Opt Express. 2023 May 22;31(11):18613-18629. doi: 10.1364/OE.490004.
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 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.
高通量植物表型分析的快速发展需要激光雷达系统来实现光谱点云,这将显著提高基于其固有光谱和空间数据融合的分割准确性和效率。同时,对于平台(例如无人机和电线杆),需要相对较长的检测范围。针对上述目标,我们设计并提出了一种新型的多光谱荧光激光雷达,其具有体积小、重量轻、成本低的特点。采用 405nm 激光二极管激发植物的荧光,通过彩色图像传感器的 R、G、B 通道获得附有弹性和非弹性信号强度的点云。开发了一种新的位置检索方法来评估远场回波信号,从中可以获得光谱点云。设计了实验来验证光谱/空间精度和分割性能。结果表明,通过 R、G、B 通道获得的值与光谱仪测量的发射光谱一致,R 值最大可达 0.97。在距离约 30m 处,x 和 y 方向的理论空间分辨率分别可达 47mm 和 0.7mm。荧光点云分割的召回率、精度和 F 分数值均超过 0.97。此外,还在距离约 26m 的植物上进行了现场测试,进一步证明了多光谱荧光数据可以显著促进复杂场景中的分割过程。这些有前景的结果证明,所提出的多光谱荧光激光雷达在数字林业清查和智能农业应用中具有很大的潜力。