Automatic detection of fish scale circuli using deep learning

被引:0
|
作者
Hanson, Nora N. [1 ]
Ounsley, James P. [1 ]
Henry, Jason [1 ]
Terzic, Kasim [2 ]
Caneco, Bruno [1 ]
机构
[1] Scottish Govt, Freshwater Fisheries Lab, Marine Directorate, Pitlochry PH16 5LB, Scotland
[2] Univ St Andrews, Sch Comp Sci, St Andrews KY16 9SX, Scotland
来源
BIOLOGY METHODS & PROTOCOLS | 2024年 / 9卷 / 01期
关键词
scale; Convolutional Neural Network; circuli; growth; deep learning; salmon; GROWTH; SALMON;
D O I
10.1093/biomethods/bpae056
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Teleost fish scales form distinct growth rings deposited in proportion to somatic growth in length, and are routinely used in fish ageing and growth analyses. Extraction of incremental growth data from scales is labour intensive. We present a fully automated method to retrieve this data from fish scale images using Convolutional Neural Networks (CNNs). Our pipeline of two CNNs automatically detects the centre of the scale and individual growth rings (circuli) along multiple radial transect emanating from the centre. The focus detector was trained on 725 scale images and achieved an average precision of 99%; the circuli detector was trained on 40 678 circuli annotations and achieved an average precision of 95.1%. Circuli detections were made with less confidence in the freshwater zone of the scale image where the growth bands are most narrowly spaced. However, the performance of the circuli detector was similar to that of another human labeller, highlighting the inherent ambiguity of the labelling process. The system predicts the location of scale growth rings rapidly and with high accuracy, enabling the calculation of spacings and thereby growth inferences from salmon scales. The success of our method suggests its potential for expansion to other species.
引用
收藏
页数:7
相关论文
共 50 条
  • [31] Automatic Blossom Detection in Apple Trees using Deep Learning
    Bhattarai, Uddhav
    Bhusal, Santosh
    Majeed, Yaqoob
    Karkee, Manoj
    IFAC PAPERSONLINE, 2020, 53 (02): : 15810 - 15815
  • [32] Automatic oral cancer detection using deep learning techniques
    Sundari, T. Shanmuga
    Maheswari, M.
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2025, 106
  • [33] Automatic Eye Disease Detection Using Machine Learning and Deep Learning Models
    Badah, Nouf
    Algefes, Amal
    AlArjani, Ashwaq
    Mokni, Raouia
    PERVASIVE COMPUTING AND SOCIAL NETWORKING, ICPCSN 2022, 2023, 475 : 773 - 787
  • [34] Deep Learning for Automatic Pneumonia Detection
    Gabruseva, Tatiana
    Poplavskiy, Dmytro
    Kalinin, Alexandr
    2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS (CVPRW 2020), 2020, : 1436 - 1443
  • [35] Deep Learning on Automatic Fall Detection
    Monteiro, Sara
    Leite, Argentina
    Solteiro Pires, E. J.
    2021 IEEE LATIN AMERICAN CONFERENCE ON COMPUTATIONAL INTELLIGENCE (LA-CCI), 2021,
  • [36] A Hybrid Deep Learning Approach for Automatic Fish Classification
    Chhabra, Harshit Singh
    Srivastava, Akshay Kumar
    Nijhawan, Rahul
    PROCEEDINGS OF ICETIT 2019: EMERGING TRENDS IN INFORMATION TECHNOLOGY, 2020, 605 : 427 - 436
  • [37] Automatic guava disease detection using different deep learning approaches
    Tewari, Vaibhav
    Azeem, Noamaan Abdul
    Sharma, Sanjeev
    MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (04) : 9973 - 9996
  • [38] Automatic detection of icing wind turbine using deep learning method
    Haciefendioglu, Kemal
    Basaga, Hasan Basri
    Ayas, Selen
    Karimi, Mohammad Tordi
    WIND AND STRUCTURES, 2022, 34 (06) : 511 - 523
  • [39] Automatic landslide detection and visualization by using deep ensemble learning method
    Hacıefendioğlu K.
    Varol N.
    Toğan V.
    Bahadır Ü.
    Kartal M.E.
    Neural Computing and Applications, 2024, 36 (18) : 10761 - 10776
  • [40] Automatic hyoid bone detection in fluoroscopic images using deep learning
    Zhenwei Zhang
    James L. Coyle
    Ervin Sejdić
    Scientific Reports, 8