neural Networks in a comparative study to automate this classification task. We use the transfer learning principle to train two state-of-the-art architectures on the data provided by the Mosquito Alert project, obtaining testing accuracy of 94%. In addition, we applied explainable models based on the Grad-CAM algorithm to visualise the most discriminant regions of the classified images, which coincide with the white band stripes located at the legs, abdomen, and thorax of mosquitoes of the Aedes albopictus species. The model allows us to further analyse the classification errors. Visual Grad-CAM models show that they are linked to poor acquisition conditions and strong image occlusions.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes