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Lithological mapping with multispectral data–setup and application of a spectral database for rocks in the Balakot area, Northern Pakistan
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作者 Michael FUCHS Adnan A.AWAN +4 位作者 Sardar S.AKHTAR Ijaz AHMAD Simon SADIQ Asif RAZZAK Naghmah HAIDER 《Journal of Mountain Science》 SCIE CSCD 2017年第5期948-963,共16页
In the frame of landslide susceptibility assessment, a spectral library was created to support the identification of materials confined to a particular region using remote sensing images. This library, called Pakistan... In the frame of landslide susceptibility assessment, a spectral library was created to support the identification of materials confined to a particular region using remote sensing images. This library, called Pakistan spectral library(pklib) version 0.1, contains the analysis data of sixty rock samples taken in the Balakot region in Northern Pakistan.The spectral library is implemented as SQLite database. Structure and naming are inspired by the convention system of the ASTER Spectral Library. Usability, application and benefit of the pklib were evaluated and depicted taking two approaches, the multivariate and the spectral based. The spectral information were used to create indices. The indices were applied to Landsat and ASTER data tosupportthespatial delineation of outcropping rock sequences instratigraphic formations. The application of the indices introduced in this paper helps to identify spots where specific lithological characteristics occur. Especially in areas with sparse or missing detailed geological mapping, the spectral discrimination via remote sensing data can speed up the survey. The library can be used not only to support the improvement of factor maps for landslide susceptibility analysis, but also to provide a geoscientific basisto further analyze the lithological spotin numerous regions in the Hindu Kush. 展开更多
关键词 Lithological mapping Multispectral data spectral library Normalized difference index Northern Pakistan
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Predicting Nitrogen Status of Rice Using Multispectral Data at Canopy Scale 被引量:26
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作者 ZHANG Jin-Heng WANG Ke +1 位作者 J. S. BAILEY WANG Ren-Chao 《Pedosphere》 SCIE CAS CSCD 2006年第1期108-117,共10页
Two field experiments were conducted in Jiashan and Yuhang towns of Zhejiang Province, China, to study the feasibility of predicting N status of rice using canopy spectral reflectance. The canopy spectral reflectance ... Two field experiments were conducted in Jiashan and Yuhang towns of Zhejiang Province, China, to study the feasibility of predicting N status of rice using canopy spectral reflectance. The canopy spectral reflectance of rice grown with different levels of N inputs was determined at several important growth stages. Statistical analyses showed that as a result of the different levels of N supply, there were significant differences in the N concentrations of canopy leaves at different growth stages. Since spectral reflectance measurements showed that the N status of rice was related to reflectance in the visible and NIR (near-infrared) ranges, observations for rice in 1 nm bandwidths were then converted to bandwidths in the visible and NIR spectral regions with IKONOS (space imaging) bandwidths and vegetation indices being used to predict the N status of rice. The results indicated that canopy reflectance measurements converted to ratio vegetation index (RVI) and normalized difference vegetation index (NDVI) for simulated IKONOS bands provided a better prediction of rice N status than the reflectance measurements in the simulated IKONOS bands themselves. The precision of the developed regression models using RVI and NDVI proved to be very high with R2 ranging from 0.82 to 0.94, and when validated with experimental data from a different site, the results were satisfactory with R2 ranging from 0.55 to 0.70. Thus, the results showed that theoretically it should be possible to monitor N status using remotely sensed data. 展开更多
关键词 水稻 多谱线 光谱反射
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Selection of Spectral Data for Classification of Steels Using Laser-Induced Breakdown Spectroscopy 被引量:2
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作者 孔海洋 孙兰香 +2 位作者 胡静涛 辛勇 丛智博 《Plasma Science and Technology》 SCIE EI CAS CSCD 2015年第11期964-970,共7页
Principal component analysis(PCA) combined with artificial neural networks was used to classify the spectra of 27 steel samples acquired using laser-induced breakdown spectroscopy. Three methods of spectral data selec... Principal component analysis(PCA) combined with artificial neural networks was used to classify the spectra of 27 steel samples acquired using laser-induced breakdown spectroscopy. Three methods of spectral data selection, selecting all the peak lines of the spectra,selecting intensive spectral partitions and the whole spectra, were utilized to compare the influence of different inputs of PCA on the classification of steels. Three intensive partitions were selected based on experience and prior knowledge to compare the classification, as the partitions can obtain the best results compared to all peak lines and the whole spectra. We also used two test data sets, mean spectra after being averaged and raw spectra without any pretreatment, to verify the results of the classification. The results of this comprehensive comparison show that a back propagation network trained using the principal components of appropriate, carefully selected spectral partitions can obtain the best results. A perfect result with 100% classification accuracy can be achieved using the intensive spectral partitions ranging of 357-367 nm. 展开更多
关键词 光谱数据 激光诱导 分类 光谱分析 击穿 主成分分析 人工神经网络
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Some Peculiarities of the Preprocessing of Spectral Data and Images
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作者 Valentin Atanassov Georgi Jelev Lubomira Kraleva 《Journal of Shipping and Ocean Engineering》 2013年第1期55-60,共6页
关键词 光谱数据 图像 预处理 测量误差 定量分析 不确定性 可信度 遥感
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Research on Estimation Models of Chlorophyll Content in Apple Leaves Based on Imaging Hyperspectral Data
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作者 Luyan NIU Xiaoyan ZHANG +2 位作者 Jiabo SUN Jiye ZHENG Fengyun WANG 《Agricultural Biotechnology》 CAS 2018年第5期215-218,231,共5页
In view of the shortage of using traditional methods to monitor chlorophyll content,hyperspectral technology was used to estimate the chlorophyll content of apple leaves rapidly,accurately and non-destructively. Based... In view of the shortage of using traditional methods to monitor chlorophyll content,hyperspectral technology was used to estimate the chlorophyll content of apple leaves rapidly,accurately and non-destructively. Based on the data of hyperspectral reflectivity and SPAD value of normal apple leaves and the leaves under the stress of red spiders collected from the Wanjishan base in Tai'an,the correlations of SPAD value with the original spectral reflectivity of apple leaves and its first derivative and between SPAD value and high spectral value were analyzed to select sensitive bands,and the estimation models of chlorophyll content in apple leaves based on hyperspectral reflectivity were established. The sensitive bands of chlorophyll content in normal apple leaves were 513-539,564-585,694,699 and 720 nm,and the best estimation model of chlorophyll content was SPAD = 152. 450-1 884. 851 R377. The sensitive bands of chlorophyll content in the leaves under the stress of red spiders were 961,972 and 720 nm,and the best estimation model of chlorophyll content was SPAD = 49. 371-46 428. 473 R'972. 展开更多
关键词 评价模型 叶绿素 苹果 数据基 SPAD 成像 反射率 红蜘蛛
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Minimum distance constrained nonnegative matrix factorization for hyperspectral data unmixing 被引量:2
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作者 于钺 SunWeidong 《High Technology Letters》 EI CAS 2012年第4期333-342,共10页
关键词 非负矩阵分解 最小距离 高光谱数据 不混溶 高光谱遥感数据 混合像元分解 线性混合模型 欧几里德距离
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Monitoring Soil Salt Content Using HJ-1A Hyperspectral Data: A Case Study of Coastal Areas in Rudong County, Eastern China 被引量:4
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作者 LI Jianguo PU Lijie +5 位作者 ZHU Ming DAI Xiaoqing XU Yan CHEN Xinjian ZHANG Lifang ZHANG Runsen 《Chinese Geographical Science》 SCIE CSCD 2015年第2期213-223,共11页
Hyperspectral data are an important source for monitoring soil salt content on a large scale. However, in previous studies, barriers such as interference due to the presence of vegetation restricted the precision of m... Hyperspectral data are an important source for monitoring soil salt content on a large scale. However, in previous studies, barriers such as interference due to the presence of vegetation restricted the precision of mapping soil salt content. This study tested a new method for predicting soil salt content with improved precision by using Chinese hyperspectral data, Huan Jing-Hyper Spectral Imager(HJ-HSI), in the coastal area of Rudong County, Eastern China. The vegetation-covered area and coastal bare flat area were distinguished by using the normalized differential vegetation index at the band length of 705 nm(NDVI705). The soil salt content of each area was predicted by various algorithms. A Normal Soil Salt Content Response Index(NSSRI) was constructed from continuum-removed reflectance(CR-reflectance) at wavelengths of 908.95 nm and 687.41 nm to predict the soil salt content in the coastal bare flat area(NDVI705 < 0.2). The soil adjusted salinity index(SAVI) was applied to predict the soil salt content in the vegetation-covered area(NDVI705 ≥ 0.2). The results demonstrate that 1) the new method significantly improves the accuracy of soil salt content mapping(R2 = 0.6396, RMSE = 0.3591), and 2) HJ-HSI data can be used to map soil salt content precisely and are suitable for monitoring soil salt content on a large scale. 展开更多
关键词 东部沿海地区 土壤含盐量 中国东部地区 高光谱数据 盐分含量 如东县 监测 数据预测
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Study on shallow groundwater information extraction technology based on multi-spectral data and spatial data 被引量:9
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作者 YU DeHao DENG ZhengDong +3 位作者 LONG Fan GUAN HongJun WANG DaQing GOU YiZheng 《Science China(Technological Sciences)》 SCIE EI CAS 2009年第5期1420-1428,共9页
Aimed at solving the difficulties,such as low efficiency and limited exploration range encountered in finding groundwater with the traditional methods,a new method was presented by using remote sensing technology in t... Aimed at solving the difficulties,such as low efficiency and limited exploration range encountered in finding groundwater with the traditional methods,a new method was presented by using remote sensing technology in this paper.Based on multi-spectral data(ETM data) and spatial data(SRTM data),a forecasting model was built to produce a probability rating map for finding shallow groundwater in the arid and semi-arid areas.According to investigations,a conclusion is drawn that the results of the model are satisfied,which have been testified by the later geophysical exploration and drilling.Thus,the model can serve as a guide for finding groundwater in the arid and semi-arid regions. 展开更多
关键词 REMOTE SENSING SHALLOW GROUNDWATER forecasting model MULTI-spectral data spatial data
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Study on the biomass change derived from the hyperspectral data of cotton leaves in canopy under moisture stress 被引量:1
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作者 SUN Li CHEN Xi +4 位作者 WU Jianjun FENG Xianwei BAO Anming MA Yaqin WANG Dengwei 《Chinese Science Bulletin》 SCIE EI CAS 2006年第A01期173-178,共6页
在这研究,在美国做的一个 ASD 分光计被用来在北方 Xinjiang 在华盖导出棉花叶子的 hyperspectral 数据。红边的不可分的区域变量被用来在华盖在棉花叶子估计全部的氮(TN ) 内容。反射系列微分的第一份订单被执行。分析方法基于光谱位... 在这研究,在美国做的一个 ASD 分光计被用来在北方 Xinjiang 在华盖导出棉花叶子的 hyperspectral 数据。红边的不可分的区域变量被用来在华盖在棉花叶子估计全部的氮(TN ) 内容。反射系列微分的第一份订单被执行。分析方法基于光谱位置变量从第一份订单被导出微分光谱数据。在红边的不可分的区域之间的关联上的分析( SDr ,认为是独立变量)并且 TN 内容(认为是功能)被执行,并且在在棉花变化的华盖叶子的红边和 TN 内容的不可分的区域之间的数学模型作为 Xinluzao 说出 No.6 的关联被开发。在在单个棉花的叶绿素内容和 TN 内容之间的关联上的分析在华盖与不同的水体积在灌溉下面成长离开被执行。结果证明在叶绿素内容和 TN 内容之间有重要积极关联(R = 0.8723, n = 39 ) ,并且叶绿素内容的数据能被用来在单个棉花叶子估计 TN 内容;在在在华盖的棉花叶子的红边和 TN 内容的不可分的区域变量之间的关联是重要的,他们的关联系数是 0.7394 ( n = 40 ),在作为 Xinluzao 号码 6 和号码 8 罐头说出的棉花变化的华盖叶子的 TN 内容被使用发达模型精确地估计,并且他们的 RMSE 价值分别地是 0.3859 和 0.4272 。在研究以后,有一个适用的潜力使用红边的不可分的区域变量在华盖在棉花叶子估计 TN 内容,这被考虑,并且数学模型与第三方面的区域变量发展了让高适用在在庄稼华盖导出 TN 内容珍视。认出应力由研究移动和红边的变化程度由棉花植物承受了的潮湿是可行的,这也被考虑,并且钥匙是开发相应合理识别索引系统。 展开更多
关键词 水应力 棉花 光谱数据 生物量
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Spectral-spatial target detection based on data field modeling for hyperspectral data 被引量:3
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作者 Da LIU Jianxun LI 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2018年第4期795-805,共11页
Target detection is always an important application in hyperspectral image processing field. In this paper, a spectral-spatial target detection algorithm for hyperspectral data is proposed.The spatial feature and spec... Target detection is always an important application in hyperspectral image processing field. In this paper, a spectral-spatial target detection algorithm for hyperspectral data is proposed.The spatial feature and spectral feature were unified based on the data filed theory and extracted by weighted manifold embedding. The novelties of the proposed method lie in two aspects. One is the way in which the spatial features and spectral features were fused as a new feature based on the data field theory, and the other is that local information was introduced to describe the decision boundary and explore the discriminative features for target detection. The extracted features based on data field modeling and manifold embedding techniques were considered for a target detection task.Three standard hyperspectral datasets were considered in the analysis. The effectiveness of the proposed target detection algorithm based on data field theory was proved by the higher detection rates with lower False Alarm Rates(FARs) with respect to those achieved by conventional hyperspectral target detectors. 展开更多
关键词 谱空间 模特儿 空间特征 嵌入技术 特征基 应用程序 数据集 算法
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Crop Discrimination Using Field Hyper Spectral Remotely Sensed Data
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作者 Sayed M. Arafat Mohamed A. Aboelghar Eslam F. Ahmed 《Advances in Remote Sensing》 2013年第2期63-70,共8页
Crop discrimination through satellite imagery is still problematic. Accuracy of crop classification for high spatial resolution satellite imagery in the intensively cultivated lands of the Egyptian Nile delta is still... Crop discrimination through satellite imagery is still problematic. Accuracy of crop classification for high spatial resolution satellite imagery in the intensively cultivated lands of the Egyptian Nile delta is still low. Therefore, the main objective of this research is to determine the optimal hyperspectral wavebands in the spectral range of (400 - 2500 nm) to discriminate between two winter crops (Wheat and Clover) and two summer crops (Maize and Rice). This is considered as a first step to improve crop classification through satellite imagery in the intensively cultivated areas in Egypt. Hyperspectral ground measurements of ASD field Spec3 spectroradiometer was used to monitor the spectral reflectance profile during the period of the maximum growth stage of the four crops. 1-nm-wide was aggregated to 10-nm-wide bandwidths. After accounting for atmospheric windows and/or areas of significant noise, a total of 2150 narrow bands in 400 - 2500 nm were used in the analysis. Spectral reflectance was divided into six spectral zones: blue, green, red, near-infrared, shortwave infrared-I and shortwave infrared-II. One Way ANOVA and Tukey’s HSD post hoc analysis was performed to choose the optimal spectral zone that could be used to differentiate the different crops. Then, linear regression discrimination (LDA) was used to identify the specific optimal wavebands in the spectral zones in which each crop could be spectrally identified. The results of Tukey’s HSD showed that blue, NIR, SWIR-1 and SWIR-2 spectral zones are more sufficient in the discrimination between wheat and clover than green and red spectral zones. At the same time, all spectral zones were quite sufficient to discriminate between rice and maize. The results of (LDA) showed that the wavelength zone (727:1299 nm) was the optimal to identify clover crop while three zones (350:712, 1451:1562, 1951:2349 nm) could be used to identify wheat crop. The spectral zone (730:1299 nm) was the optimal to identify maize crop while three spectral zones were the best to identify rice crop (350:713, 1451:1532, 1951:2349 nm). An average of thirty measurements for each crop was considered in the process. These results will be used in machine learning process to improve the performance of the existing remote sensing software’s to isolate the different crops in intensive cultivated lands. The study was carried out in Damietta governorate of Egypt. 展开更多
关键词 HYPER spectral data CROP DISCRIMINATION
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Use of Linear Spectral Mixture Model to Estimate Rice Planted Area Based on MODIS Data 被引量:2
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作者 WANG Lei Satoshi UCHID 《Rice science》 SCIE 2008年第2期131-136,共6页
MODIS (Moderate Resolution Imaging Spectroradiometer) is a key instrument aboard the Terra (EOS AM) and Aqua (EOS PM) satellites. Linear spectral mixture models are applied to MOIDS data for the sub-pixel classificati... MODIS (Moderate Resolution Imaging Spectroradiometer) is a key instrument aboard the Terra (EOS AM) and Aqua (EOS PM) satellites. Linear spectral mixture models are applied to MOIDS data for the sub-pixel classification of land covers. Shaoxing county of Zhejiang Province in China was chosen to be the study site and early rice was selected as the study crop. The derived proportions of land covers from MODIS pixel using linear spectral mixture models were compared with unsupervised classification derived from TM data acquired on the same day, which implies that MODIS data could be used as satellite data source for rice cultivation area estimation, possibly rice growth monitoring and yield forecasting on the regional scale. 展开更多
关键词 水稻 种植区域 线性光谱混合剂 中等分变成像分光辐射度计
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油液光谱数据诊断综合传动装置异常磨损定位方法
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作者 徐峰 张倩倩 +3 位作者 季文龙 贾然 张鹏 郑长松 《光谱学与光谱分析》 SCIE EI CAS CSCD 北大核心 2024年第5期1398-1404,共7页
磨损是影响综合传动装置工作可靠性及使用寿命的重要因素之一,当前相关研究中常用的聚类、主成分分析、加权融合等油液光谱数据分析方法,缺乏对特定元素浓度指标异常磨损情况下随时间增长的考虑。为分析综合传动装置不同零部件的磨损状... 磨损是影响综合传动装置工作可靠性及使用寿命的重要因素之一,当前相关研究中常用的聚类、主成分分析、加权融合等油液光谱数据分析方法,缺乏对特定元素浓度指标异常磨损情况下随时间增长的考虑。为分析综合传动装置不同零部件的磨损状态,提出一种基于油液光谱数据的零部件异常磨损定位分析方法。针对综合传动装置异常磨损过程中部分元素在特定阶段会出现快速增长的情况,提出基于时间窗相关距离的聚类方法,分离表征不同零部件磨损状态的元素;提出磨损元素的磨损趋势分级方法,以高磨损趋势元素为聚类中心,使聚类结果具备可解释性;通过分级系数确定零部件磨损元素权重,融合各零部件磨损元素,获取不同零部件磨损状态表征;通过异常磨损界限值识别异常磨损,实现零部件异常磨损定位。以综合传动装置润滑油液光谱数据为例,检测判断该装置异常磨损的零部件及时间段。检测结果表明:Fe、Cu、Pb三种元素的磨损趋势分级系数最高,携带大量磨损信息,能够有效表征装置的磨损状态;基于时间窗相关距离的有中心聚类方法,成功将油液光谱数据分为Fe、Cu、Pb三类,可用于有效表征整体、摩擦片、齿轮组的磨损状态;基于分级系数的加权融合方法可以有效对该装置的异常磨损部位和时间周期进行检测和判断,为后续的故障预防和维护提供技术指导。 展开更多
关键词 机械磨损 油液光谱数据 磨损趋势分级 异常磨损定位
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Data organization and management of mine typical object spectral libraries
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作者 季民 Jin Fengxiang +2 位作者 Li Ting Sun Yong Guo Lifeng 《High Technology Letters》 EI CAS 2015年第1期96-101,共6页
With the development of mining industry,people have obtained profits from it,but they are facing environmental damages.In order to monitor these environmental changes,a spectral library is set up for the spectrum data... With the development of mining industry,people have obtained profits from it,but they are facing environmental damages.In order to monitor these environmental changes,a spectral library is set up for the spectrum data organization and management of mine typical objects.Most of the spectrum data come from the long-term field measuring in mining area and other spectral libraries.For the data quality control and error detection in the measuring data,an inner precision calculation method is presented and a series of interactive graphical controls are developed for the spectrum visualization and analysis.Through extracting and saving spectrum characters for the mine typical objects,realizs spectrum matching and classification for new measured spectrum samples are realized by using Euclidean distance,Aitchison distance,Pearson correlation coefficient and vector angular cosine methods.Based on the matching result,this work is able to gather dynamically physicochemical environment parameters from the library and gives an early warning for the mine environmental changes. 展开更多
关键词 数据组织 光谱库 库管理 数据质量控制 频谱特征 环境变化 野外测量 欧氏距离
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基于可见光-近红外高光谱信息与数据融合的木质化鸡胸肉的判别模型构建
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作者 张娜 李震 +5 位作者 兰维杰 屠康 武杰 王兆山 赵干 潘磊庆 《食品工业科技》 CAS 北大核心 2024年第7期286-293,共8页
木质化鸡胸肉(wooden breast,WB)制约肉鸡行业发展,传统触诊检测方法耗时且效率低,为提升高光谱成像(hyperspectral imaging,HSI)技术检测鸡胸肉木质化程度的效果,本论文以白羽鸡鸡胸肉为研究对象,将其划分4个木质化等级,采集其在400~1... 木质化鸡胸肉(wooden breast,WB)制约肉鸡行业发展,传统触诊检测方法耗时且效率低,为提升高光谱成像(hyperspectral imaging,HSI)技术检测鸡胸肉木质化程度的效果,本论文以白羽鸡鸡胸肉为研究对象,将其划分4个木质化等级,采集其在400~1000和1000~2000 nm内的HSI信息,通过不同光谱预处理算法和特征波段筛选方法,建立基于全波段、特征波段和HSI数据融合的偏最小二乘判别分析(Partial least squares-discriminant analysis,PLS-DA)模型和支持向量机(Support vector machine,SVM)模型。结果显示,SVM模型比PLSDA模型更适于判别鸡胸肉木质化程度,基于1000~2000 nm内全波段和特征波段的最佳模型预测集总体正确率均高于400~1000 nm内的模型,基于两波段HSI数据融合的木质化判别模型优于基于单一波段(包括全波段和特征波段)的模型,最佳模型预测集总体正确率为96.7%,能较好地区分出4个木质化等级,且对4个等级的判别准确率均可达90%以上。研究结果为HSI实现木质化鸡胸肉的准确无损检测提供技术支持。 展开更多
关键词 木质化鸡胸肉 可见-近红外高光谱 短波红外高光谱 光谱数据融合 判别模型
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基于多角度高光谱指数的花岗岩中长石含量反演研究
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作者 吴梦娟 靳佳 +1 位作者 王金林 王权 《地质学报》 EI CAS CSCD 北大核心 2024年第1期314-323,共10页
花岗岩中长石含量的定量估算有助于其定名和分类,为后续相关地质过程研究提供基础数据。在可见光—近红外—短波红外波段范围内(0.35~2.5μm),传统基于光谱吸收特征参数反演矿物种类和含量的方法,不适用于像长石这类无诊断性吸收特征的... 花岗岩中长石含量的定量估算有助于其定名和分类,为后续相关地质过程研究提供基础数据。在可见光—近红外—短波红外波段范围内(0.35~2.5μm),传统基于光谱吸收特征参数反演矿物种类和含量的方法,不适用于像长石这类无诊断性吸收特征的矿物。同时,基于物理的辐射传输模型由于计算复杂,在较大程度上限制了该方法在矿物定量反演中的应用。本文基于多角度高光谱数据,通过不同光谱预处理方法及光谱指数类型的组合实验,创建用于估算花岗岩中长石比例的光谱指数模型。结果表明,使用2035 nm波段的反射率二重差分型(CRDDn_(2035))指数模型,在不同实测数据集中均具有良好表现,估算精度达到0.81。本研究创建了一种适用于估算长石占比的光谱指数模型,为定量反演具有弱吸收特征的岩矿信息提供了新的技术手段与思路。 展开更多
关键词 多角度高光谱数据 光谱指数 花岗岩中长石定量反演 Hapke模型
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基于三阶张量的大规模数据谱聚类集成算法
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作者 仵匀政 杜韬 +2 位作者 周劲 陈迪 王心耕 《大数据》 2024年第3期133-148,共16页
为了降低大规模数据谱聚类计算负担,进一步提高聚类的准确性和鲁棒性,提出了一种基于三阶张量的大规模数据谱聚类集成算法。首先,提出一种混合代表最近邻近似方法构造数据间的稀疏亲和子矩阵;然后将稀疏亲和子矩阵表示为二部图,通过图... 为了降低大规模数据谱聚类计算负担,进一步提高聚类的准确性和鲁棒性,提出了一种基于三阶张量的大规模数据谱聚类集成算法。首先,提出一种混合代表最近邻近似方法构造数据间的稀疏亲和子矩阵;然后将稀疏亲和子矩阵表示为二部图,通过图分割的方法得到初步聚类结果;最后,提出三阶张量集成方法,将多个聚类结果进行融合,得到最终的聚类结果。在大规模的真实数据集和合成数据集上验证,相较经典的谱聚类算法、聚类集成算法以及近年来对其改进的算法,该算法表现出更优异的性能。 展开更多
关键词 数据聚类 大规模数据 谱聚类 三阶张量 聚类集成
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基于LiDAR数据与光谱影像融合的单木提取方法
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作者 孟小前 李俊磊 +3 位作者 胡伟 田茂杰 马春田 王瑞瑞 《农业机械学报》 EI CAS CSCD 北大核心 2024年第1期203-211,262,共10页
针对现有的机载数据单木分割方法对林型的普适度不高,尤其在高郁闭度阔叶林地带提取精度偏低的问题,选用海南省海口市热带阔叶林地带的光谱影像和LiDAR数据,先采用基于距离阈值的单木分割方法,利用高分光谱影像分割得到的树冠边缘,对初... 针对现有的机载数据单木分割方法对林型的普适度不高,尤其在高郁闭度阔叶林地带提取精度偏低的问题,选用海南省海口市热带阔叶林地带的光谱影像和LiDAR数据,先采用基于距离阈值的单木分割方法,利用高分光谱影像分割得到的树冠边缘,对初始探测树顶点进行位置约束。获得单木顶点的精确定位后,采用基于种子点的单木分割方法分割,完成了阔叶林的单木提取。结果显示,与已有的基于单木间相对间距单木分割方法相比,本研究通过选取最佳分割尺度结合光谱影像进行精确定位,改善了原有单一尺度分割方法导致的过分割现象,将单木识别精确率由0.67提升至0.92。该方法在使用遥感对森林单木进行分割工作中,可以更好地识别单木,对不同林型适用度较高,可以为后续的单木信息提取工作提供数据基础。 展开更多
关键词 针阔叶混交林 单木分割 机载LIDAR 光谱影像 数据融合
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基于光谱特征和图像处理的真丝织物光泽研究
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作者 朱巧武 梁帅童 +3 位作者 丁雪梅 裴刘军 张红娟 王际平 《丝绸》 CAS CSCD 北大核心 2024年第2期51-59,共9页
在评价织物品质与风格时需要对织物的光泽感进行评价,基于图像处理的织物光泽评价技术较其他评价技术具有诸多优点,但在关键的织物图像光泽特征的构建上,仍需要进行研究。本文选用本白色真丝素绉缎织物作为浅色样本,蓝色和黑色真丝素绉... 在评价织物品质与风格时需要对织物的光泽感进行评价,基于图像处理的织物光泽评价技术较其他评价技术具有诸多优点,但在关键的织物图像光泽特征的构建上,仍需要进行研究。本文选用本白色真丝素绉缎织物作为浅色样本,蓝色和黑色真丝素绉缎织物作为深色样本,粉红色和棕色样本验证分析结论。通过真丝织物的光谱数据分析对光泽度主观评价的影响因素,并建立有效的织物光泽图像特征对织物光泽评价。本文通过对真丝织物的光谱数据分析,发现织物的颜色明度与主观评分相关性很低,颜色的色相显著影响主观评分结果。并且织物的波长反射率在530~560 nm改变时,对织物光泽的主观评分影响最大。以此建立的织物光泽图像特征,表明织物表面亮点与整体表面背景亮度的对比度是基于图像处理评价技术的关键之一。 展开更多
关键词 真丝织物 光谱特征 主观评价 数据分析 图像处理
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恒星光谱数据弱特征识别方法
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作者 贺艳婷 周嘉炜 +3 位作者 杨雨晴 贾凯雪 唐文龙 杨海峰 《太原科技大学学报》 2024年第2期137-142,共6页
恒星光谱弱特征识别是LAMOST光谱数据分析的重要研究内容,能够为恒星光谱分类提供重要科学依据。目前,针对恒星光谱数据进行特征识别的方法较多,但是缺乏对某种特定特征谱线进行精确提取的算法。针对LAMOST低分辨光谱数据中Hα弱发射线... 恒星光谱弱特征识别是LAMOST光谱数据分析的重要研究内容,能够为恒星光谱分类提供重要科学依据。目前,针对恒星光谱数据进行特征识别的方法较多,但是缺乏对某种特定特征谱线进行精确提取的算法。针对LAMOST低分辨光谱数据中Hα弱发射线轮廓形态多样问题,提出了一种基于置信度的Hα弱发射线识别方法。首先,基于Hα弱发射线轮廓形态特征给出Hα弱发射线的置信度的度量方法。利用Hα发射线波长区间内峰值与发射线的偏移量建立距离置信度模型,根据高斯轮廓所含像素点个数建立高斯轮廓副信息模型,通过计算峰值左右波形的差异建立对称性评估模型,结合三个模型给出最终的Hα弱发射线的置信度,并基于此置信度进行第一轮筛选。为了提高精度,提出了借助其它发射线的特征给出了基于二分类的Hα发射线筛选策略。通过考察Hβ、NII、OIII以及SII发射线的特征,基于辅助信息的决策树进行第二轮筛选,进一步提高筛选的精度。实验结果表明:提出的Hα弱发射线的特征度量方法的准确度高达90%,并且速度较快,平均每1 k数据耗时仅三十多秒。 展开更多
关键词 决策树 二元分类 置信度 弱发射线 LAMOST光谱数据
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