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Underwater Object Segmentation Based on Optical Features.

Zhe ChenZhen ZhangYang BuFengzhao DaiTanghuai FanHuibin Wang
Published in: Sensors (Basel, Switzerland) (2018)
Underwater optical environments are seriously affected by various optical inputs, such as artificial light, sky light, and ambient scattered light. The latter two can block underwater object segmentation tasks, since they inhibit the emergence of objects of interest and distort image information, while artificial light can contribute to segmentation. Artificial light often focuses on the object of interest, and, therefore, we can initially identify the region of target objects if the collimation of artificial light is recognized. Based on this concept, we propose an optical feature extraction, calculation, and decision method to identify the collimated region of artificial light as a candidate object region. Then, the second phase employs a level set method to segment the objects of interest within the candidate region. This two-phase structure largely removes background noise and highlights the outline of underwater objects. We test the performance of the method with diverse underwater datasets, demonstrating that it outperforms previous methods.
Keyphrases
  • deep learning
  • working memory
  • high resolution
  • convolutional neural network
  • high speed
  • air pollution
  • mass spectrometry