Characterization of Tropical forests at community level-Spectra Vs. Phenology Vs. Structure

Author:

Singhal Jayant1,Rajwadi Ankur2,Malek Gulzar2,Nagar P. S.2,Rajashekar G.3,Reddy C. Sudhakar3,Sriva S. K.4

Affiliation:

1. Regional Remote Sensing Centre – North, National Remote Sensing Centre

2. The Maharaja Sayajirao University

3. National Remote Sensing Centre, Indian Space Research Organisation

4. Chief General Manager (RCs), National Remote Sensing Centre

Abstract

Abstract Since the inception of satellite remote sensing as a technology, characterization of forests has been one of the major application of it. Characterization of forests at Species level is essential for sustainable management of biodiversity. Recent advancements in remote sensing as a technology has enable us to observe not only the reflectance spectra of forests from space, but also their phenology and structure. In this study Earth Observation (EO) datasets were divided into 3 parts namely spectral data, structural and phenological data. Random forest algorithm was applied on the 3 sets of EO data and field inventory-based tree community classes to generate tree community maps of Purna wildlife sanctuary. Classification accuracy achieved from spectral datasets (79.08% to 87.23%) was more than phenological dataset (80.94%) which was more than structural datasets (74.11% to 81.49%). A model with combination of predictors from the 3 datasets increased the classification accuracy to 90.29%. Some salient findings of this study are 1) in general with the current sensors the accuracies achieved for tree community mapping is Spectral datasets> Phenological datasets> Structural datasets 2) Significant increase in accuracy can be achieved by combining the three datasets 3) In case of spectral datasets, the last image before the start of monsoon season gave the best accuracy 4) In the case of spectral datasets, relatively modern spectral bands contributed significantly more to the model as compared to trivial bands.

Publisher

Research Square Platform LLC

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