期刊文献+
共找到22篇文章
< 1 2 >
每页显示 20 50 100
Researches on Classification Features of Rural and Urban Domestic Waste in Tianjin City Under Secondary Classification Mode
1
作者 梁海恬 高贤彪 +5 位作者 何宗均 李妍 吴迪 王德芳 钱姗 李玉华 《Agricultural Science & Technology》 CAS 2015年第12期2854-2858,共5页
In order to investigate the influence of secondary classification mode on waste generation features, this study classified domestic waste generated by 310 rural and urban households at urban areas and Shuigaozhuang Vi... In order to investigate the influence of secondary classification mode on waste generation features, this study classified domestic waste generated by 310 rural and urban households at urban areas and Shuigaozhuang Village of Xiqing District into 3 groups: compostable materials, recyclable materials and toxics on the basis of the constructed secondary classification mode of domestic waste. The study focused on waste generation strength and classification features, compared the waste generation features between rural and urban residents, and analyzed the re- lation between waste generation strength and economic and cultural factors. The re- sults indicated that the average generation speed of urban domestic waste was 423.08 g/(d.capita), and that of rural domestic waste was 629.89 g/(d.capita), there was significant difference between rural and urban compost generation strength (P= 0.00002), while the generation strength of recyclable materials and toxics between rural and urban areas had no significant difference (P=0.471 and P=0.099, respec- tively). Secondary classification mode is an effective source classification mode for domestic wastes and has positive effects on waste reduction and treatment. 展开更多
关键词 Secondary classification mode Domestic waste Compostable materials classification features Generation strength
下载PDF
SCChOA:Hybrid Sine-Cosine Chimp Optimization Algorithm for Feature Selection 被引量:2
2
作者 Shanshan Wang Quan Yuan +2 位作者 Weiwei Tan Tengfei Yang Liang Zeng 《Computers, Materials & Continua》 SCIE EI 2023年第12期3057-3075,共19页
Feature Selection(FS)is an important problem that involves selecting the most informative subset of features from a dataset to improve classification accuracy.However,due to the high dimensionality and complexity of t... Feature Selection(FS)is an important problem that involves selecting the most informative subset of features from a dataset to improve classification accuracy.However,due to the high dimensionality and complexity of the dataset,most optimization algorithms for feature selection suffer from a balance issue during the search process.Therefore,the present paper proposes a hybrid Sine-Cosine Chimp Optimization Algorithm(SCChOA)to address the feature selection problem.In this approach,firstly,a multi-cycle iterative strategy is designed to better combine the Sine-Cosine Algorithm(SCA)and the Chimp Optimization Algorithm(ChOA),enabling a more effective search in the objective space.Secondly,an S-shaped transfer function is introduced to perform binary transformation on SCChOA.Finally,the binary SCChOA is combined with the K-Nearest Neighbor(KNN)classifier to form a novel binary hybrid wrapper feature selection method.To evaluate the performance of the proposed method,16 datasets from different dimensions of the UCI repository along with four evaluation metrics of average fitness value,average classification accuracy,average feature selection number,and average running time are considered.Meanwhile,seven state-of-the-art metaheuristic algorithms for solving the feature selection problem are chosen for comparison.Experimental results demonstrate that the proposed method outperforms other compared algorithms in solving the feature selection problem.It is capable of maximizing the reduction in the number of selected features while maintaining a high classification accuracy.Furthermore,the results of statistical tests also confirm the significant effectiveness of this method. 展开更多
关键词 Metaheuristics chimp optimization algorithm sine-cosine algorithm feature selection and classification
下载PDF
Improved Whale Optimization with Local-Search Method for Feature Selection 被引量:2
3
作者 Malek Alzaqebah Mutasem KAlsmadi +12 位作者 Sana Jawarneh Jehad Saad Alqurni Mohammed Tayfour Ibrahim Almarashdeh Rami Mustafa A.Mohammad Fahad A.Alghamdi Nahier Aldhafferi Abdullah Alqahtani Khalid A.Alissa Bashar A.Aldeeb Usama A.Badawi Maram Alwohaibi Hayat Alfagham 《Computers, Materials & Continua》 SCIE EI 2023年第4期1371-1389,共19页
Various feature selection algorithms are usually employed to improve classification models’overall performance.Optimization algorithms typically accompany such algorithms to select the optimal set of features.Among t... Various feature selection algorithms are usually employed to improve classification models’overall performance.Optimization algorithms typically accompany such algorithms to select the optimal set of features.Among the most currently attractive trends within optimization algorithms are hybrid metaheuristics.The present paper presents two Stages of Local Search models for feature selection based on WOA(Whale Optimization Algorithm)and Great Deluge(GD).GD Algorithm is integrated with the WOA algorithm to improve exploitation by identifying the most promising regions during the search.Another version is employed using the best solution found by the WOA algorithm and exploited by the GD algorithm.In addition,disruptive selection(DS)is employed to select the solutions from the population for local search.DS is chosen to maintain the diversity of the population via enhancing low and high-quality solutions.Fifteen(15)standard benchmark datasets provided by the University of California Irvine(UCI)repository were used in evaluating the proposed approaches’performance.Next,a comparison was made with four population-based algorithms as wrapper feature selection methods from the literature.The proposed techniques have proved their efficiency in enhancing classification accuracy compared to other wrapper methods.Hence,the WOA can search effectively in the feature space and choose the most relevant attributes for classification tasks. 展开更多
关键词 OPTIMIZATION whale optimization algorithm great deluge algorithm feature selection and classification
下载PDF
A classification method of building structures based on multi-feature fusion of UAV remote sensing images
4
作者 Haoguo Du Yanbo Cao +6 位作者 Fanghao Zhang Jiangli Lv Shurong Deng Yongkun Lu Shifang He Yuanshuo Zhang Qinkun Yu 《Earthquake Research Advances》 CSCD 2021年第4期38-47,共10页
In order to improve the accuracy of building structure identification using remote sensing images,a building structure classification method based on multi-feature fusion of UAV remote sensing image is proposed in thi... In order to improve the accuracy of building structure identification using remote sensing images,a building structure classification method based on multi-feature fusion of UAV remote sensing image is proposed in this paper.Three identification approaches of remote sensing images are integrated in this method:object-oriented,texture feature,and digital elevation based on DSM and DEM.So RGB threshold classification method is used to classify the identification results.The accuracy of building structure classification based on each feature and the multi-feature fusion are compared and analyzed.The results show that the building structure classification method is feasible and can accurately identify the structures in large-area remote sensing images. 展开更多
关键词 Remote sensing image Building structure classification Multi-feature fusion Object-oriented classification method Texture feature classification method DSM and DEM elevation classification method RGB threshold classification method
下载PDF
Morpho-structural Features and Structural Classification of Chromite Pods in the Tropoje-Has Ophiolite Massif, Albania
5
作者 Ibrahim MILUSHI Nezir MEKSHIQI 《Acta Geologica Sinica(English Edition)》 SCIE CAS CSCD 2016年第S1期234-,共1页
Tropoje-Has ophiolitic massif of eastern Mirdita(Albania)ophiolitic belt,is a major source for metallurgical chromite ore in Albania.Massif consists of a thick mantle section of SSZ type,8-10 km thick and
关键词 Morpho-structural features and Structural classification of Chromite Pods in the Tropoje-Has Ophiolite Massif Albania
下载PDF
A Deep CNN-LSTM-Based Feature Extraction for Cyber-Physical System Monitoring
6
作者 Alaa Omran Almagrabi 《Computers, Materials & Continua》 SCIE EI 2023年第8期2079-2093,共15页
A potential concept that could be effective for multiple applications is a“cyber-physical system”(CPS).The Internet of Things(IoT)has evolved as a research area,presenting new challenges in obtaining valuable data t... A potential concept that could be effective for multiple applications is a“cyber-physical system”(CPS).The Internet of Things(IoT)has evolved as a research area,presenting new challenges in obtaining valuable data through environmental monitoring.The existing work solely focuses on classifying the audio system of CPS without utilizing feature extraction.This study employs a deep learning method,CNN-LSTM,and two-way feature extraction to classify audio systems within CPS.The primary objective of this system,which is built upon a convolutional neural network(CNN)with Long Short Term Memory(LSTM),is to analyze the vocalization patterns of two different species of anurans.It has been demonstrated that CNNs,when combined with mel-spectrograms for sound analysis,are suitable for classifying ambient noises.Initially,the data is augmented and preprocessed.Next,the mel spectrogram features are extracted through two-way feature extraction.First,Principal Component Analysis(PCA)is utilized for dimensionality reduction,followed by Transfer learning for audio feature extraction.Finally,the classification is performed using the CNN-LSTM process.This methodology can potentially be employed for categorizing various biological acoustic objects and analyzing biodiversity indexes in natural environments,resulting in high classification accuracy.The study highlights that this CNNLSTM approach enables cost-effective and resource-efficient monitoring of large natural regions.The dissemination of updated CNN-LSTM models across distant IoT nodes is facilitated flexibly and dynamically through the utilization of CPS. 展开更多
关键词 Cyber-physical system internet of things feature extraction classification CNN principal component analysis mel spectrograms MONITORING deep learning
下载PDF
Analysis of high-power disk laser welding stability based on classification of plume and spatter characteristics 被引量:6
7
作者 高向东 文茜 Seiji KATAYAMA 《Transactions of Nonferrous Metals Society of China》 SCIE EI CAS CSCD 2013年第12期3748-3757,共10页
Classification of plume and spatter images was studied to evaluate the welding stability. A high-speed camera was used to capture the instantaneous images of plume and spatters during high power disk laser welding. Ch... Classification of plume and spatter images was studied to evaluate the welding stability. A high-speed camera was used to capture the instantaneous images of plume and spatters during high power disk laser welding. Characteristic parameters such as the area and number of spatters, the average grayscale of a spatter image, the entropy of a spatter grayscale image, the coordinate ratio of the plume centroid and the welding point, the polar coordinates of the plume centroid were defined and extracted. Karhunen-Loeve transform method was used to change the seven characteristics into three primary characteristics to reduce the dimensions. Also, K-nearest neighbor method was used to classify the plume and spatter images into two categories such as good and poor welding quality. The results show that plume and spatter have a close relationship with the welding stability, and two categories could be recognized effectively using K-nearest neighbor method based on Karhunen-Loeve transform. 展开更多
关键词 high-power disk laser welding PLUME SPATTER feature classification STABILITY
下载PDF
Double DQN Method For Botnet Traffic Detection System
8
作者 Yutao Hu Yuntao Zhao +1 位作者 Yongxin Feng Xiangyu Ma 《Computers, Materials & Continua》 SCIE EI 2024年第4期509-530,共22页
In the face of the increasingly severe Botnet problem on the Internet,how to effectively detect Botnet traffic in realtime has become a critical problem.Although the existing deepQnetwork(DQN)algorithminDeep reinforce... In the face of the increasingly severe Botnet problem on the Internet,how to effectively detect Botnet traffic in realtime has become a critical problem.Although the existing deepQnetwork(DQN)algorithminDeep reinforcement learning can solve the problem of real-time updating,its prediction results are always higher than the actual results.In Botnet traffic detection,although it performs well in the training set,the accuracy rate of predicting traffic is as high as%;however,in the test set,its accuracy has declined,and it is impossible to adjust its prediction strategy on time based on new data samples.However,in the new dataset,its accuracy has declined significantly.Therefore,this paper proposes a Botnet traffic detection system based on double-layer DQN(DDQN).Two Q-values are designed to adjust the model in policy and action,respectively,to achieve real-time model updates and improve the universality and robustness of the model under different data sets.Experiments show that compared with the DQN model,when using DDQN,the Q-value is not too high,and the detectionmodel has improved the accuracy and precision of Botnet traffic.Moreover,when using Botnet data sets other than the test set,the accuracy and precision of theDDQNmodel are still higher than DQN. 展开更多
关键词 DQN DDQN deep reinforcement learning botnet detection feature classification
下载PDF
Automatic modulation classification using modulation fingerprint extraction 被引量:2
9
作者 NOROLAHI Jafar AZMI Paeiz AHMADI Farzaneh 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2021年第4期799-810,共12页
An automatic method for classifying frequency shift keying(FSK),minimum shift keying(MSK),phase shift keying(PSK),quadrature amplitude modulation(QAM),and orthogonal frequency division multiplexing(OFDM)is proposed by... An automatic method for classifying frequency shift keying(FSK),minimum shift keying(MSK),phase shift keying(PSK),quadrature amplitude modulation(QAM),and orthogonal frequency division multiplexing(OFDM)is proposed by simultaneously using normality test,spectral analysis,and geometrical characteristics of in-phase-quadrature(I-Q)constellation diagram.Since the extracted features are unique for each modulation,they can be considered as a fingerprint of each modulation.We show that the proposed algorithm outperforms the previously published methods in terms of signal-to-noise ratio(SNR)and success rate.For example,the success rate of the proposed method for 64-QAM modulation at SNR=11 dB is 99%.Another advantage of the proposed method is its wide SNR range;such that the probability of classification for 16-QAM at SNR=3 dB is almost 1.The proposed method also provides a database for geometrical features of I-Q constellation diagram.By comparing and correlating the data of the provided database with the estimated I-Q diagram of the received signal,the processing gain of 4 dB is obtained.Whatever can be mentioned about the preference of the proposed algorithm are low complexity,low SNR,wide range of modulation set,and enhanced recognition at higher-order modulations. 展开更多
关键词 automatic modulation classification in-phase-quadrature(I-Q)constellation diagram spectral analysis feature based modulation classification
下载PDF
Ensemble feature selection integrating elitist roles and quantum game model 被引量:1
10
作者 Weiping Ding Jiandong Wang +1 位作者 Zhijin Guan Quan Shi 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2015年第3期584-594,共11页
To accelerate the selection process of feature subsets in the rough set theory (RST), an ensemble elitist roles based quantum game (EERQG) algorithm is proposed for feature selec- tion. Firstly, the multilevel eli... To accelerate the selection process of feature subsets in the rough set theory (RST), an ensemble elitist roles based quantum game (EERQG) algorithm is proposed for feature selec- tion. Firstly, the multilevel elitist roles based dynamics equilibrium strategy is established, and both immigration and emigration of elitists are able to be self-adaptive to balance between exploration and exploitation for feature selection. Secondly, the utility matrix of trust margins is introduced to the model of multilevel elitist roles to enhance various elitist roles' performance of searching the optimal feature subsets, and the win-win utility solutions for feature selec- tion can be attained. Meanwhile, a novel ensemble quantum game strategy is designed as an intriguing exhibiting structure to perfect the dynamics equilibrium of multilevel elitist roles. Finally, the en- semble manner of multilevel elitist roles is employed to achieve the global minimal feature subset, which will greatly improve the fea- sibility and effectiveness. Experiment results show the proposed EERQG algorithm has superiority compared to the existing feature selection algorithms. 展开更多
关键词 ensemble quantum game utility matrix of trust mar-gin dynamics equilibrium strategy multilevel elitist role feature selection and classification.
下载PDF
Information Classification and Extraction on Official Web Pages of Organizations
11
作者 Jinlin Wang Xing Wang +3 位作者 Hongli Zhang Binxing Fang Yuchen Yang Jianan Liu 《Computers, Materials & Continua》 SCIE EI 2020年第9期2057-2073,共17页
As a real-time and authoritative source,the official Web pages of organizations contain a large amount of information.The diversity of Web content and format makes it essential for pre-processing to get the unified at... As a real-time and authoritative source,the official Web pages of organizations contain a large amount of information.The diversity of Web content and format makes it essential for pre-processing to get the unified attributed data,which has the value of organizational analysis and mining.The existing research on dealing with multiple Web scenarios and accuracy performance is insufficient.This paper aims to propose a method to transform organizational official Web pages into the data with attributes.After locating the active blocks in the Web pages,the structural and content features are proposed to classify information with the specific model.The extraction methods based on trigger lexicon and LSTM(Long Short-Term Memory)are proposed,which efficiently process the classified information and extract data that matches the attributes.Finally,an accurate and efficient method to classify and extract information from organizational official Web pages is formed.Experimental results show that our approach improves the performing indicators and exceeds the level of state of the art on real data set from organizational official Web pages. 展开更多
关键词 Web pre-process feature classification data extraction trigger lexicon LSTM
下载PDF
Impact of Genetic Algorithm for the Diagnosis of Breast Cancer: Literature Review
12
作者 Abebe Alemu Balcha Samuel Alemu Woldie 《Advances in Infectious Diseases》 CAS 2023年第1期41-46,共6页
In recent research from the total number of new cancer cases in Africa about 29.46% and in Ethiopia 31.85% are breast cancer cases. 25.84% of all cancer related death is from breast cancer. One of the challenges in th... In recent research from the total number of new cancer cases in Africa about 29.46% and in Ethiopia 31.85% are breast cancer cases. 25.84% of all cancer related death is from breast cancer. One of the challenges in the treatment of breast cancer is early detection. Researchers agreed that, improving the preventive mechanism of breast cancer is an early predicting and detecting model. Research efforts are continuing to present different solution approaches using advanced techniques of Artificial intelligence (AI), Machine learning (ML), Deep Learning (DL), and Computational Intelligence as well. A genetic algorithm is a hyper-parameter optimization algorithm that belongs to the class of evolutionary algorithms. Genetic Algorithm (GA) is used for complex search spaces for search and optimization. This reviewed literature paper shows the positive effect of GA in the diagnosis of breast cancer on AI algorithms. 展开更多
关键词 Genetic Algorithm Breast Cancer feature classification OPTIMIZATION
下载PDF
Optimization of support vector machine power load forecasting model based on data mining and Lyapunov exponents 被引量:7
13
作者 牛东晓 王永利 马小勇 《Journal of Central South University》 SCIE EI CAS 2010年第2期406-412,共7页
According to the chaotic and non-linear characters of power load data,the time series matrix is established with the theory of phase-space reconstruction,and then Lyapunov exponents with chaotic time series are comput... According to the chaotic and non-linear characters of power load data,the time series matrix is established with the theory of phase-space reconstruction,and then Lyapunov exponents with chaotic time series are computed to determine the time delay and the embedding dimension.Due to different features of the data,data mining algorithm is conducted to classify the data into different groups.Redundant information is eliminated by the advantage of data mining technology,and the historical loads that have highly similar features with the forecasting day are searched by the system.As a result,the training data can be decreased and the computing speed can also be improved when constructing support vector machine(SVM) model.Then,SVM algorithm is used to predict power load with parameters that get in pretreatment.In order to prove the effectiveness of the new model,the calculation with data mining SVM algorithm is compared with that of single SVM and back propagation network.It can be seen that the new DSVM algorithm effectively improves the forecast accuracy by 0.75%,1.10% and 1.73% compared with SVM for two random dimensions of 11-dimension,14-dimension and BP network,respectively.This indicates that the DSVM gains perfect improvement effect in the short-term power load forecasting. 展开更多
关键词 power load forecasting support vector machine (SVM) Lyapunov exponent data mining embedding dimension feature classification
下载PDF
Video Analytics Framework for Human Action Recognition 被引量:1
14
作者 Muhammad Attique Khan Majed Alhaisoni +4 位作者 Ammar Armghan Fayadh Alenezi Usman Tariq Yunyoung Nam Tallha Akram 《Computers, Materials & Continua》 SCIE EI 2021年第9期3841-3859,共19页
Human action recognition(HAR)is an essential but challenging task for observing human movements.This problem encompasses the observations of variations in human movement and activity identification by machine learning... Human action recognition(HAR)is an essential but challenging task for observing human movements.This problem encompasses the observations of variations in human movement and activity identification by machine learning algorithms.This article addresses the challenges in activity recognition by implementing and experimenting an intelligent segmentation,features reduction and selection framework.A novel approach has been introduced for the fusion of segmented frames and multi-level features of interests are extracted.An entropy-skewness based features reduction technique has been implemented and the reduced features are converted into a codebook by serial based fusion.A custom made genetic algorithm is implemented on the constructed features codebook in order to select the strong and wellknown features.The features are exploited by a multi-class SVM for action identification.Comprehensive experimental results are undertaken on four action datasets,namely,Weizmann,KTH,Muhavi,and WVU multi-view.We achieved the recognition rate of 96.80%,100%,100%,and 100%respectively.Analysis reveals that the proposed action recognition approach is efficient and well accurate as compare to existing approaches. 展开更多
关键词 Video analytics action recognition features classification ENTROPY data analytic
下载PDF
Affective State Recognition Using Thermal-Based Imaging: A Survey 被引量:1
15
作者 Mustafa M.M.Al Qudah Ahmad S.A.Mohamed Syaheerah L.Lutfi 《Computer Systems Science & Engineering》 SCIE EI 2021年第4期47-62,共16页
The thermal-based imaging technique has recently attracted the attention of researchers who are interested in the recognition of human affects dueto its ability to measure the facial transient temperature, which is co... The thermal-based imaging technique has recently attracted the attention of researchers who are interested in the recognition of human affects dueto its ability to measure the facial transient temperature, which is correlated withhuman affects and robustness against illumination changes. Therefore, studieshave increasingly used the thermal imaging as a potential and supplemental solution to overcome the challenges of visual (RGB) imaging, such as the variation oflight conditions and revealing original human affect. Moreover, the thermal-basedimaging has shown promising results in the detection of psychophysiological signals, such as pulse rate and respiration rate in a contactless and noninvasive way.This paper presents a brief review on human affects and focuses on the advantages and challenges of the thermal imaging technique. In addition, this paper discusses the stages of thermal-based human affective state recognition, such asdataset type, preprocessing stage, region of interest (ROI), feature descriptors,and classification approaches with a brief performance analysis based on a number of works in the literature. This analysis could help beginners in the thermalimaging and affective recognition domain to explore numerous approaches usedby researchers to construct an affective state system based on thermal imaging. 展开更多
关键词 Thermal-based imaging affective state recognition spontaneous emotion feature extraction and classification
下载PDF
Two-level hierarchical feature learning for image classification 被引量:3
16
作者 Guang-hui SONG Xiao-gang JIN +1 位作者 Gen-lang CHEN Yan NIE 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2016年第9期897-906,共10页
In some image classification tasks, similarities among different categories are different and the samples are usually misclassified as highly similar categories. To distinguish highly similar categories, more specific... In some image classification tasks, similarities among different categories are different and the samples are usually misclassified as highly similar categories. To distinguish highly similar categories, more specific features are required so that the classifier can improve the classification performance. In this paper, we propose a novel two-level hierarchical feature learning framework based on the deep convolutional neural network(CNN), which is simple and effective. First, the deep feature extractors of different levels are trained using the transfer learning method that fine-tunes the pre-trained deep CNN model toward the new target dataset. Second, the general feature extracted from all the categories and the specific feature extracted from highly similar categories are fused into a feature vector. Then the final feature representation is fed into a linear classifier. Finally, experiments using the Caltech-256, Oxford Flower-102, and Tasmania Coral Point Count(CPC) datasets demonstrate that the expression ability of the deep features resulting from two-level hierarchical feature learning is powerful. Our proposed method effectively increases the classification accuracy in comparison with flat multiple classification methods. 展开更多
关键词 Transfer learning feature learning Deep convolutional neural network Hierarchical classification Spectral clustering
原文传递
An Efficient Scheme for Data Pattern Matching in IoT Networks
17
作者 Ashraf Ali Omar A.Saraereh 《Computers, Materials & Continua》 SCIE EI 2022年第8期2203-2219,共17页
The Internet has become an unavoidable trend of all things due to the rapid growth of networking technology,smart home technology encompasses a variety of sectors,including intelligent transportation,allowing users to... The Internet has become an unavoidable trend of all things due to the rapid growth of networking technology,smart home technology encompasses a variety of sectors,including intelligent transportation,allowing users to communicate with anybody or any device at any time and from anywhere.However,most things are different now.Background:Structured data is a form of separated storage that slows down the rate at which everything is connected.Data pattern matching is commonly used in data connectivity and can help with the issues mentioned above.Aim:The present pattern matching system is ineffective due to the heterogeneity and rapid expansion of large IoT data.The method requires a lot of manual work and has a poor match with real-world applications.In the modern IoT context,solving the challenge of automatic pattern matching is complex.Methodology:A three-layer mapping matching is proposed for heterogeneous data from the IoT,and a hierarchical pattern matching technique.The feature classification matching,relational feature clustering matching,and mixed element matching are all examples of feature classification matching.Through layer-by-layer matching,the algorithm gradually narrows the matching space,improving matching quality,reducing the number of matching between components and the degree of manual participation,and producing a better automatic mode matching.Results:The algorithm’s efficiency and performance are tested using a large number of data samples,and the results show that the technique is practical and effective.Conclusion:the proposed algorithm utilizes the instance information of the data pattern.It deploys three-layer mapping matching approach and mixed element matching and realizes the automatic pattern matching of heterogeneous data which reduces the matching space between elements in complex patterns.It improves the efficiency and accuracy of automatic matching. 展开更多
关键词 Internet of things distributed computing optimization feature classification
下载PDF
Brake Fault Diagnosis Through Machine Learning Approaches–A Review
18
作者 T.M.Alamelu Manghai R.Jegadeeshwaran V.Sugumaran 《Structural Durability & Health Monitoring》 EI 2017年第1期41-61,共21页
Diagnosis is the recognition of the nature and cause of a certain phenomenon.It is generally used to determine cause and effect of a problem. Machine fault diagnosis isa field of finding faults arising in machines. To... Diagnosis is the recognition of the nature and cause of a certain phenomenon.It is generally used to determine cause and effect of a problem. Machine fault diagnosis isa field of finding faults arising in machines. To identify the most probable faults leadingto failure, many methods are used for data collection, including vibration monitoring,thermal imaging, oil particle analysis, etc. Then these data are processed using methodslike spectral analysis, wavelet analysis, wavelet transform, short-term Fourier transform,high-resolution spectral analysis, waveform analysis, etc. The results of this analysis areused in a root cause failure analysis in order to determine the original cause of the fault.This paper presents a brief review about one such application known as machine learningfor the brake fault diagnosis problems. 展开更多
关键词 Vibration analysis machine learning feature extraction feature selection feature classification brake fault diagnosis
下载PDF
Classification of Remote Sensing Images Based on Band Selection and Multi-mode Feature Fusion
19
作者 Xiaodong Yu Hongbin Dong +1 位作者 Zihe Mu Yu Sun 《国际计算机前沿大会会议论文集》 2020年第1期612-620,共9页
As feature data in multimodal remote sensing images belong to multiple modes and are complementary to each other,the traditional method of single-mode data analysis and processing cannot effectively fuse the data of d... As feature data in multimodal remote sensing images belong to multiple modes and are complementary to each other,the traditional method of single-mode data analysis and processing cannot effectively fuse the data of different modes and express the correlation between different modes.In order to solve this problem,make better fusion of different modal data and the relationship between the said features,this paper proposes a fusion method of multiple modal spectral characteristics and radar remote sensing imageaccording to the spatial dimension in the form of a vector or matrix for effective integration,by training the SVM model.Experimental results show that the method based on band selection and multi-mode feature fusion can effectively improve the robustness of remote sensing image features.Compared with other methods,the fusion method can achieve higher classification accuracy and better classification effect. 展开更多
关键词 Remote sensing classification classification of features Band selection Multimodal feature fusion SVM
原文传递
Repairing the human with artificial intelligence in oncology
20
作者 Ian Morilla 《Artificial Intelligence in Cancer》 2021年第5期60-68,共9页
Artificial intelligence is a groundbreaking tool to learn and analyse higher features extracted from any dataset at large scale.This ability makes it ideal to facing any complex problem that may generally arise in the... Artificial intelligence is a groundbreaking tool to learn and analyse higher features extracted from any dataset at large scale.This ability makes it ideal to facing any complex problem that may generally arise in the biomedical domain or oncology in particular.In this work,we envisage to provide a global vision of this mathematical discipline outgrowth by linking some other related subdomains such as transfer,reinforcement or federated learning.Complementary,we also introduce the recently popular method of topological data analysis that improves the performance of learning models. 展开更多
关键词 Cancer research Data analysis feature classification Artificial intelligence Machine learning Healthcare systems
下载PDF
上一页 1 2 下一页 到第
使用帮助 返回顶部