Literature DB >> 33828196

Assessing the potential for deep learning and computer vision to identify bumble bee species from images.

Brian J Spiesman1, Claudio Gratton2, Richard G Hatfield3, William H Hsu4, Sarina Jepsen3, Brian McCornack5, Krushi Patel6, Guanghui Wang6,7.   

Abstract

Pollinators are undergoing a global decline. Although vital to pollinator conservation and ecological research, species-level identification is expensive, time consuming, and requires specialized taxonomic training. However, deep learning and computer vision are providing ways to open this methodological bottleneck through automated identification from images. Focusing on bumble bees, we compare four convolutional neural network classification models to evaluate prediction speed, accuracy, and the potential of this technology for automated bee identification. We gathered over 89,000 images of bumble bees, representing 36 species in North America, to train the ResNet, Wide ResNet, InceptionV3, and MnasNet models. Among these models, InceptionV3 presented a good balance of accuracy (91.6%) and average speed (3.34 ms). Species-level error rates were generally smaller for species represented by more training images. However, error rates also depended on the level of morphological variability among individuals within a species and similarity to other species. Continued development of this technology for automatic species identification and monitoring has the potential to be transformative for the fields of ecology and conservation. To this end, we present BeeMachine, a web application that allows anyone to use our classification model to identify bumble bees in their own images.

Entities:  

Year:  2021        PMID: 33828196     DOI: 10.1038/s41598-021-87210-1

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  6 in total

1.  Multi-Information Model for Large-Flowered Chrysanthemum Cultivar Recognition and Classification.

Authors:  Jue Wang; Yuankai Tian; Ruisong Zhang; Zhilan Liu; Ye Tian; Silan Dai
Journal:  Front Plant Sci       Date:  2022-06-06       Impact factor: 6.627

2.  Assessment of deep convolutional neural network models for species identification of forensically-important fly maggots based on images of posterior spiracles.

Authors:  Darlin Apasrawirote; Pharinya Boonchai; Paisarn Muneesawang; Wannacha Nakhonkam; Nophawan Bunchu
Journal:  Sci Rep       Date:  2022-03-19       Impact factor: 4.379

3.  A Computer Vision-Based Approach for Tick Identification Using Deep Learning Models.

Authors:  Chu-Yuan Luo; Patrick Pearson; Guang Xu; Stephen M Rich
Journal:  Insects       Date:  2022-01-22       Impact factor: 2.769

4.  BacDive in 2022: the knowledge base for standardized bacterial and archaeal data.

Authors:  Lorenz Christian Reimer; Joaquim Sardà Carbasse; Julia Koblitz; Christian Ebeling; Adam Podstawka; Jörg Overmann
Journal:  Nucleic Acids Res       Date:  2022-01-07       Impact factor: 16.971

5.  Integrating Global Citizen Science Platforms to Enable Next-Generation Surveillance of Invasive and Vector Mosquitoes.

Authors:  Ryan M Carney; Connor Mapes; Russanne D Low; Alex Long; Anne Bowser; David Durieux; Karlene Rivera; Berj Dekramanjian; Frederic Bartumeus; Daniel Guerrero; Carrie E Seltzer; Farhat Azam; Sriram Chellappan; John R B Palmer
Journal:  Insects       Date:  2022-07-27       Impact factor: 3.139

6.  Artificial intelligence versus natural selection: Using computer vision techniques to classify bees and bee mimics.

Authors:  Tanvir Bhuiyan; Ryan M Carney; Sriram Chellappan
Journal:  iScience       Date:  2022-08-13
  6 in total

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