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Underwater Fish Detection with Weak Multi-Domain Supervision (1905.10708v2)

Published 26 May 2019 in cs.CV and cs.LG

Abstract: Given a sufficiently large training dataset, it is relatively easy to train a modern convolution neural network (CNN) as a required image classifier. However, for the task of fish classification and/or fish detection, if a CNN was trained to detect or classify particular fish species in particular background habitats, the same CNN exhibits much lower accuracy when applied to new/unseen fish species and/or fish habitats. Therefore, in practice, the CNN needs to be continuously fine-tuned to improve its classification accuracy to handle new project-specific fish species or habitats. In this work we present a labelling-efficient method of training a CNN-based fish-detector (the Xception CNN was used as the base) on relatively small numbers (4,000) of project-domain underwater fish/no-fish images from 20 different habitats. Additionally, 17,000 of known negative (that is, missing fish) general-domain (VOC2012) above-water images were used. Two publicly available fish-domain datasets supplied additional 27,000 of above-water and underwater positive/fish images. By using this multi-domain collection of images, the trained Xception-based binary (fish/not-fish) classifier achieved 0.17% false-positives and 0.61% false-negatives on the project's 20,000 negative and 16,000 positive holdout test images, respectively. The area under the ROC curve (AUC) was 99.94%.

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Authors (6)
  1. Dmitry A. Konovalov (8 papers)
  2. Alzayat Saleh (17 papers)
  3. Michael Bradley (11 papers)
  4. Mangalam Sankupellay (2 papers)
  5. Simone Marini (4 papers)
  6. Marcus Sheaves (7 papers)
Citations (34)

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