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River state classification combining patch-based processing and CNN

Author

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  • Takahiro Oga
  • Ryosuke Harakawa
  • Sayaka Minewaki
  • Yo Umeki
  • Yoko Matsuda
  • Masahiro Iwahashi

Abstract

This paper proposes a method for classifying the river state (a flood risk exists or not) from river surveillance camera images by combining patch-based processing and a convolutional neural network (CNN). Although CNN needs much training data, the number of river surveillance camera images is limited because flood does not frequently occur. Also, river surveillance camera images include objects that are irrelevant to the flood risk. Therefore, the direct use of CNN may not work well for the river state classification. To overcome this limitation, this paper develops patch-based processing for adjusting CNN to the river state classification. By increasing training data via the patch segmentation of an image and selecting patches that are relevant to the river state, the adjustment of general CNNs to the river state classification becomes feasible. The proposed patch-based processing and CNN are developed independently. This yields the practical merits that any CNN can be used according to each user’s purposes, and the maintenance and improvement of each component of the whole system can be easily performed. In the experiment, river state classification is defined as the following problems using two datasets, to verify the effectiveness of the proposed method. First, river images from the public dataset called Places are classified to images with Muddy labels and images with Clear labels. Second, images from the river surveillance camera in Nagaoka City, Japan are classified to images captured when the government announced heavy rain or flood warning and the other images.

Suggested Citation

  • Takahiro Oga & Ryosuke Harakawa & Sayaka Minewaki & Yo Umeki & Yoko Matsuda & Masahiro Iwahashi, 2020. "River state classification combining patch-based processing and CNN," PLOS ONE, Public Library of Science, vol. 15(12), pages 1-14, December.
  • Handle: RePEc:plo:pone00:0243073
    DOI: 10.1371/journal.pone.0243073
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    Cited by:

    1. Woo, Dong Kook & Ji, Junghu & Song, Homin, 2023. "Subsurface drainage pipe detection using an ensemble learning approach and aerial images," Agricultural Water Management, Elsevier, vol. 287(C).
    2. Emaad Ansari & Mohammad Nishat Akhtar & Mohamad Nazir Abdullah & Wan Amir Fuad Wajdi Othman & Elmi Abu Bakar & Ahmad Faizul Hawary & Syed Sahal Nazli Alhady, 2021. "Image Processing of UAV Imagery for River Feature Recognition of Kerian River, Malaysia," Sustainability, MDPI, vol. 13(17), pages 1-14, August.

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