Litcius/Paper detail

Development of a multispectral fluorescence LiDAR for point cloud segmentation of plants

Kexin Zheng, Hongze Lin, Xuekai Hong, Hao Che, Xiaorui Ma, Xiaopeng Wei, Liang Mei

2023Optics Express13 citationsDOIOpen Access PDF

Abstract

The accelerating development of high-throughput plant phenotyping demands a LiDAR system to achieve spectral point cloud, which will significantly improve the accuracy and efficiency of segmentation based on its intrinsic fusion of spectral and spatial data. Meanwhile, a relatively longer detection range is required for platforms e.g., unmanned aerial vehicles (UAV) and poles. Towards the aims above, what we believe to be, a novel multispectral fluorescence LiDAR, featuring compact volume, light weight, and low cost, has been proposed and designed. A 405 nm laser diode was employed to excite the fluorescence of plants, and the point cloud attached with both the elastic and inelastic signal intensities that was obtained through the R-, G-, B-channels of a color image sensor. A new position retrieval method has been developed to evaluate far field echo signals, from which the spectral point cloud can be obtained. Experiments were designed to validate the spectral/spatial accuracy and the segmentation performance. It has been found out that the values obtained through the R-, G-, B-channels are consistent with the emission spectrum measured by a spectrometer, achieving a maximum R 2 of 0.97. The theoretical spatial resolution can reach up to 47 mm and 0.7 mm in the x- and y-direction at a distance of around 30 m, respectively. The values of recall, precision, and F score for the segmentation of the fluorescence point cloud were all beyond 0.97. Besides, a field test has been carried out on plants at a distance of about 26 m, which further demonstrated that the multispectral fluorescence data can significantly facilitate the segmentation process in a complex scene. These promising results prove that the proposed multispectral fluorescence LiDAR has great potential in applications of digital forestry inventory and intelligent agriculture.

Topics & Concepts

Multispectral imageLidarRemote sensingPoint cloudSegmentationOpticsLaserImage resolutionSpectrometerField of viewIrradianceComputer sciencePhysicsArtificial intelligenceGeologyRemote Sensing and LiDAR Applications3D Surveying and Cultural HeritageRemote Sensing in Agriculture