Abstract

All species of scorpions can inject venom, some of them even with the possibility of killing a human. Therefore, early detection and identification are essential to minimize scorpion stings. In this paper, we propose a novel automatic system for the detection and recognition of scorpions using computer vision and machine learning (ML) approaches. Two complementary image-processing techniques were used for the proposed detection method to accurately and reliably detect the presence of scorpions. The first is based on the fluorescent characteristics of scorpions when exposed to ultraviolet light, and the second on the shape features of the scorpions. Also, three models based on ML algorithms for the image recognition and classification of scorpions are compared. In particular, the three species of scorpions found in La Plata city (Argentina): Bothriurus bonariensis (of no sanitary importance), Tityus trivittatus, and Tityus confluence (both of sanitary importance) have been researched using a local binary-pattern histogram algorithm and deep neural networks with transfer learning (DNNs with TL) and data augmentation (DNNs with TL and DA) approaches. A confusion matrix and a receiver operating characteristic curve were used to evaluate the quality of these models. The results obtained show that the model of DNN with TL and DA is the most efficient at simultaneously differentiating between Tityus and Bothriurus (for health security) and between T. trivittatus and T. confluence (for biological research purposes).

Highlights

  • Scorpions belong to the order Scorpiones and are arthropod invertebrates that together with spiders, opiliones, pseudoscorpions, solifugae, amblypygi, mites, uropygiums, ricinulids, schizomida and palpigradi make up the group of arachnids [1]

  • A comparison is made of the results obtained by three machine learning (ML) models used to differentiate between two genera of scorpions: Bothriurus and Tityus, for sanitary purposes; and secondly, the recognition models proposed in this work are used to distinguish between two species within the genus Tityus, such as T. trivittatus and T. confluence, for biological research and development purposes

  • The confusion matrices obtained during the testing of all three models are shown in figures 9–11, where the vertical axes correspond to the true data and the horizontal axes correspond to the predictions of the models

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Summary

26 February 2021

Francisco L Giambelluca , Marcelo A Cappelletti1,2,3 , Jorge R Osio and Luis A Giambelluca. Original content from Keywords: data augmentation, local binary pattern, machine learning, scorpion image classification, transfer learning this work may be used under the terms of the Creative Commons. In the author(s) and the title of the work, journal this paper, we propose a novel automatic system for the detection and recognition of scorpions citation and DOI. Three models based on ML algorithms for the image recognition and classification of scorpions are compared. The three species of scorpions found in La Plata city (Argentina): Bothriurus bonariensis (of no sanitary importance), Tityus trivittatus, and Tityus confluence (both of sanitary importance) have been researched using a local binary-pattern histogram algorithm and deep neural networks with transfer learning (DNNs with TL) and data augmentation (DNNs with TL and DA) approaches. The results obtained show that the model of DNN with TL and DA is the most efficient at simultaneously differentiating between Tityus and Bothriurus (for health security) and between T. trivittatus and T. confluence (for biological research purposes)

Introduction
Related work
Proposed detection methodology
Recognition of scorpions using machine-learning techniques
Recognition and classification of two genera of scorpions
Method
Conclusions
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