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Self-Organizing Deep Learning (SO-UNet)—A Novel Framework to Classify Urban and Peri-Urban Forests

Author

Listed:
  • Mohamad M. Awad

    (National Council for Scientific Research, Beirut, 11072260, Lebanon)

  • Marco Lauteri

    (Institute of Research on Terrestrial Ecosystems (CNR-IRET), 05010 Porano, Italy)

Abstract

Forest-type classification is a very complex and difficult subject. The complexity increases with urban and peri-urban forests because of the variety of features that exist in remote sensing images. The success of forest management that includes forest preservation depends strongly on the accuracy of forest-type classification. Several classification methods are used to map urban and peri-urban forests and to identify healthy and non-healthy ones. Some of these methods have shown success in the classification of forests where others failed. The successful methods used specific remote sensing data technology, such as hyper-spectral and very high spatial resolution (VHR) images. However, both VHR and hyper-spectral sensors are very expensive, and hyper-spectral sensors are not widely available on satellite platforms, unlike multi-spectral sensors. Moreover, aerial images are limited in use, very expensive, and hard to arrange and manage. To solve the aforementioned problems, an advanced method, self-organizing–deep learning (SO-UNet), was created to classify forests in the urban and peri-urban environment using multi-spectral, multi-temporal, and medium spatial resolution Sentinel-2 images. SO-UNet is a combination of two different machine learning technologies: artificial neural network unsupervised self-organizing maps and deep learning UNet. Many experiments have been conducted, and the results showed that SO-UNet overwhelms UNet significantly. The experiments encompassed different settings for the parameters that control the algorithms.

Suggested Citation

  • Mohamad M. Awad & Marco Lauteri, 2021. "Self-Organizing Deep Learning (SO-UNet)—A Novel Framework to Classify Urban and Peri-Urban Forests," Sustainability, MDPI, vol. 13(10), pages 1-15, May.
  • Handle: RePEc:gam:jsusta:v:13:y:2021:i:10:p:5548-:d:555674
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    References listed on IDEAS

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    1. Duncan MacMichael & Dong Si, 2018. "Machine Learning Classification of Tree Cover Type and Application to Forest Management," International Journal of Multimedia Data Engineering and Management (IJMDEM), IGI Global, vol. 9(1), pages 1-21, January.
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