Abstract

Accurate estimation of the degree of regeneration in tropical dry forest (TDF) is critical for conservation policymaking and evaluation. Hyperspectral remote sensing and light detection and ranging (LiDAR) have been used to characterize the deterministic successional stages in a TDF. These successional stages, classified as early, intermediate, and late, are considered a proxy for mapping the age since the abandonment of a given forest area. Expanding on the need for more accurate successional forest mapping, our study considers the age attributes of a TDF study area as a continuous expression of relative attribute scores/levels that vary along the process of ecological succession. Specifically, two remote-sensing data sets: HyMap (hyperspectral) and LVIS (waveform LiDAR), were acquired at the Santa Rosa National Park Environmental Monitoring Super Site (SRNP-EMSS) in Costa Rica, were used to generate age-attribute metrics. These metrics were then used as entry-level variables on a randomized nonlinear archetypal analysis (RNAA) model to select the most informative metrics from both data sets. Next, a relative attribute learning (RAL) algorithm was adapted for both independent and fused metrics to comparatively learn the relative attribute levels of the forest ages of the study area. In this study, four HyMap indices and five LVIS metrics were found to have the potential to map the forest ages of the study area, and compared with these results, a significant improvement was found through the fusion of the metrics on the accuracy of the generated forest age maps. By linking the age group mapping and the relative attribute mapping results, a dynamic gradient of the age-attribute transition patterns emerged.

Highlights

  • Tropical forests play crucial roles in the functioning of our planet and the maintenance of life [1], as well as in the protection of biodiversity and regulation of climate [2]

  • The development of pathways and ecosystem dynamics of the SRNP-EMSS study area was quantified at detailed relative levels of the age attribute without knowing the area was quantified at detailed relative levels of the age attribute without knowing the exact growth age of any particular area

  • It needs to be highlighted that our study used only five metrics, namely NDNI, Cx, RG, MAX, EC, and RH50, which have been found to be the optimal set to improve succession learning

Read more

Summary

Introduction

Tropical forests play crucial roles in the functioning of our planet and the maintenance of life [1], as well as in the protection of biodiversity and regulation of climate [2]. Tropical dry forests (TDFs) account for nearly half of all tropical forests [3] and are one of the most disturbed and least protected ecosystems on earth [4,5,6]. Some regions are returning to their original extent of forest cover as a result of shifting socio-economic forces. This regeneration process is taking place in the context of processes denominated as “agro-landscapes,” where forest regeneration is not uniform but occurring in the context of a fragmented landscape dominated by agricultural fields [10]

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call