Nothing Special   »   [go: up one dir, main page]

skip to main content
10.1145/3331453.3361285acmotherconferencesArticle/Chapter ViewAbstractPublication PagescsaeConference Proceedingsconference-collections
research-article

An Exploration of Modal Pig-body Phenotype Detection Based on Hybrid Patterns

Published: 22 October 2019 Publication History

Abstract

To explore the phenotypic model of human life activities and deeply analyze changes in life phenotype, phenotypic analysis of modal animals plays a great important part in the study of human life. However, automation and intelligence are still a challenge problem in practice. Due to high adaptability to the complex environments, computer vision technology can effectively improve the automation and intelligence performance in phenotypic analysis system. In this paper, to effectively apply computer vision technology in the field of phenotypic analysis, we systematically summarize the research progress of modal pig-body phenotype detection in the computer vision technology based on three kinds of pattern, namely, (1) visible pattern; (2) thermal infrared pattern; (3) depth pattern. Based on further analysis of methods, we carry out comprehensive study for exploring pig-body phenotype detection by solving multiple problems.

References

[1]
Li M, Zhao L, Page-Mccaw P S, et al (2016). Zebrafish Genome Engineering Using the CRISPR-Cas9 System[J]. Nature Protocols, 32(12), 815.
[2]
Howe K, Clark M D, Torroja C F, et al (2013). The Zebrafish Reference Genome Sequence and Its Relationship to the Human Genome[J]. Nature, 496(7446), 498--503.
[3]
Till J E, Mcculloch E A (2011). A Direct Measurement of the Radiation Sensitivity of Normal Mouse Bone Marrow Cells[J]. Radiation Research, 175(2), 145--9.
[4]
Remy S, Tesson L, Menoret S, et al (2014). Efficient Gene Targeting by Homology Directed Repair in Rat Zygotes using TALE Nucleases[J]. Genome Research, 24(8), 1371--1383.
[5]
Zhu X, Li X, Zhang S, et al (2017). Robust Joint Graph Sparse Coding for Unsupervised Spectral Feature Selection[J]. IEEE Transactions on Neural Networks & Learning Systems, 28(6), 1263--1275.
[6]
Zhu X, Suk H I, Wang L, et al (2015). A novel relational regularization feature selection method for joint regression and classification in AD diagnosis[J]. Medical Image Analysis, 75(6), 570--577.
[7]
Zhu X, Suk H I, Wang L, et al (2015). A novel relational regularization feature selection method for joint regression and classification in AD diagnosis[J]. Medical Image Analysis, 75(6), 570--577.
[8]
Zhu X, Zhang L, Huang Z (2014). A Sparse Embedding and Least Variance Encoding Approach to Hashing[J]. IEEE Transactions on Image Processing A Publication of the IEEE Signal Processing Society, 23(9), 3737.
[9]
Zhu X, Zhang L, Huang Z (2014). A Sparse Embedding and Least Variance Encoding Approach to Hashing[J]. IEEE Transactions on Image Processing A Publication of the IEEE Signal Processing Society, 23(9), 3737.
[10]
Čítek J, Stupka R, Šprysl, M, et al (2014). The Analysis of the Body Composition Changes during Growth in Pigs using the Visual Image Analysis[J]. Journal of Central European Agriculture, 15(4), 22--30.
[11]
Kashiha M, Bahr C, Ott S, et al (2014). Automatic Weight Estimation of Individual Pigs using Image Analysis[J]. Computers & Electronics in Agriculture, 107(3), 38--44.
[12]
Zhu W X, Chen J L, Guo Y Z (2014). Individual Identification Method for Group-Housed Pigs Based on Optimal Feature Extraction[J]. Applied Mechanics & Materials, 614, 436--439.
[13]
Shen G, Luo Z (2011). On the Research of Pig Individual Identification and Automatic Weight Collecting System[C]// International Conference on Digital Manufacturing & Automation. IEEE, 806--808.
[14]
Zhang K, Wang C G, Liu T, et al (2017). Study on Body Weight of Fattening Pigs Based on Computer Vision Technology[J]. Journal of Agricultural Mechanization Research, 39(5), 32--36.
[15]
Chen J J, Peng Y K (2012). Monitoring System for Livestock Growth Based on Machine Vision Technology[J]. Journal of Food Safety and Quality, 3(6), 600--602.
[16]
Liu T H (2014). Study of Pig's Body Size Parameter Extraction Algorithm Optimization and Three-dimensional Reconstruction Based-on Binocular Stereo Vision[D]. China Agricultural University.
[17]
Cochran D, Gelb A, Wang Y (2013). Edge Detection from Truncated Fourier Data using Spectral Mollifiers[J]. Advances in Computational Mathematics, 38(4), 737--762.
[18]
Martinez A, Gelb A, Gutierrez A (2014). Edge Detection from Non-Uniform Fourier Data Using the Convolutional Gridding Algorithm[J]. Journal of Scientific Computing, 61(3), 490--512.
[19]
Stefan W, Viswanathan A, Gelb A, et al (2012). Sparsity Enforcing Edge Detection Method for Blurred and Noisy Fourier data[J]. Journal of Scientific Computing, 50(3), 536--556.
[20]
Chen H, Zheng Y, Park J H, et al (2016). Iterative Multi-domain Regularized Deep Learning for Anatomical Structure Detection and Segmentation from Ultrasound Images[C]// International Conference on Medical Image Computing and Computer-Assisted Intervention. Springer, Cham, 487--495.
[21]
Horn M, Berthold M R (2013). Learning Precise Local Boundaries in Images from Human Tracings[C]// International Conference on Image Analysis and Processing. Springer Berlin Heidelberg, 131--140.
[22]
Zhou S K, Zhang J, Zheng Y (2012). Discriminative Learning for Anatomical Structure Detection and Segmentation[M]// Ensemble Machine Learning. Springer US, 273--306.
[23]
Zhang C, Liu F, Kong W W, et al (2013). Fast Identification of Watermelon Seed Variety using near Infrared Hyperspectral Imaging Technology[J]. Transactions of the Chinese Society of Agricultural Engineering, 29(20), 270--277.
[24]
Dong G, Guo J, Wang C, et al (2015). The Classification of Wheat Varieties Based on Near Infrared Hyperspectral Imaging and Information Fusion[J]. Spectroscopy and Spectral Analysis, 35(12), 3369--3374.
[25]
Dong G, Guo J, Wang C, et al (2015). The Classification of Wheat Varieties Based on Near Infrared Hyperspectral Imaging and Information Fusion[J]. Spectroscopy and Spectral Analysis, 35(12), 3369--3374.
[26]
Wu X H, Huang S C, Xiao K, et al (2013). Application and Development of Infrared Detection Technology in Missile Defense System[J]. Journal of cruise missile, (5), 44--49.
[27]
Sykes D J, Couvillion J S, Cromiak A, et al (2012). The Use of Digital Infrared Thermal Imaging to Detect Estrus in Gilts.[J]. Theriogenology, 78(1), 147--152.
[28]
Brown-Brandl T M, Eigenberg R A, Purswell J L (2013). Using Thermal Imaging as A Method of Investigating Thermal Thresholds in Finishing Pigs[J]. Biosystems Engineering, 114(3), 327--333.
[29]
Kammersgaard T S, Malmkvist J, Pedersen L J (2013). Infrared Thermography-a Non-invasive Tool to Evaluate Thermal Status of Neonatal Pigs Based on Surface Temperature. [J]. Animal An International Journal of Animal Bioscience, 7(12), 2026--2034.
[30]
Caldara F R, Dos Santos L S, Machado S T, et al (2014). Piglets' Surface Temperature Change at Different Weights at Birth[J]. Asian-Australasian journal of animal sciences, 27(3), 431--438.
[31]
Ac P D D, Sánchez-Cordón P J, Pedrera M, et al (2013). The use of infrared thermography as a non-invasive method for fever detection in sheep infected with bluetongue virus.[J]. Veterinary Journal, 198(1), 182--186.
[32]
Talukder S, Gabai G, Celi P (2015). The Use of Digital Infrared Thermography and Measurement of Oxidative Stress Biomarkers as Tools to Diagnose Foot Lesions in Sheep[J]. Small Ruminant Research, 127, 80--85.
[33]
Stokes J E, Leach K A, Main D C, et al (2012). An investigation into the use of infrared thermography (IRT) as a rapid diagnostic tool for foot lesions in dairy cattle[J]. Veterinary Journal, 193(3), 674--678.
[34]
Alsaaod M, Büscher W (2012). Detection of hoof lesions using digital infrared thermography in dairy cows[J]. Journal of Dairy Science, 95(2), 735--742.
[35]
Alsaaod M, Syring C, Dietrich J, et al (2014). A field trial of infrared thermography as a non-invasive diagnostic tool for early detection of digital dermatitis in dairy cows.[J]. Veterinary Journal, 199(2), 281--285.
[36]
Heyde U, Geidel S (2014). Investigations of infrared thermography and its application on dairy cows[J]. Archiv Für Lebensmittelhygiene.
[37]
Lima V D, Piles M, Rafel O, et al (2013). Use of infrared thermography to assess the influence of high environmental temperature on rabbits[J]. Research in Veterinary Science, 95(2), 802--810.
[38]
Lima V D, Piles M, Rafel O, et al (2013). Use of infrared thermography to assess the influence of high environmental temperature on rabbits[J]. Research in Veterinary Science, 95(2), 802--810.
[39]
Westermann S, Buchner H H, Schramel J P, et al (2013). Effects of infrared camera angle and distance on measurement and reproducibility of thermographically determined temperatures of the distolateral aspects of the forelimbs in horses[J]. J Am Vet Med Assoc, 242(3), 388--395.
[40]
Dai F, Cogi N H, Heinzl E U L, et al (2014). Validation of a fear test in sport horses using infrared thermography[J]. Journal of Veterinary Behavior Clinical Applications & Research, 10(2),128--136.
[41]
Stajnko D, Brus M, Hocevar M (2008). Estimation of bull live weight through thermographically measured body dimensions[J]. Computers & Electronics in Agriculture, 61(2), 233--240.
[42]
Kawasue K, Win K D, Yoshida K, et al (2017). Black cattle body shape and temperature measurement using thermography and KINECT sensor[J]. Artificial Life & Robotics, (3), 1--7.
[43]
Liu B, Zhu W X, Yang J J, et al (2014). Extracting of Pig Gait Frequency Feature Based on Depth Image and Pig Skeleton Endpoints Analysis[J]. Transactions of the Chinese Society of Agricultural Engineering, 30(10), 131--137.
[44]
Peng L, Zhang Y, Zhou H, et al (2017). A unified model for improving depth accuracy in kinect sensor[C]// IEEE International Conference on Multimedia and Expo. IEEE Computer Society, 223--228.
[45]
Peng L, Zhang Y, Zhou H, et al (2017). A unified model for improving depth accuracy in kinect sensor[C]// IEEE International Conference on Multimedia and Expo. IEEE Computer Society, 223--228.
[46]
Zhang S, Wang C, Chan S C (2015). A New High Resolution Depth Map Estimation System Using Stereo Vision and Kinect Depth Sensing[J]. Journal of Signal Processing Systems, 79(1), 19--31.

Index Terms

  1. An Exploration of Modal Pig-body Phenotype Detection Based on Hybrid Patterns

    Recommendations

    Comments

    Please enable JavaScript to view thecomments powered by Disqus.

    Information & Contributors

    Information

    Published In

    cover image ACM Other conferences
    CSAE '19: Proceedings of the 3rd International Conference on Computer Science and Application Engineering
    October 2019
    942 pages
    ISBN:9781450362948
    DOI:10.1145/3331453
    Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than the author(s) must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

    Publisher

    Association for Computing Machinery

    New York, NY, United States

    Publication History

    Published: 22 October 2019

    Permissions

    Request permissions for this article.

    Check for updates

    Author Tags

    1. Computer vision technology
    2. Depth patterns
    3. Modal animal
    4. Phenotypic analysis
    5. Thermal infrared patterns
    6. Visible patterns

    Qualifiers

    • Research-article
    • Research
    • Refereed limited

    Funding Sources

    • Project of Scientific Operating Expenses from Ministry of Education of China
    • China Postdoctoral Science Foundation

    Conference

    CSAE 2019

    Acceptance Rates

    Overall Acceptance Rate 368 of 770 submissions, 48%

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • 0
      Total Citations
    • 53
      Total Downloads
    • Downloads (Last 12 months)4
    • Downloads (Last 6 weeks)1
    Reflects downloads up to 18 Nov 2024

    Other Metrics

    Citations

    View Options

    Login options

    View options

    PDF

    View or Download as a PDF file.

    PDF

    eReader

    View online with eReader.

    eReader

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media