期刊文献+
共找到5,991篇文章
< 1 2 250 >
每页显示 20 50 100
A Novel Human Interaction Framework Using Quadratic Discriminant Analysis with HMM
1
作者 Tanvir Fatima Naik Bukht Naif Al Mudawi +5 位作者 Saud S.Alotaibi Abdulwahab Alazeb Mohammed Alonazi Aisha Ahmed AlArfaj Ahmad Jalal Jaekwang Kim 《Computers, Materials & Continua》 SCIE EI 2023年第11期1557-1573,共17页
Human-human interaction recognition is crucial in computer vision fields like surveillance,human-computer interaction,and social robotics.It enhances systems’ability to interpret and respond to human behavior precise... Human-human interaction recognition is crucial in computer vision fields like surveillance,human-computer interaction,and social robotics.It enhances systems’ability to interpret and respond to human behavior precisely.This research focuses on recognizing human interaction behaviors using a static image,which is challenging due to the complexity of diverse actions.The overall purpose of this study is to develop a robust and accurate system for human interaction recognition.This research presents a novel image-based human interaction recognition method using a Hidden Markov Model(HMM).The technique employs hue,saturation,and intensity(HSI)color transformation to enhance colors in video frames,making them more vibrant and visually appealing,especially in low-contrast or washed-out scenes.Gaussian filters reduce noise and smooth imperfections followed by silhouette extraction using a statistical method.Feature extraction uses the features from Accelerated Segment Test(FAST),Oriented FAST,and Rotated BRIEF(ORB)techniques.The application of Quadratic Discriminant Analysis(QDA)for feature fusion and discrimination enables high-dimensional data to be effectively analyzed,thus further enhancing the classification process.It ensures that the final features loaded into the HMM classifier accurately represent the relevant human activities.The impressive accuracy rates of 93%and 94.6%achieved in the BIT-Interaction and UT-Interaction datasets respectively,highlight the success and reliability of the proposed technique.The proposed approach addresses challenges in various domains by focusing on frame improvement,silhouette and feature extraction,feature fusion,and HMM classification.This enhances data quality,accuracy,adaptability,reliability,and reduction of errors. 展开更多
关键词 Human interaction recognition HMM classification quadratic discriminant analysis dimensionality reduction
下载PDF
A Highly Accurate Dysphonia Detection System Using Linear Discriminant Analysis
2
作者 Anas Basalamah Mahedi Hasan +1 位作者 Shovan Bhowmik Shaikh Akib Shahriyar 《Computer Systems Science & Engineering》 SCIE EI 2023年第3期1921-1938,共18页
The recognition of pathological voice is considered a difficult task for speech analysis.Moreover,otolaryngologists needed to rely on oral communication with patients to discover traces of voice pathologies like dysph... The recognition of pathological voice is considered a difficult task for speech analysis.Moreover,otolaryngologists needed to rely on oral communication with patients to discover traces of voice pathologies like dysphonia that are caused by voice alteration of vocal folds and their accuracy is between 60%–70%.To enhance detection accuracy and reduce processing speed of dysphonia detection,a novel approach is proposed in this paper.We have leveraged Linear Discriminant Analysis(LDA)to train multiple Machine Learning(ML)models for dysphonia detection.Several ML models are utilized like Support Vector Machine(SVM),Logistic Regression,and K-nearest neighbor(K-NN)to predict the voice pathologies based on features like Mel-Frequency Cepstral Coefficients(MFCC),Fundamental Frequency(F0),Shimmer(%),Jitter(%),and Harmonic to Noise Ratio(HNR).The experiments were performed using Saarbrucken Voice Data-base(SVD)and a privately collected dataset.The K-fold cross-validation approach was incorporated to increase the robustness and stability of the ML models.According to the experimental results,our proposed approach has a 70%increase in processing speed over Principal Component Analysis(PCA)and performs remarkably well with a recognition accuracy of 95.24%on the SVD dataset surpassing the previous best accuracy of 82.37%.In the case of the private dataset,our proposed method achieved an accuracy rate of 93.37%.It can be an effective non-invasive method to detect dysphonia. 展开更多
关键词 Dimensionality reduction dysphonia detection linear discriminant analysis logistic regression speech feature extraction support vector machine
下载PDF
Prioritization of W. Mujib Catchment (South Jordan) through Morphometric and Discriminant Analysis, GIS, and RS Techniques 被引量:1
3
作者 Yahya Farhan Dalal Zreqat +2 位作者 Ali Anbar Haifa Almohammad Sireen Alshawamreh 《Journal of Geoscience and Environment Protection》 2018年第4期141-171,共31页
GIS and remote sensing were utilized for prioritizing the W. Mujib catchment. Fifty three fourth-order sub-watersheds were prioritized based on morphometric analysis of linear and shape parameters. ASTER DEM (v.2), to... GIS and remote sensing were utilized for prioritizing the W. Mujib catchment. Fifty three fourth-order sub-watersheds were prioritized based on morphometric analysis of linear and shape parameters. ASTER DEM (v.2), topographical maps, and Arc GIS (10.1) software, have been employed to delineate the 53 sub-basins, to extract the drainage networks, and to compute the required basic, linear, and shape parameters, and to compile the necessary thematic maps such as elevation and slope categories. The land use/land cover map was generated using ERDAS Imagine (2015), LANDSAT 8 image, and supervised classification (Maximum Likelihood Method). Soil map was digitized using the Arc GIS tool. Each sub-basin is prioritized by assigning ranks based on the calculated compound parameter (Cp). The final score for each sub-basin is ascribed as per erosion threat. The 53 sub-watersheds were grouped into four categories of priority: very high (15 sub-basins, 28.3% of the total), high (17 sub-basins, 32% of the total), moderate (16 sub-basins, 30.2% of the total), and low (5 sub-basins, 9.5% of the total). Sub-basins categorized as very high and high priority (60.3% of the total) are subjected to high erosion risk, thus, creating an urgent need for applying soil and water conservation measures. The validity of the prioritized four groups was tested statistically by means of Discriminant Analysis (DA), and a significant difference was found between the four priority classes. A relatively complete separation exists between the recognized priority classes;thus, they are statistically valid, distinct, and different from each other. The present results intend to help decision makers pay sufficient attention to soil and water conservation programs, and to encourage tree plantation over the government-owned sloping land. Such procedures are essential in order to minimize soil erosion loss, and to increase soil moisture on farms, thus, reducing the impact of recurrent droughts and the possibility of flooding downstream. 展开更多
关键词 MORPHOMETRIC analysis PRIORITIZATION discriminant analysis GIS Soil Conservation W. Mujib
下载PDF
Unveiling the Predictive Capabilities of Machine Learning in Air Quality Data Analysis: A Comparative Evaluation of Different Regression Models
4
作者 Mosammat Mustari Khanaum Md Saidul Borhan +2 位作者 Farzana Ferdoush Mohammed Ali Nause Russel Mustafa Murshed 《Open Journal of Air Pollution》 2023年第4期142-159,共18页
Air quality is a critical concern for public health and environmental regulation. The Air Quality Index (AQI), a widely adopted index by the US Environmental Protection Agency (EPA), serves as a crucial metric for rep... Air quality is a critical concern for public health and environmental regulation. The Air Quality Index (AQI), a widely adopted index by the US Environmental Protection Agency (EPA), serves as a crucial metric for reporting site-specific air pollution levels. Accurately predicting air quality, as measured by the AQI, is essential for effective air pollution management. In this study, we aim to identify the most reliable regression model among linear discriminant analysis (LDA), quadratic discriminant analysis (QDA), logistic regression, and K-nearest neighbors (KNN). We conducted four different regression analyses using a machine learning approach to determine the model with the best performance. By employing the confusion matrix and error percentages, we selected the best-performing model, which yielded prediction error rates of 22%, 23%, 20%, and 27%, respectively, for LDA, QDA, logistic regression, and KNN models. The logistic regression model outperformed the other three statistical models in predicting AQI. Understanding these models' performance can help address an existing gap in air quality research and contribute to the integration of regression techniques in AQI studies, ultimately benefiting stakeholders like environmental regulators, healthcare professionals, urban planners, and researchers. 展开更多
关键词 Regression analysis Air Quality Index Linear discriminant analysis Quadratic discriminant analysis Logistic Regression K-Nearest Neighbors Machine Learning Big data analysis
下载PDF
坝肩岩体质量LDA-KNN分类模型
5
作者 荀鹏 李娟 +2 位作者 魏玉峰 李常虎 范文东 《成都理工大学学报(自然科学版)》 CAS CSCD 北大核心 2024年第2期281-290,302,共11页
工程岩体质量分级评价对工程的安全、设计、经济效益等有重要影响。针对当前岩级划分方法中存在不确定性,人为因素干扰和忽视了传统定性分级中对岩体质量评价的重要性等问题,本文通过在工程实际中搜集样本建立数据库,从工程的实际需求出... 工程岩体质量分级评价对工程的安全、设计、经济效益等有重要影响。针对当前岩级划分方法中存在不确定性,人为因素干扰和忽视了传统定性分级中对岩体质量评价的重要性等问题,本文通过在工程实际中搜集样本建立数据库,从工程的实际需求出发,选择岩体完整性系数(K v)、结构面间距(D)、岩石质量指标(RQD)等合适的评价指标,通过引入LDA(Linear Discriminant Analysis)降维方法和K近邻分析(K-Nearest-Neighbor,KNN)相结合的多分类模型,实现了岩体的非线性分级预测。通过定性定量相结合实现了岩体多因素,多指标的综合分级,并解决了多指标判断时信息冗余,复杂程度高的问题。与其他判别方案相比较,模型得出的结果准确率高,符合工程实际,减少了人为因素的影响,体现出较强的预测判别能力。该研究为水电站大坝坝肩处的平硐岩体质量划分提出了一种可行的预测方案。 展开更多
关键词 岩体结构 岩体质量分级 线性降维 K近邻算法 分类模型
下载PDF
基于PLS-DA和LS-SVM的可见/短波近红外光谱鉴定港种四九、十月红和九月鲜菜心种子的可行性研究
6
作者 章海亮 聂训 +5 位作者 廖少敏 詹白勺 罗微 刘书玲 刘雪梅 谢潮勇 《光谱学与光谱分析》 SCIE EI CAS CSCD 北大核心 2024年第6期1718-1723,共6页
目前市面上菜心的品种复杂,不同菜心种子的品质与发芽率不同,但菜心种子单从外观上差别不大,因此区分菜心种子的类别成为了一大难题。为了实现菜心种子类别的快速区分,探究了基于可见/短波近红外光谱分析菜心种子类别的可行性。从南昌... 目前市面上菜心的品种复杂,不同菜心种子的品质与发芽率不同,但菜心种子单从外观上差别不大,因此区分菜心种子的类别成为了一大难题。为了实现菜心种子类别的快速区分,探究了基于可见/短波近红外光谱分析菜心种子类别的可行性。从南昌市种子交易场所购买了港种四九、十月红和九月鲜三个品种的菜心种子,从中挑选出品相较好且大小适中的子粒,将每种菜心种子均匀分为30份,按照2∶1划分为建模集和预测集,所有样本共计90份。通过近红外光谱仪获取采样间隔为1 nm的菜心种子的光谱反射率,波长覆盖范围325~1075 nm,将原始光谱数据采用多元散射校正(MSC)、卷积平滑(S-G)和标准正态变换(SNV)三种预处理方法进行预处理,预处理后的光谱变量建立偏最小二乘回归(PLSR)模型,确定了SNV是最佳预处理方法。采用主成分分析(PCA)对菜心种子进行了聚类分析,从前三个主成分因子(PCs)得分图可知三种菜心种子存在光谱特征差异。将原始光谱变量、前三个PCs(累计贡献97.15%)和基于随机蛙跳(RF)算法挑选的13个特征波长作为偏最小二乘判别(PLS-DA)和最小二乘支持向量机(LS-SVM)模型的输入变量,从模型结果可知:三种输入变量中,采用RF筛选特征波长作为模型输入变量时,模型预测效果最好,PCs建立的模型最差,相比于PCA分析,采用RF筛选出的特征波长更能够反映原始光谱信息。比较不同模型预测效果,LS-SVM模型比PLS-DA模型得到的预测精度更好,其中RF-LS-SVM模型是所有模型中最佳的预测模型,建模集和预测集均为100%。采用可见/短波近红外光谱研究菜心种子的类别可行,并且能够获得很好地预测效果,为菜心种子的快速区分提供了理论依据。 展开更多
关键词 菜心种子 主成分分析 随机青蛙 偏最小二乘判别 最小二乘支持向量机
下载PDF
Linear Discriminant Analysis and Kernel Vector Quantization for Mandarin Digits Recognition
7
作者 赵军辉 谢湘 匡镜明 《Journal of Beijing Institute of Technology》 EI CAS 2004年第4期385-388,共4页
Linear discriminant analysis and kernel vector quantization are integrated into vector quantization based speech recognition system for improving the recognition accuracy of Mandarin digits. These techniques increase ... Linear discriminant analysis and kernel vector quantization are integrated into vector quantization based speech recognition system for improving the recognition accuracy of Mandarin digits. These techniques increase the class separability and optimize the clustering procedure. Speaker-dependent (SD) and speaker-independent (SI) experiments are performed to evaluate the performance of the proposed method. The experiment results show that the proposed method is capable of reaching the word error rate of 3.76% in SD case and 6.60 % in SI case. Such a system can be suitable for being embedded in personal digital assistant(PDA), mobile phone and so on to perform voice controlling such as digit dialing, calculating, etc. 展开更多
关键词 linear discriminant analysis kernel vector quantization speech recognition
下载PDF
QAMS多组分定量联合PCA、OPLS-DA及GRA分析法评价白花蛇舌草的质量
8
作者 蔡淑珍 王晓虹 +1 位作者 王志刚 孟向尚 《中医药导报》 2024年第5期71-78,共8页
目的:采用高效液相-一测多评(HPLC-QAMS)法联合化学计量学及灰色关联度分析法评价白花蛇舌草质量。方法:采用Alltima C_(18)色谱柱(5.0μm,250.0 mm×4.6 mm),0.2%磷酸-乙腈为流动相梯度洗脱;以芦丁为参照物,建立其与京尼平苷酸、... 目的:采用高效液相-一测多评(HPLC-QAMS)法联合化学计量学及灰色关联度分析法评价白花蛇舌草质量。方法:采用Alltima C_(18)色谱柱(5.0μm,250.0 mm×4.6 mm),0.2%磷酸-乙腈为流动相梯度洗脱;以芦丁为参照物,建立其与京尼平苷酸、京尼平苷、车叶草苷酸、车叶草苷、2-羟基-3-甲基蒽醌、1,2-二羟基-3-甲基蒽醌、槲皮素、山柰酚、齐墩果酸、熊果酸、豆甾醇和β-谷甾醇的相对校正因子并进行校正因子耐用性考察。同时采用ESM和QAMS法测定收集到的16批白花蛇舌草中该13种成分的含量,再运用统计软件进行化学计量学及灰色关联度分析。结果:13种成分方法学验证均符合2020年版《中华人民共和国药典》要求。京尼平苷酸、京尼平苷、车叶草苷酸、车叶草苷、2-羟基-3-甲基蒽醌、1,2-二羟基-3-甲基蒽醌、槲皮素、山柰酚、齐墩果酸、熊果酸、豆甾醇、β-谷甾醇与芦丁的平均相对校正因子分别为0.9489、0.7033、0.7824、1.1359、0.5845、0.8005、0.8933、1.0683、0.7406、0.8640、0.6745、0.5424。两种方法测定结果比较,差异无统计学意义(P>0.05)。化学计量学方法显示16批白花蛇舌草聚为3类,呈现一定的产区差异。芦丁、车叶草苷酸、京尼平苷和齐墩果酸是影响白花蛇舌草产品质量的主要潜在标志物。GRA法分析结果显示7个省中浙江和江西地区所得白花蛇舌草质量最优。结论:本试验所建立的方法操作便捷、结果准确,结合化学计量学及GRA方法可用于白花蛇舌草质量的综合评价。 展开更多
关键词 白花蛇舌草 高效液相色谱-一测多评法 化学计量学 主成分分析 正交偏最小二乘判别分析法 灰色关联度分析法 质量控制
下载PDF
A quantitative analysis on the sources of dune sand in the Hulun Buir Sandy Land:application of stepwise discriminant analysis (SDA) to the granulometric data 被引量:1
9
作者 HANGuang ZHANGGuifang YANGWenbin 《Journal of Geographical Sciences》 SCIE CSCD 2004年第2期177-186,共10页
Quantitatively determining the sources of dune sand is one of the problems necessarily and urgently to be solved in aeolian landforms and desertification research. Based on the granulometric data of sand materials fro... Quantitatively determining the sources of dune sand is one of the problems necessarily and urgently to be solved in aeolian landforms and desertification research. Based on the granulometric data of sand materials from the Hulun Buir Sandy Land, the paper employs the stepwise discriminant analysis technique (SDA) for two groups to select the principal factors determining the differences between surface loose sediments. The extent of similarity between two statistical populations can be described quantitatively by three factors such as the number of principal variables, Mahalanobis distance D 2 and confidence level 琢for F-test. Results reveal that: 1) Aeolian dune sand in the region mainly derives from Hailar Formation (Q 3 ), while fluvial sand and palaeosol also supply partially source sand for dunes; and 2) in the vicinity of Cuogang Town and west of the broad valley of the lower reaches of Hailar River, fluvial sand can naturally become principal supplier for dune sand. 展开更多
关键词 沙丘沙 荒漠化 风化 参数 粒度测定 土壤调查
下载PDF
Threshold Selection Study on Fisher Discriminant Analysis Used in Exon Prediction for Unbalanced Data Sets
10
作者 Yutao Ma Yanbing Fang +1 位作者 Ping Liu Jianfu Teng 《Communications and Network》 2013年第3期601-605,共5页
In gene prediction, the Fisher discriminant analysis (FDA) is used to separate protein coding region (exon) from non-coding regions (intron). Usually, the positive data set and the negative data set are of the same si... In gene prediction, the Fisher discriminant analysis (FDA) is used to separate protein coding region (exon) from non-coding regions (intron). Usually, the positive data set and the negative data set are of the same size if the number of the data is big enough. But for some situations the data are not sufficient or not equal, the threshold used in FDA may have important influence on prediction results. This paper presents a study on the selection of the threshold. The eigen value of each exon/intron sequence is computed using the Z-curve method with 69 variables. The experiments results suggest that the size and the standard deviation of the data sets and the threshold are the three key elements to be taken into consideration to improve the prediction results. 展开更多
关键词 FISHER discriminant analysis THRESHOLD Selection Gene PREDICTION Z-Curve Size of data Set
下载PDF
Classification of Herbal Drug Effects by Discriminant Analysis of Quantitative Human EEG Data
11
作者 Wilfried Dimpfel 《Neuroscience & Medicine》 2019年第2期101-117,共17页
Clinical indications for herbal drugs very often only rely on traditional knowledge. Single plant-derived preparations are used for many purposes and cannot be classified to belong to a single category like calming or... Clinical indications for herbal drugs very often only rely on traditional knowledge. Single plant-derived preparations are used for many purposes and cannot be classified to belong to a single category like calming or stimulating drugs. With respect to the brain a unique possibility exists to analyze drug effects by recording the EEG. It is common knowledge that many drugs change the frequency content of electric brain activity. Quantitative analysis of the EEG by Fast Fourier Transformation reveals parameters like spectral power, which can be processed further (CATEEM&#174;). Source density was determined from 17 channels of the quantitative EEG from 10 clinical studies recorded in a relaxed state with open eyes. Linear discriminant analysis was used to differentiate the effects of Placebo (circadian rhythm) from CNS-active herbal drugs in comparison to Valium&#174;. Calmvalera&#174;, L-Theanine, Lasea&#174;, Neurapas&#174;, Neuravena&#174;, Neurexan&#174;, Nutrifin Relax&#174;, Pascoflair&#174;(herbal calming drugs) as well as memoLoges&#174;, Zembrin&#174;(herbal stimulating drugs) induced different changes of the frequency content of brain electric activity. Discriminant analysis revealed that Nutrifin Relax&#174;, Pascoflair&#174;and Suntheanine&#174;could not be separated well from each other indicating a similar mechanism of action. The effect of Valium&#174;was projected at a very isolated position far away from the herbal preparations indicating a totally different mechanism of action. Zembrin&#174;and memoLoges&#174;grouped together with respect to the first three discriminant functions, but were different with respect to the 4th to 6th discriminant function. Lasea&#174;as anxiolytic drug and Neurapas&#174;as antidepressive drug were projected at isolated positions indicating their different clinical indications. The results indicate that discriminant analysis of human quantitative EEG data allows for unique pharmacological description of individual effect profiles of herbal drugs. 展开更多
关键词 QUANTITATIVE EEG discriminant analysis HERBAL DRUGS Fast FOURIER Transformation CENTRAL Nervous System CATEEM
下载PDF
基于LDA-IBES-RELM的光伏阵列故障诊断方法
12
作者 邹凯 曾宪文 +1 位作者 王洋 高桂革(指导) 《上海电机学院学报》 2024年第1期1-6,19,共7页
针对光伏阵列故障诊断准确率偏低的问题,提出了一种基于改进秃鹰搜索算法(IBES)优化正则化极限学习机(RELM)的故障诊断方法。首先在Simulink建立光伏阵列仿真模型,模拟典型故障并提取故障特征数据,同时利用线性判别分析(LDA)对特征量降... 针对光伏阵列故障诊断准确率偏低的问题,提出了一种基于改进秃鹰搜索算法(IBES)优化正则化极限学习机(RELM)的故障诊断方法。首先在Simulink建立光伏阵列仿真模型,模拟典型故障并提取故障特征数据,同时利用线性判别分析(LDA)对特征量降维作为故障诊断模型的输入;其次利用Logistic混沌映射、Levy飞行策略和柯西高斯变异扰动策略对秃鹰算法进行改进;最后将IBES用于对RELM的隐层参数寻优。实验结果表明:LDA-IBES-RELM模型与BES-RELM、IBES-RELM模型对比,得到的故障诊断准确率为97.71%,优于其他两种模型,验证了LDA-IBESRELM模型用于光伏阵列故障诊断的有效性和实用性。 展开更多
关键词 正则化极限学习机 光伏阵列 故障诊断 改进秃鹰搜索算法 线性判别分析
下载PDF
OSS Project Assessment Based on Discriminant Analysis and Jump Diffusion Process Model for Fault Big Data
13
作者 Yoshinobu Tamura Hayato Watanabe Shigeru Yamada 《American Journal of Operations Research》 2020年第6期269-283,共15页
The bug tracking system is well known as the project support tool of open source software. There are many categorical data sets recorded on the bug tracking system. In the past, many reliability assessment methods hav... The bug tracking system is well known as the project support tool of open source software. There are many categorical data sets recorded on the bug tracking system. In the past, many reliability assessment methods have been proposed in the research area of software reliability. Also, there are several software project analyses based on the software effort data such as the earned value management. In particular, the software reliability growth models can </span><span style="font-family:Verdana;">apply to the system testing phase of software development. On the other</span><span style="font-family:Verdana;"> hand, the software effort analysis can apply to all development phase, because the fault data is only recorded on the testing phase. We focus on the big fault data and effort data of open source software. Then, it is difficult to assess by using the typical statistical assessment method, because the data recorded on the bug tracking system is large scale. Also, we discuss the jump diffusion process model based on the estimation method of jump parameters by using the discriminant analysis. Moreover, we analyze actual big fault data to show numerical examples of software effort assessment considering many categorical data set. 展开更多
关键词 Open Source Software Big Fault data discriminant analysis Open Source Project
下载PDF
A Comparison of Two Linear Discriminant Analysis Methods That Use Block Monotone Missing Training Data
14
作者 Phil D. Young Dean M. Young Songthip T. Ounpraseuth 《Open Journal of Statistics》 2016年第1期172-185,共14页
We revisit a comparison of two discriminant analysis procedures, namely the linear combination classifier of Chung and Han (2000) and the maximum likelihood estimation substitution classifier for the problem of classi... We revisit a comparison of two discriminant analysis procedures, namely the linear combination classifier of Chung and Han (2000) and the maximum likelihood estimation substitution classifier for the problem of classifying unlabeled multivariate normal observations with equal covariance matrices into one of two classes. Both classes have matching block monotone missing training data. Here, we demonstrate that for intra-class covariance structures with at least small correlation among the variables with missing data and the variables without block missing data, the maximum likelihood estimation substitution classifier outperforms the Chung and Han (2000) classifier regardless of the percent of missing observations. Specifically, we examine the differences in the estimated expected error rates for these classifiers using a Monte Carlo simulation, and we compare the two classifiers using two real data sets with monotone missing data via parametric bootstrap simulations. Our results contradict the conclusions of Chung and Han (2000) that their linear combination classifier is superior to the MLE classifier for block monotone missing multivariate normal data. 展开更多
关键词 Linear discriminant analysis Monte Carlo Simulation Maximum Likelihood Estimator Expected Error Rate Conditional Error Rate
下载PDF
基于PCA-LDA-SVM算法的茶小绿叶蝉识别
15
作者 吴鹏 刘金兰 《中国农机化学报》 北大核心 2024年第1期295-300,共6页
为提高茶小绿叶蝉病虫害的识别效率和精度,提出一种基于PCA-LDA-SVM的茶小绿叶蝉病虫害识别方法。首先,对采集的茶叶图像进行预处理,得到缩放后的图像;然后,利用主成分分析(PCA)对预处理后的图像提取全局特征,降低特征数据的维度,从而... 为提高茶小绿叶蝉病虫害的识别效率和精度,提出一种基于PCA-LDA-SVM的茶小绿叶蝉病虫害识别方法。首先,对采集的茶叶图像进行预处理,得到缩放后的图像;然后,利用主成分分析(PCA)对预处理后的图像提取全局特征,降低特征数据的维度,从而减少后续的计算时间;再利用线性判别分析(LDA)寻找特征数据的最优投影空间,使类内散布距离最小,类间散布距离最大,进一步提高识别的准确率和精确度;最后,利用支持向量机(SVM)分类器进行分类识别。试验结果表明,PCA-LDA-SVM模型识别准确率达96%,精确度达100%,召回率达92%,整体识别性能优于SVM,BP,KNN,PCA-SVM模型,具备一定的理论价值和参考意义。 展开更多
关键词 茶小绿叶蝉 病虫害识别 主成分分析(PCA) 线性判别分析(Lda) 支持向量机(SVM)
下载PDF
基于SRKDA的系统故障演化过程分解方法研究
16
作者 崔铁军 李莎莎 《中国安全生产科学技术》 CAS CSCD 北大核心 2024年第3期196-202,共7页
为研究系统故障演化过程中可能蕴含的多种演化特征,对演化过程的分解进行研究,提出基于谱回归核判别分析(SRKDA)的演化过程分解方法。首先介绍演化过程的特点和分解原理,其次论证对象集合对演化过程的可表示性,给出分解方法流程,最后进... 为研究系统故障演化过程中可能蕴含的多种演化特征,对演化过程的分解进行研究,提出基于谱回归核判别分析(SRKDA)的演化过程分解方法。首先介绍演化过程的特点和分解原理,其次论证对象集合对演化过程的可表示性,给出分解方法流程,最后进行实例分析。研究结果表明:分解演化过程本质上是对象与系统功能状态对应关系的确定,各对象集合都对应了各自的子演化过程;线性和非线性条件下对象可表示各种功能状态;对象标签矩阵须满足标签值的均匀分布特征;使用SRKDA算法可以确定最大准确度和最优对象标签集合,实现演化过程的分解;实例分析得到在20000次迭代后最大准确度为0.85,3个子演化过程分别包含41,33,26个对象。研究结果可为系统故障过程的特征分析提供参考方法。 展开更多
关键词 安全系统工程 系统故障演化过程 SRKda 演化分解方法 最大准确度 对象标签矩阵
下载PDF
LDA和KNN算法在随钻测井火成岩分类的应用
17
作者 方全全 曹军 +2 位作者 张国强 许吉俊 任宏 《石油工业技术监督》 2024年第4期17-20,共4页
渤中34-9油田在开发过程中广泛钻遇古近系火成岩,由于火成岩岩性多样、成分复杂导致常规测井解释图版识别岩性精度较差,而在随钻过程中准确识别火成岩岩性是工程上规避憋、卡、漏等风险的重要前提。通过将机器学习算法线性判别分析(LDA)... 渤中34-9油田在开发过程中广泛钻遇古近系火成岩,由于火成岩岩性多样、成分复杂导致常规测井解释图版识别岩性精度较差,而在随钻过程中准确识别火成岩岩性是工程上规避憋、卡、漏等风险的重要前提。通过将机器学习算法线性判别分析(LDA)与KNN算法运用于油田开发过程中的随钻测井数据处理与分析,实现了随钻过程中准确、高效识别火成岩岩性的目的。进一步将线性判别分析的降维结果代替原始测井曲线作为K最近邻分类器的输入,实现两种算法的有机融合,并对油田5口开发井建立的测井数据集进行机器学习,火成岩岩性分类准确率高于90%,证明了该方法的适用性。通过引入机器学习方法为常规录、测井数据的处理与解释提供了新方法,多方法的结合也为油田勘探作业过程中的分类提供借鉴。 展开更多
关键词 随钻测井 线性判别分析 KNN算法 火成岩分类 渤中油田
下载PDF
基于microRNA表达谱初步构建PLS-DA体液识别模型
18
作者 钱水 张晶晶 +1 位作者 王致远 梁桑华 《刑事技术》 2023年第2期146-152,共7页
针对外周血、唾液、精液、月经血、阴道分泌物这五种法医学常见的体液样本,采用二代测序(NGS)平台检测获得microRNA(miRNA)表达谱,使用偏最小二乘判别分析(PLS-DA)建立基于这五种体液的识别模型,并探讨PLS-DA在法医体液溯源中的应用价... 针对外周血、唾液、精液、月经血、阴道分泌物这五种法医学常见的体液样本,采用二代测序(NGS)平台检测获得microRNA(miRNA)表达谱,使用偏最小二乘判别分析(PLS-DA)建立基于这五种体液的识别模型,并探讨PLS-DA在法医体液溯源中的应用价值。经优化小分子RNA文库制备过程,采用Ion Torrent S5 XL测序系统对前述法医学五种体液样本(每种10例)进行小RNA测序,以PLS-DA构建体液识别模型,评估不同数量miRNA标记组合下预测的准确性。本研究获得法医学常见五种体液样本的miRNA表达谱,外周血与月经血中表达量前10名的miRNAs有6个重叠;唾液和阴道分泌物中表达量前10名的miRNAs有4个重叠。基于全数据集、107个和11个miRNAs构建的体液来源识别模型的准确率分别为0.95、0.94、0.89。本研究通过NGS测序分析获得了五种体液样本的miRNA组(miRNome),利用PLS-DA初步构建了体液识别模型,对于应用miRNome进行体液识别的相关研究具有参考价值。 展开更多
关键词 法医遗传学 体液溯源 RNA测序(RNA-seq) 最小二乘判别分析(PLS-da) 微小RNA(microRNA)
下载PDF
基于密度峰值聚类的正则化LFDA算法
19
作者 陶新民 吴永康 +4 位作者 包艺璇 祁霖 陈玮 范芷汀 黄珊 《计算机集成制造系统》 EI CSCD 北大核心 2023年第11期3639-3655,共17页
考虑到现有费舍尔判别分析(FDA)及其改进算法无法同时有效利用有标签数据和无标签数据进行学习,提出一种基于密度峰值聚类的正则化局部费舍尔判别分析(DPC-RLFDA)算法。该算法首先利用密度峰值聚类算法得到的伪标签构造两个正则化项来... 考虑到现有费舍尔判别分析(FDA)及其改进算法无法同时有效利用有标签数据和无标签数据进行学习,提出一种基于密度峰值聚类的正则化局部费舍尔判别分析(DPC-RLFDA)算法。该算法首先利用密度峰值聚类算法得到的伪标签构造两个正则化项来规范局部FDA的类间散度矩阵和类内散度矩阵;然后通过求解目标函数得到最优投影向量。此外,为适用于非线性非高斯分布数据集,提出了基于核的DPC-RLFDA。在人工数据集和UCI数据集上的实验结果表明,与FDA及其改进算法相比,所提算法的判别性能得到了显著提升。 展开更多
关键词 降维 特征提取 费舍尔判别分析 密度峰值聚类
下载PDF
Pose Robust Low-resolution Face Recognition via Coupled Kernel-based Enhanced Discriminant Analysis 被引量:4
20
作者 Xiaoying Wang Haifeng Hu Jianquan Gu 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI 2016年第2期203-212,共10页
Most face recognition techniques have been successful in dealing with high-resolution(HR) frontal face images. However, real-world face recognition systems are often confronted with the low-resolution(LR) face images ... Most face recognition techniques have been successful in dealing with high-resolution(HR) frontal face images. However, real-world face recognition systems are often confronted with the low-resolution(LR) face images with pose and illumination variations. This is a very challenging issue, especially under the constraint of using only a single gallery image per person.To address the problem, we propose a novel approach called coupled kernel-based enhanced discriminant analysis(CKEDA).CKEDA aims to simultaneously project the features from LR non-frontal probe images and HR frontal gallery ones into a common space where discrimination property is maximized.There are four advantages of the proposed approach: 1) by using the appropriate kernel function, the data becomes linearly separable, which is beneficial for recognition; 2) inspired by linear discriminant analysis(LDA), we integrate multiple discriminant factors into our objective function to enhance the discrimination property; 3) we use the gallery extended trick to improve the recognition performance for a single gallery image per person problem; 4) our approach can address the problem of matching LR non-frontal probe images with HR frontal gallery images,which is difficult for most existing face recognition techniques.Experimental evaluation on the multi-PIE dataset signifies highly competitive performance of our algorithm. 展开更多
关键词 Face recognition low-resolution(LR) pose variations discriminant analysis gallery extended
下载PDF
上一页 1 2 250 下一页 到第
使用帮助 返回顶部