Deep learning framework for bovine iris segmentation.

Heemoon Yoon, Mira Park, Hayoung Lee, Jisoon An, Taehyun Lee, Sang-Hee Lee
Author Information
  1. Heemoon Yoon: School of Information Communication and Technology, University of Tasmania, Hobart 7005, Australia. ORCID
  2. Mira Park: School of Information Communication and Technology, University of Tasmania, Hobart 7005, Australia. ORCID
  3. Hayoung Lee: College of Animal Life Sciences, Kangwon National University, Chuncheon 24341, Korea. ORCID
  4. Jisoon An: College of Animal Life Sciences, Kangwon National University, Chuncheon 24341, Korea. ORCID
  5. Taehyun Lee: College of Animal Life Sciences, Kangwon National University, Chuncheon 24341, Korea. ORCID
  6. Sang-Hee Lee: College of Animal Life Sciences, Kangwon National University, Chuncheon 24341, Korea. ORCID

Abstract

Iris segmentation is an initial step for identifying the biometrics of animals when establishing a traceability system for livestock. In this study, we propose a deep learning framework for pixel-wise segmentation of bovine iris with a minimized use of annotation labels utilizing the BovineAAEyes80 public dataset. The proposed image segmentation framework encompasses data collection, data preparation, data augmentation selection, training of 15 deep neural network (DNN) models with varying encoder backbones and segmentation decoder DNNs, and evaluation of the models using multiple metrics and graphical segmentation results. This framework aims to provide comprehensive and in-depth information on each model's training and testing outcomes to optimize bovine iris segmentation performance. In the experiment, U-Net with a VGG16 backbone was identified as the optimal combination of encoder and decoder models for the dataset, achieving an accuracy and dice coefficient score of 99.50% and 98.35%, respectively. Notably, the selected model accurately segmented even corrupted images without proper annotation data. This study contributes to the advancement of iris segmentation and the establishment of a reliable DNN training framework.

Keywords

References

  1. Rev Sci Tech. 2001 Aug;20(2):372-8 [PMID: 11548513]
  2. IEEE Trans Pattern Anal Mach Intell. 2017 Apr;39(4):640-651 [PMID: 27244717]
  3. IEEE Trans Pattern Anal Mach Intell. 2017 Dec;39(12):2481-2495 [PMID: 28060704]
  4. Chem Sci. 2017 Oct 31;9(2):513-530 [PMID: 29629118]
  5. BMC Med Imaging. 2015 Aug 12;15:29 [PMID: 26263899]

Word Cloud

Created with Highcharts 10.0.0segmentationframeworkirisdatalearningbovinetrainingmodelsIrisstudydeepannotationdatasetDNNencoderdecoderDeepinitialstepidentifyingbiometricsanimalsestablishingtraceabilitysystemlivestockproposepixel-wiseminimizeduselabelsutilizingBovineAAEyes80publicproposedimageencompassescollectionpreparationaugmentationselection15neuralnetworkvaryingbackbonesDNNsevaluationusingmultiplemetricsgraphicalresultsaimsprovidecomprehensivein-depthinformationmodel'stestingoutcomesoptimizeperformanceexperimentU-NetVGG16backboneidentifiedoptimalcombinationachievingaccuracydicecoefficientscore9950%9835%respectivelyNotablyselectedmodelaccuratelysegmentedevencorruptedimageswithoutpropercontributesadvancementestablishmentreliableCowIdentificationSegmentation

Similar Articles

Cited By