A framework based on deep neural networks to extract anatomy of mosquitoes from images

Author:

Minakshi Mona,Bharti Pratool,Bhuiyan Tanvir,Kariev Sherzod,Chellappan Sriram

Abstract

AbstractWe design a framework based on Mask Region-based Convolutional Neural Network to automatically detect and separately extract anatomical components of mosquitoes-thorax, wings, abdomen and legs from images. Our training dataset consisted of 1500 smartphone images of nine mosquito species trapped in Florida. In the proposed technique, the first step is to detect anatomical components within a mosquito image. Then, we localize and classify the extracted anatomical components, while simultaneously adding a branch in the neural network architecture to segment pixels containing only the anatomical components. Evaluation results are favorable. To evaluate generality, we test our architecture trained only with mosquito images on bumblebee images. We again reveal favorable results, particularly in extracting wings. Our techniques in this paper have practical applications in public health, taxonomy and citizen-science efforts.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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