Mapping forest leaf area index using reflectance and textural information derived from WorldView-2 imagery in a mixed natural forest area in Florida, USA

Ruiliang Pu, Jun Cheng

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

1 Scopus citations

Abstract

The leaf area index (LAI) of plant canopies is an important structural parameter that controls energy, water, and gas exchanges of plant ecosystems. Remote sensing techniques may offer an alternative for measuring and mapping forest LAI at a landscape scale. Given the characteristics of high spatial/spectral resolution of the WorldView-2 (WV2) sensor, it is of significance that the textural information extracted from WV2 multispectral (MS) bands will be first time used in estimating and mapping forest LAI. In this case, LAI mapping accuracies would be compared from (a) spatial resolutions between 2-m WV2 MS data and 30-m Landsat TM imagery, (b) the nature of variables between spectrum-based features and texture-based features, and (c) sensors between TM and WV2. In this study, spectral/spatial features (SFs) were selected and tested, including band reflectance, various vegetation indices and 1st and 2nd-order statistical texture measures; a canonical correlation analysis was performed with different data sets of SFs and LAI measurement; and finally linear regression models were used to predict and map forest LAI with canonical variables calculated from image data. The experimental results demonstrate that for estimating and mapping forest LAI, (i) using high resolution data is better than using relatively low resolution data; (ii) extracted from the same WV2 data, texture-based features have higher capability than that of spectrum-based features; (iii) a combination of spectrum-based features with texture-based features could lead to even higher accuracy of mapping forest LAI than their either one separately; and (iv) WV2 sensor outperforms TM sensor significantly. In addition, the experimental results also indicate that the Red-edge band in WV2 has performed the worst on estimating LAI, compared to other WV2 MS bands and the WV2 MS bands in the visible range have a much higher correlation with ground measured LAI than that of Red-edge and NIR bands.

Original languageEnglish
Title of host publicationImaging and Geospatial Technology Forum, IGTF 2015 - ASPRS Annual Conference and co-located JACIE Workshop
PublisherAmerican Society for Photogrammetry and Remote Sensing
Pages4-20
Number of pages17
ISBN (Electronic)9781510804579
StatePublished - 2015
EventImaging and Geospatial Technology Forum, IGTF 2015 - ASPRS Annual Conference and co-located JACIE Workshop - Tampa, United States
Duration: 4 May 20158 May 2015

Publication series

NameImaging and Geospatial Technology Forum, IGTF 2015 - ASPRS Annual Conference and co-located JACIE Workshop

Conference

ConferenceImaging and Geospatial Technology Forum, IGTF 2015 - ASPRS Annual Conference and co-located JACIE Workshop
Country/TerritoryUnited States
CityTampa
Period4/05/158/05/15

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