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PalmProbNet: A Probabilistic Approach to Understanding Palm Distributions in Ecuadorian Tropical Forest via Transfer Learning

  • Kangning Cui*
  • , Zishan Shao
  • , Gregory Larsen
  • , Victor Pauca
  • , Sarra Alqahtani
  • , David Segurado
  • , João Pinheiro
  • , Manqi Wang
  • , David Lutz
  • , Robert J. Plemmons
  • , Miles Silman
  • *Corresponding author for this work

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 32 - Refereed conference paper (with host publication)peer-review

Abstract

Palms play an outsized role in tropical forests and are important resources for humans and wildlife. A central question in tropical ecosystems is understanding palm distribution and abundance. However, accurately identifying and localizing palms in geospatial imagery presents significant challenges due to dense vegetation, overlapping canopies, and variable lighting conditions in mixed-forest landscapes. Addressing this, we introduce PalmProbNet, a probabilistic approach utilizing transfer learning to analyze high-resolution UAV-derived orthomosaic imagery, enabling the detection of palm trees within the dense canopy of the Ecuadorian Rainforest. This approach represents a substantial advancement in automated palm detection, effectively pinpointing palm presence and locality in mixed tropical rainforests. Our process begins by generating an orthomosaic image from UAV images, from which we extract and label palm and non-palm image patches in two distinct sizes. These patches are then used to train models with an identical architecture, consisting of an unaltered pre-trained ResNet-18 and a Multilayer Perceptron (MLP) with specifically trained parameters. Subsequently, PalmProbNet employs a sliding window technique on the landscape orthomosaic, using both small and large window sizes to generate a probability heatmap. This heatmap effectively visualizes the distribution of palms, showcasing the scalability and adaptability of our approach in various forest densities. Despite the challenging terrain, our method demonstrated remarkable performance, achieving an accuracy of 97.32% and a Cohen's κ of 94.59% in testing.

© 2024 Copyright held by the owner/author(s). Publication rights licensed to ACM.
Original languageEnglish
Title of host publicationACM SE '24
Subtitle of host publicationProceedings of the 2024 ACM Southeast Conference
PublisherAssociation for Computing Machinery
Pages272-277
ISBN (Print)979-8-4007-0237-2
DOIs
Publication statusPublished - Apr 2024
EventThe 62nd ACMSE 2024 Conference - Kennesaw State University, Marietta, Georgia
Duration: 18 Apr 202420 Apr 2024
https://acmse.net/2024/

Conference

ConferenceThe 62nd ACMSE 2024 Conference
Abbreviated titleACMSE 2024
PlaceGeorgia
CityMarietta
Period18/04/2420/04/24
Internet address

Research Keywords

  • transfer learning
  • palm detection
  • density map
  • remote sensing

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