Changes in insect biomass, abundance, and diversity are challenging to track at sufficient spatial, temporal, and taxonomic resolution. Camera traps can capture habitus images of ground-dwelling insects. However, currently sampling involves manually detecting and identifying specimens. Here, we test whether a convolutional neural network (CNN) can classify habitus images of ground beetles to species level, and estimate how correct classification relates to body size, number of species inside genera, and species identity.We created an image database of 65,841 museum specimens comprising 361 carabid beetle species from the British Isles and fine-tuned the parameters of a pretrained CNN from a training dataset. By summing up class confidence values within genus, tribe, and subfamily and setting a confidence threshold, we trade-off between classification accuracy, precision, and recall and taxonomic resolution.The CNN classified 51.9% of 19,164 test images correctly to species level and 74.9% to genus level. Average classification recall on species level was 50.7%. Applying a threshold of 0.5 increased the average classification recall to 74.6% at the expense of taxonomic resolution. Higher top value from the output layer and larger sized species were more often classified correctly, as were images of species in genera with few species.Fine-tuning enabled us to classify images with a high mean recall for the whole test dataset to species or higher taxonomic levels, however, with high variability. This indicates that some species are more difficult to identify because of properties such as their body size or the number of related species.Together, species-level image classification of arthropods from museum collections and ecological monitoring can substantially increase the amount of occurrence data that can feasibly be collected. These tools thus provide new opportunities in understanding and predicting ecological responses to environmental change.
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http://dx.doi.org/10.1002/ece3.5921 | DOI Listing |
J Minim Invasive Gynecol
December 2024
Department of Urogynecology, Ascension Illinois Saint Francis Hospital, Evanston, IL.
Objective: To investigate the positioning of deep epigastric vessels in obese patients to determine the need to redefine laparoscopic port placement 'safe zones' based on body habitus.
Design: Retrospective case series.
Setting: University-affiliated 500-bed hospital.
J Clin Ultrasound
December 2024
NSCB Government Medical College, Jabalpur, India.
Zookeys
December 2024
College of Plant Protection, Southwest University, Chongqing 400715, China Southwest University Chongqing China.
The male genitalia characters of four species, Walker, 1859, Yamanaka, 1998, Walker, 1859 and Singh et Ahmad, 2022, placed in the genus Moore, 1888 before the present study, do not conform to the diagnosis of . A new genus, , is established for these four species, and two new species, and are described based on their external morphology and genitalia characters. is designated as the type species of the new genus.
View Article and Find Full Text PDFTwo new species of the Torunotum Hosseini & Cassis, 2019-T. hirsutum sp. nov.
View Article and Find Full Text PDFZootaxa
May 2024
Zoological Survey of India; M- Block; New Alipore; Kolkata; West Bengal 700053; India.
Cerafilum gen. nov. is described for Cerafilum ochlandrae sp.
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