Abstract

Abstract. Leaf area index (LAI) is one of the most important structural parameters of forestry studies which manifests the ability of the green vegetation interacted with the solar illumination. Classic understanding about LAI is to consider the green canopy as integration of horizontal leaf layers. Since multi-angle remote sensing technique developed, LAI obliged to be deliberated according to the observation geometry. Effective LAI could formulate the leaf-light interaction virtually and precisely. To retrieve the LAI/effective LAI from remotely sensed data therefore becomes a challenge during the past decades. Laser scanning technique can provide accurate surface echoed coordinates with densely scanned intervals. To utilize the density based statistical algorithm for analyzing the voluminous amount of the 3-D points data is one of the subjects of the laser scanning applications. Computational geometry also provides some mature applications for point cloud data (PCD) processing and analysing. In this paper, authors investigated the feasibility of a new application for retrieving the effective LAI of an isolated broad leaf tree. Simplified curvature was calculated for each point in order to remove those non-photosynthetic tissues. Then PCD were discretized into voxel, and clustered by using Gaussian mixture model. Subsequently the area of each cluster was calculated by employing the computational geometry applications. In order to validate our application, we chose an indoor plant to estimate the leaf area, the correlation coefficient between calculation and measurement was 98.28 %. We finally calculated the effective LAI of the tree with 6 × 6 assumed observation directions.

Highlights

  • Leaf area index (LAI) is a key variable used to model many physical processes, such as canopy photosynthesis and transpiration

  • Landsat TM data and ground-based measurements of LAI have been correlated for estimating effective LAI, which is the product of LAI and clumping index

  • This study aims to investigate the feasibility for retrieving the effective LAI from point cloud data (PCD), which using the combination of computational geometry application and distribution-based clustering algorithm

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Summary

Introduction

Leaf area index (LAI) is a key variable used to model many physical processes, such as canopy photosynthesis and transpiration. It determines the size of the plant-atmosphere interface and plays a critical role in the exchange of energy and mass between the canopy and the atmosphere (Weiss et al, 2004). At the beginning of the LAI studies the canopy structural parameters are measured directly It is accurate, time consuming and destructive to plants (Lang and Xiang, 1986). Landsat TM data and ground-based measurements of LAI have been correlated for estimating effective LAI, which is the product of LAI and clumping index. Some issues have been discussed for the LAI estimation, which were correlated to the LAI retrieving from Landsat images in spite the limitations of TM image (Chen and Cihlar, 1996)

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