Abstract

Remote sensing enables for costly effective, timely efficient and multi-temporal monitoring of natural vegetation. Spectral reflectance pattern either in forms of row reflectance values or in form of spectral vegetation indices (SVIs) could be used as estimators of plant biophysical and biochemical parameters through statistical models. The main objective of the current study is to correlate plant chlorophyll concentration with different (SVIs) and to identify the most sufficient index to discriminate among the twenty common natural vegetation species in Sinai Peninsula. Calculated values of five hyper spectral vegetation indices (normalized difference vegetation index (NDVI); Chlorophyll Index; Chlorophyll a,b; Simple ratio index (SRI); Modified chlorophyll absorption ratio index (MCARI) fir the twenty observed vegetation species were used as spectral factors in the modeling process. The result showed that the relatively high chlorophyll content was found in broad leaves plants when needle-leaved plant species showed relatively low ones. Laboratory chlorophyll estimation indicated that Asclepias sinaica has the highest chlorophyll content (79mg/cm-2) when the same plant specious showed the highest chlorophyll index value. It was found that plants of family Zygophyllaceae have low chlorophyll content. Among observed (SVIs), (NDVI) was the most correlated index with chlorophyll. At the same time, it was the optimal index to differentiate the different species.

Highlights

  • Evolution in hyperspectral remote sensing can provide more exact information on structural and biochemical properties of plant species.[1]

  • It was found that plants of family Zygophyllaceae have low chlorophyll content

  • Regarding chlorophyll content analysis, showed that generally, the high chlorophyll was found in these plant species with broad leaves when needle-leaved plant species showed low chlorophyll content noticed that plant of family Zygophyllaceae has low chlorophyll content

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Summary

Introduction

Evolution in hyperspectral remote sensing can provide more exact information on structural and biochemical properties of plant species.[1]. Spectral vegetation indices constitute a simple and restful approach to evolve information from remotely sensed data, due to their facility of use, which facilitates the processing and analysis of huge amounts of data obtained by satellite platforms.[17,18] Increasing efforts have focused on comprehension the relationships between vegetation optical properties and photosynthetic pigments concentrations within green leave tissues such as chlorophylls and carotenoids.[19,20,21]

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