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基于空谱特征优化选择的高光谱激光雷达地物分类 被引量:1

Target Classification of Hyperspectral Lidar Based on Optimization Selection of Spatial-Spectral Features
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摘要 地物精细化分类一直是遥感领域的研究热点之一,也是生物量计算、全球碳循环、能量流动等研究的重要前提。为实现复杂场景下的地物高精度识别分类,本文基于高光谱激光雷达空间-光谱一体化同步获取优势,提出了基于空谱特征优化选择的高光谱激光雷达地物分类流程,构建了多种适用于高光谱激光雷达数据的空谱特征,并通过空谱特征优化选择,确定最优空谱特征组合进而实现高精度地物分类。14类地物分类结果表明,联合多种空谱特征,可优化某些类别因空间结构复杂造成光谱获取准确度不高从而引起的错误分类现象,总体分类精度可达95.57%,平均分类精度为84.37%;基于空谱特征优化选择确定最优空谱特征组合,可有效地消除特征冗余,使得总体分类精度进一步提高1.56%,平均分类精度提高4.36%。基于高空间分辨与高光谱分辨的一体化成像探测优势,高光谱激光雷达技术在地物精细化分类领域极具研究潜力与商业价值。 Objective The refined target classification has always been a research hotspot in remote sensing and is also a prerequisite for studies on biomass calculation,global carbon cycle,and energy flow.With the continuous expansion and refinement in remote sensing detection,more effective and accurate target classification is becoming more complex and difficult.3D spatial information and rich spectral information are typical attributes of a target,which is significant data support for target classification.Hyperspectral lidars have been successfully designed and structured for target classification to achieve the integrated acquisition of 3D spatial information and spectral information.With an aim at this new type of remote sensing data,how to develop and exploit its potential in target classification is of research significance.Therefore,to realize highprecision recognition and classification under complex scenes,we propose a target classification process of spatialspectral feature optimization selection dependent on the hyperspectral lidar.This method can not only reduce feature redundancy and select the optimal feature combination for target classification but also reduce computational efficiency and save costs,thereby providing new research ideas for refined target classification with hyperspectral lidar.Methods With the continuous expansion of remote sensing detection,detection targets become more diversified and complicated.Constructing various spatialspectral features based on spectral information and spatial information is a mainstream method to improve the accuracy of target classification.Based on the technological advantages of the integrated imaging detection of high spatial resolution and hyperspectral resolution,we construct spectral index features of the vegetable index and color index,and geometric features for target classification.Extracting lots of spatialspectral classification features can enhance the classification accuracy,yet it may produce feature redundancy,increase the calculation cost,affect the classification efficiency,and even lead to declining classification accuracy.Therefore,we put forward a target classification process of spatialspectral features optimization selection dependent on the hyperspectral lidar.In the feature space built by the hyperspectral lidar,these spatialspectral features with the best classification significance are determined based on the marine predator algorithm by iterative search and selection to minimize the classification error.Finally,considering the feature heterogeneity of the selected feature combination,the feature correlation is calculated to eliminate feature redundancy and determine the optimal feature combination,thereby improving classification accuracy.Results and Discussions To further explore the technological advantages of hyperspectral lidar for target classification under complex scenes,and to compare and verify the feasibility and universality of the proposed method,we design six different classification strategies with different feature combinations.Classification results of these feature combinations are determined by a random forest algorithm.Total accuracy,average accuracy,Kappa coefficient,accuracy rate,and recall rate are adopted to evaluate the classification results of each category.Table 4 shows that the six different classification strategies yield sound classification results with the total accuracy higher than 89%,the average accuracy of more than 68%,and Kappa coefficient greater than 0.85.Compared with the results of the first three classification strategies,the classification results of the fourth strategy which integrates original spectral information,elevation value,index features,and geometrical features,have been greatly improved.Additionally,the overall accuracy can reach 95.57%with the average accuracy of 84.37%and the Kappa coefficient of 0.9380,whereas the elapsed time is the longest at 5.16 s.The predicted result of target labels is shown in Fig.6(d).Based on the spatialspectral feature optimization selection method,the optimal feature combination could be determined to eliminate feature redundancy and enhance classification accuracy.The overall accuracy and average accuracy are increased by 1.56%and 4.36%,respectively,and the elapsed time is reduced by 1.55 s.The predicted results of target labels are shown in Fig.8(f).The classification results demonstrate that this method can determine the optimal spatialspectral features for target classification,and provide a new research idea for refined target classification with hyperspectral lidar.Conclusions As a new active remote sensing technology,the hyperspectral lidar can combine the technology advantages of passive hyperspectral imaging and lidar scanning imaging and has great application potential in refined target classification under complex scenes.Therefore,we propose a target classification process of spatialspectral feature optimization selection dependent on the hyperspectral lidar.The index features constructed by the spectral band optimization and geometric features constructed by the local neighborhood surface fitting are extracted and employed to target classification.Finally,the optimal feature combination is determined by the proposed method to achieve highprecision target classification under complex scenes with the scanning scene of 14 different targets.Based on the spatialspectral feature optimization selection to determine the optimal spatialspectral feature combination,it can effectively eliminate the characteristic redundancy.This increases the overall classification accuracy by 1.56%and the average classification accuracy by 4.36%,and the elapsed time is reduced by 1.55 s.However,there is a certain degree of misclassification because the spatial structures of some targets are so complex that the laser irradiates to the edge of targets or only part of the laser irradiates to the surface of a target,thus leading to a large deviation in spectrum acquirement.The classification results could be smoothed by the boundary algorithm or conditional random field algorithm to eliminate the salt and pepper noise and improve the classification accuracy.
作者 陈博文 史硕 龚威 徐骞 汤兴涛 毕泗富 陈必武 Chen Bowen;Shi Shuo;Gong Wei;Xu Qian;Tang Xingtao;Bi Sifu;Chen Biwu(Chinese Antarctic Center of Surveying and Mapping,Wuhan University,Wuhan 430079,Hubei,China;State Key Laboratory of Information Engineering in Surveying,Mapping and Remote Sensing,Wuhan University,Wuhan 430079,Hubei,China;Electronic Information School,Wuhan University,Wuhan 430079,Hubei,China;Collaborative Innovation Center of Geospatial Technology,Wuhan 430079,Hubei,China;Shanghai Radio Equipment Research Institute,Shanghai 201109,China)
出处 《光学学报》 EI CAS CSCD 北大核心 2023年第12期276-288,共13页 Acta Optica Sinica
基金 国家自然科学基金(41971307,42001314) 中央高校基本科研业务费专项资金(2042022kf1200) 测绘遥感信息工程国家重点实验室专项科研经费资助。
关键词 遥感与传感器 激光雷达 高光谱成像 空谱特征 地物分类 remote sensing and sensors lidar hyperspectral imaging spatialspectral features target classification
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