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Organ Segmentation in Poultry Viscera Using RGB-D.

Mark Philip PhilipsenJacob Velling DueholmAnders JørgensenSergio EscaleraThomas Baltzer Moeslund
Published in: Sensors (Basel, Switzerland) (2018)
We present a pattern recognition framework for semantic segmentation of visual structures, that is, multi-class labelling at pixel level, and apply it to the task of segmenting organs in the eviscerated viscera from slaughtered poultry in RGB-D images. This is a step towards replacing the current strenuous manual inspection at poultry processing plants. Features are extracted from feature maps such as activation maps from a convolutional neural network (CNN). A random forest classifier assigns class probabilities, which are further refined by utilizing context in a conditional random field. The presented method is compatible with both 2D and 3D features, which allows us to explore the value of adding 3D and CNN-derived features. The dataset consists of 604 RGB-D images showing 151 unique sets of eviscerated viscera from four different perspectives. A mean Jaccard index of 78.11 % is achieved across the four classes of organs by using features derived from 2D, 3D and a CNN, compared to 74.28 % using only basic 2D image features.
Keyphrases
  • convolutional neural network
  • deep learning
  • machine learning
  • climate change
  • high resolution
  • antimicrobial resistance
  • mass spectrometry
  • optical coherence tomography