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Separable Confident Transductive Learning for Dairy Cows Teat-End Condition Classification.

Youshan ZhangIan R PorterMatthias WielandParminder S Basran
Published in: Animals : an open access journal from MDPI (2022)
Teat-end health assessments are crucial to maintain milk quality and dairy cow health. One approach to automate teat-end health assessments is by using a convolutional neural network to classify the magnitude of teat-end alterations based on digital images. This approach has been demonstrated as feasible with GoogLeNet but there remains a number of challenges, such as low performance and comparing performance with different ImageNet models. In this paper, we present a separable confident transductive learning (SCTL) model to improve the performance of teat-end image classification. First, we propose a separation loss to ameliorate the inter-class dispersion. Second, we generate high confident pseudo labels to optimize the network. We further employ transductive learning to narrow the gap between training and test datasets with categorical maximum mean discrepancy loss. Experimental results demonstrate that the proposed SCTL model consistently achieves higher accuracy across all seventeen different ImageNet models when compared with retraining of original approaches.
Keyphrases
  • deep learning
  • convolutional neural network
  • public health
  • healthcare
  • dairy cows
  • mental health
  • machine learning
  • mass spectrometry
  • optical coherence tomography
  • human health
  • rna seq
  • climate change