Remote Sensing (May 2022)

Multiscale Diagnosis of Mangrove Status in Data-Poor Context Using Very High Spatial Resolution Satellite Images: A Case Study in Pichavaram Mangrove Forest, Tamil Nadu, India

  • Shuvankar Ghosh,
  • Christophe Proisy,
  • Gowrappan Muthusankar,
  • Christiane Hassenrück,
  • Véronique Helfer,
  • Raphaël Mathevet,
  • Julien Andrieu,
  • Natesan Balachandran,
  • Rajendran Narendran

DOI
https://doi.org/10.3390/rs14102317
Journal volume & issue
Vol. 14, no. 10
p. 2317

Abstract

Read online

Highlighting spatiotemporal changes occurring within mangrove habitats at the finest possible scale could contribute fundamental knowledge and data for local sustainable management. This study presents the current situation of the Pichavaram mangrove area, a coastal region of Southeast India prone to both cyclones and reduced freshwater inflow. Based on the supervised classification and visual inspection of very high spatial resolution (VHSR) satellite images provided with a pixel size of 85%), which confirmed the potential of classification techniques applied to VHSR images in capturing changes in mangroves on a very fine scale. Our diagnosis reveals variable expansion rates in plantations made by the local authorities. We also report an ongoing mangrove dieback and confirm progressive shoreline erosion along the coastline. Despite a lack of field data, VHSR images allowed for the multiscale diagnosis of the ecosystem situation, thus constituting the first fine-scale assessment of the fragile Pichavaram mangrove area upon which the coastal community is dependent.

Keywords