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  5. Classifying forensically important flies using deep learning to support pathologists and rescue teams during forensic investigations

Classifying forensically important flies using deep learning to support pathologists and rescue teams during forensic investigations

Publication date
2024-12-05
Document type
Forschungsartikel
Author
Gohe, Anna Katharina
Kottek, Marius Johann
Büttner, Ricardo  
Penava, Pascal  
Organisational unit
Hybrid Intelligence  
DOI
10.1371/journal.pone.0314533
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/21958
Publisher
PLOS
Series or journal
PLOS ONE
ISSN
1932-6203
Periodical volume
19
Periodical issue
12
Article ID
e0314533
Peer-reviewed
✅
Part of the university bibliography
✅
Additional Information
Language
English
Abstract
Forensic entomology can help estimate the postmortem interval in criminal investigations. In particular, forensically important fly species that can be found on a body and in its environment at various times after death provide valuable information. However, the current method for identifying fly species is labor intensive, expensive, and may become more serious in view of a shortage of specialists. In this paper, we propose the use of computer vision and deep learning to classify adult flies according to three different families, Calliphoridae, Sarcophagidae, Rhiniidae, and their corresponding genera Chrysomya, Lucilia, Sarcophaga, Rhiniinae, and Stomorhina, which can lead to efficient and accurate estimation of time of death, for example, with the use of camera-equipped drones. The development of such a deep learning model for adult flies may be particularly useful in crisis situations, such as natural disasters and wars, when people disappear. In these cases drones can be used for searching large areas. In this study, two models were evaluated using transfer learning with MobileNetV3-Large and VGG19. Both models achieved a very high accuracy of 99.39% and 99.79%. In terms of inference time, the MobileNetV3-Large model was faster with an average time per step of 1.036 seconds than the VGG19 model, which took 2.066 seconds per step. Overall, the results highlight the potential of deep learning models for the classification of fly species in forensic entomology and search and rescue operations.
Description
This is an open access article distributed under the terms of the Creative Commons Attribution License CC BY 4.0 ( https://creativecommons.org/licenses/by/4.0/).
Cite as
Gohe, A. K.; Kottek, M. J.; Buettner, R.; Penava, P.: Classifying forensically important flies using deep learning to support pathologists and rescue teams during forensic investigations. PLOS ONE, 19(12):e0314533, 2024.
Version
Published version
Access right on openHSU
Metadata only access
Open Access Funding
HSU publication fund

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