Abstract

Target classification techniques using spectral imagery and light detection and ranging (LiDAR) are widely used in many disciplines. However, none of the existing methods can directly capture spectral and 3D spatial information simultaneously. Multispectral LiDAR was proposed to solve this problem as its data combines spectral and 3D spatial information. Point-based classification experiments have been conducted with the use of multispectral LiDAR; however, the low signal to noise ratio creates salt and pepper noise in the spectral-only classification, thus lowering overall classification accuracy. In our study, a two-step classification approach is proposed to eliminate this noise during target classification: routine classification based on spectral information using spectral reflectance or a vegetation index, followed by neighborhood spatial reclassification. In an experiment, a point cloud was first classified with a routine classifier using spectral information and then reclassified with the k-nearest neighbors (k-NN) algorithm using neighborhood spatial information. Next, a vegetation index (VI) was introduced for the classification of healthy and withered leaves. Experimental results show that our proposed two-step classification method is feasible if the first spectral classification accuracy is reasonable. After the reclassification based on the k-NN algorithm was combined with neighborhood spatial information, accuracies increased by 1.50–11.06%. Regarding identification of withered leaves, VI performed much better than raw spectral reflectance, with producer accuracy increasing from 23.272% to 70.507%.

Highlights

  • Target classification techniques based on remotely sensed data are widely used in many disciplines such as resource exploration, outcrop geology, urban environmental management, and agriculture and forestry management [1,2,3,4,5,6,7,8,9,10,11]

  • Spatial and spectral information, which is helpful for target classification

  • The first classification based on raw spectral reflectance performed well in mostThe scenarios, aside of the of spatial and spectral information, which is helpful for target classification

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Summary

Introduction

Target classification techniques based on remotely sensed data are widely used in many disciplines such as resource exploration, outcrop geology, urban environmental management, and agriculture and forestry management [1,2,3,4,5,6,7,8,9,10,11]. The remote sensing community has been studying classification techniques and methods for many years. Support vector machine (SVM) is a supervised [12] classification method, and a popular non-parametric classifier widely used in the machine learning and remote sensing communities [13,14,15]

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