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BDMFuse:Multi-scale network fusion for infrared and visible images based on base and detail features
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作者 SI Hai-Ping ZHAO Wen-Rui +4 位作者 LI Ting-Ting LI Fei-Tao Fernando Bacao SUN Chang-Xia LI Yan-Ling 《红外与毫米波学报》 北大核心 2025年第2期289-298,共10页
The fusion of infrared and visible images should emphasize the salient targets in the infrared image while preserving the textural details of the visible images.To meet these requirements,an autoencoder-based method f... The fusion of infrared and visible images should emphasize the salient targets in the infrared image while preserving the textural details of the visible images.To meet these requirements,an autoencoder-based method for infrared and visible image fusion is proposed.The encoder designed according to the optimization objective consists of a base encoder and a detail encoder,which is used to extract low-frequency and high-frequency information from the image.This extraction may lead to some information not being captured,so a compensation encoder is proposed to supplement the missing information.Multi-scale decomposition is also employed to extract image features more comprehensively.The decoder combines low-frequency,high-frequency and supplementary information to obtain multi-scale features.Subsequently,the attention strategy and fusion module are introduced to perform multi-scale fusion for image reconstruction.Experimental results on three datasets show that the fused images generated by this network effectively retain salient targets while being more consistent with human visual perception. 展开更多
关键词 infrared image visible image image fusion encoder-decoder multi-scale features
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Feature selection for determining input parameters in antenna modeling
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作者 LIU Zhixian SHAO Wei +2 位作者 CHENG Xi OU Haiyan DING Xiao 《Journal of Systems Engineering and Electronics》 2025年第1期15-23,共9页
In this paper,a feature selection method for determining input parameters in antenna modeling is proposed.In antenna modeling,the input feature of artificial neural network(ANN)is geometric parameters.The selection cr... In this paper,a feature selection method for determining input parameters in antenna modeling is proposed.In antenna modeling,the input feature of artificial neural network(ANN)is geometric parameters.The selection criteria contain correlation and sensitivity between the geometric parameter and the electromagnetic(EM)response.Maximal information coefficient(MIC),an exploratory data mining tool,is introduced to evaluate both linear and nonlinear correlations.The EM response range is utilized to evaluate the sensitivity.The wide response range corresponding to varying values of a parameter implies the parameter is highly sensitive and the narrow response range suggests the parameter is insensitive.Only the parameter which is highly correlative and sensitive is selected as the input of ANN,and the sampling space of the model is highly reduced.The modeling of a wideband and circularly polarized antenna is studied as an example to verify the effectiveness of the proposed method.The number of input parameters decreases from8 to 4.The testing errors of|S_(11)|and axis ratio are reduced by8.74%and 8.95%,respectively,compared with the ANN with no feature selection. 展开更多
关键词 antenna modeling artificial neural network(ANN) feature selection maximal information coefficient(MIC)
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Tomato Growth Height Prediction Method by Phenotypic Feature Extraction Using Multi-modal Data
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作者 GONG Yu WANG Ling +3 位作者 ZHAO Rongqiang YOU Haibo ZHOU Mo LIU Jie 《智慧农业(中英文)》 2025年第1期97-110,共14页
[Objective]Accurate prediction of tomato growth height is crucial for optimizing production environments in smart farming.However,current prediction methods predominantly rely on empirical,mechanistic,or learning-base... [Objective]Accurate prediction of tomato growth height is crucial for optimizing production environments in smart farming.However,current prediction methods predominantly rely on empirical,mechanistic,or learning-based models that utilize either images data or environmental data.These methods fail to fully leverage multi-modal data to capture the diverse aspects of plant growth comprehensively.[Methods]To address this limitation,a two-stage phenotypic feature extraction(PFE)model based on deep learning algorithm of recurrent neural network(RNN)and long short-term memory(LSTM)was developed.The model integrated environment and plant information to provide a holistic understanding of the growth process,emploied phenotypic and temporal feature extractors to comprehensively capture both types of features,enabled a deeper understanding of the interaction between tomato plants and their environment,ultimately leading to highly accurate predictions of growth height.[Results and Discussions]The experimental results showed the model's ef‐fectiveness:When predicting the next two days based on the past five days,the PFE-based RNN and LSTM models achieved mean absolute percentage error(MAPE)of 0.81%and 0.40%,respectively,which were significantly lower than the 8.00%MAPE of the large language model(LLM)and 6.72%MAPE of the Transformer-based model.In longer-term predictions,the 10-day prediction for 4 days ahead and the 30-day prediction for 12 days ahead,the PFE-RNN model continued to outperform the other two baseline models,with MAPE of 2.66%and 14.05%,respectively.[Conclusions]The proposed method,which leverages phenotypic-temporal collaboration,shows great potential for intelligent,data-driven management of tomato cultivation,making it a promising approach for enhancing the efficiency and precision of smart tomato planting management. 展开更多
关键词 tomato growth prediction deep learning phenotypic feature extraction multi-modal data recurrent neural net‐work long short-term memory large language model
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Data-driven prediction of dimensionless quantities for semi-infinite target penetration by integrating machine-learning and feature selection methods
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作者 Qingqing Chen Xinyu Zhang +2 位作者 Zhiyong Wang Jie Zhang Zhihua Wang 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2024年第10期105-124,共20页
This study employs a data-driven methodology that embeds the principle of dimensional invariance into an artificial neural network to automatically identify dominant dimensionless quantities in the penetration of rod ... This study employs a data-driven methodology that embeds the principle of dimensional invariance into an artificial neural network to automatically identify dominant dimensionless quantities in the penetration of rod projectiles into semi-infinite metal targets from experimental measurements.The derived mathematical expressions of dimensionless quantities are simplified by the examination of the exponent matrix and coupling relationships between feature variables.As a physics-based dimension reduction methodology,this way reduces high-dimensional parameter spaces to descriptions involving only a few physically interpretable dimensionless quantities in penetrating cases.Then the relative importance of various dimensionless feature variables on the penetration efficiencies for four impacting conditions is evaluated through feature selection engineering.The results indicate that the selected critical dimensionless feature variables by this synergistic method,without referring to the complex theoretical equations and aiding in the detailed knowledge of penetration mechanics,are in accordance with those reported in the reference.Lastly,the determined dimensionless quantities can be efficiently applied to conduct semi-empirical analysis for the specific penetrating case,and the reliability of regression functions is validated. 展开更多
关键词 Data-driven dimensional analysis PENETRATION Semi-infinite metal target Dimensionless numbers feature selection
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Anomaly Detection Method Using Feature Reconstruction Based Knowledge Distillation
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作者 ZHU Xin-yu SI Zhan-jun ZHANG Ying-xue 《印刷与数字媒体技术研究》 CAS 北大核心 2024年第4期115-124,236,共11页
In recent years,anomaly detection has attracted much attention in industrial production.As traditional anomaly detection methods usually rely on direct comparison of samples,they often ignore the intrinsic relationshi... In recent years,anomaly detection has attracted much attention in industrial production.As traditional anomaly detection methods usually rely on direct comparison of samples,they often ignore the intrinsic relationship between samples,resulting in poor accuracy in recognizing anomalous samples.To address this problem,a knowledge distillation anomaly detection method based on feature reconstruction was proposed in this study.Knowledge distillation was performed after inverting the structure of the teacher-student network to avoid the teacher-student network sharing the same inputs and similar structure.Representability was improved by using feature splicing to unify features at different levels,and the merged features were processed and reconstructed using an improved Transformer.The experimental results show that the proposed method achieves better performance on the MVTec dataset,verifying its effectiveness and feasibility in anomaly detection tasks.This study provides a new idea to improve the accuracy and efficiency of anomaly detection. 展开更多
关键词 feature Reconstruction Anomaly Detection Distillation Mechanism Industrial Production
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Intelligent recognition and information extraction of radar complex jamming based on time-frequency features
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作者 PENG Ruihui WU Xingrui +3 位作者 WANG Guohong SUN Dianxing YANG Zhong LI Hongwen 《Journal of Systems Engineering and Electronics》 SCIE CSCD 2024年第5期1148-1166,共19页
In modern war,radar countermeasure is becoming increasingly fierce,and the enemy jamming time and pattern are changing more randomly.It is challenging for the radar to efficiently identify jamming and obtain precise p... In modern war,radar countermeasure is becoming increasingly fierce,and the enemy jamming time and pattern are changing more randomly.It is challenging for the radar to efficiently identify jamming and obtain precise parameter information,particularly in low signal-to-noise ratio(SNR)situations.In this paper,an approach to intelligent recognition and complex jamming parameter estimate based on joint time-frequency distribution features is proposed to address this challenging issue.Firstly,a joint algorithm based on YOLOv5 convolutional neural networks(CNNs)is proposed,which is used to achieve the jamming signal classification and preliminary parameter estimation.Furthermore,an accurate jamming key parameters estimation algorithm is constructed by comprehensively utilizing chi-square statistical test,feature region search,position regression,spectrum interpolation,etc.,which realizes the accurate estimation of jamming carrier frequency,relative delay,Doppler frequency shift,and other parameters.Finally,the approach has improved performance for complex jamming recognition and parameter estimation under low SNR,and the recognition rate can reach 98%under−15 dB SNR,according to simulation and real data verification results. 展开更多
关键词 complex jamming recognition time frequency feature convolutional neural network(CNN) parameter estimation
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DIFNet:SAR RFI suppression network based on domain invariant features
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作者 LYU Wen-Hao FANG Fu-Ping TIAN Yuan-Rong 《红外与毫米波学报》 CSCD 北大核心 2024年第6期775-783,共9页
Synthetic aperture radar(SAR)is a high-resolution two-dimensional imaging radar.However,during the imaging process,SAR is susceptible to intentional and unintentional interference,with radio frequency inter⁃ference(RF... Synthetic aperture radar(SAR)is a high-resolution two-dimensional imaging radar.However,during the imaging process,SAR is susceptible to intentional and unintentional interference,with radio frequency inter⁃ference(RFI)being the most common type,leading to a severe degradation in image quality.To address the above problem,numerous algorithms have been proposed.Although inpainting networks have achieved excellent results,their generalization is unclear.Whether they still work effectively in cross-sensor experiments needs fur⁃ther verification.Through the time-frequency analysis to interference signals,this work finds that interference holds domain invariant features between different sensors.Therefore,this work reconstructs the loss function and extracts the domain invariant features to improve its generalization.Ultimately,this work proposes a SAR RFI suppression method based on domain invariant features,and embeds the RFI suppression into SAR imaging pro⁃cess.Compared to traditional notch filtering methods,the proposed approach not only removes interference but also effectively preserves strong scattering targets.Compared to PISNet,our method can extract domain invariant features and hold better generalization ability,and even in the cross-sensor experiments,our method can still achieve excellent results.In cross-sensor experiments,training data and testing data come from different radar platforms with different parameters,so cross-sensor experiments can provide evidence for the generalization. 展开更多
关键词 synthetic aperture radar radio frequency interference suppression domain invariant features SAR imaging
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面向对象影像信息提取软件Feature Analyst和eCognition的分析与比较 被引量:17
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作者 牛春盈 江万寿 +1 位作者 黄先锋 谢俊峰 《遥感信息》 CSCD 2007年第2期66-70,I0005,共6页
介绍了目前最为先进的两种面向对象的影像信息提取软件Feature Analyst和eCognition。通过对两种软件设计思路、工作流程和软件特殊性的对比分析,探讨了影像信息自动提取的发展趋势。
关键词 面向对象 高分辨率遥感影像 信息提取 feature ANALYST ECOGNITION 机器学习
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一种识别I/O Feature的文件预测模型
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作者 杨晓芬 师明 +2 位作者 李博 胡海燕 刘轶 《小型微型计算机系统》 CSCD 北大核心 2012年第11期2493-2497,共5页
在文件预取技术中,如何提高文件预取的命中率和适用度一直是研究的焦点.尤其是在面对大批量数据读取的时候,如何提高预取命中率对系统的性能提升有着至关重要的影响.本文提出识别I/O Feature的预测模型(IOPM),该模型通过记录文件的历史... 在文件预取技术中,如何提高文件预取的命中率和适用度一直是研究的焦点.尤其是在面对大批量数据读取的时候,如何提高预取命中率对系统的性能提升有着至关重要的影响.本文提出识别I/O Feature的预测模型(IOPM),该模型通过记录文件的历史访问信息获取I/O Features,然后分析这些I/O访问模式,设计一个简单高效的特征符号表来表示这些模式.此预测模型可以有效地识别出顺序读、固定点读、逆序读、跳读、多步跳读等多种模式.同时,该模型添加应用程序的信息,可以有效地对不同程序之间的交叉读做出预测,具有很高的预测命中率. 展开更多
关键词 文件预取 命中率 预测模型 I O feature
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Seismic features of vibration induced by train 被引量:16
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作者 陈棋福 李丽 +5 位作者 李纲 陈凌 彭文涛 汤毅 陈颙 王夫运 《地震学报》 CSCD 北大核心 2004年第6期651-659,共9页
Based on schematically formulation of the vibrations induced by moving trains, this paper analyses the waveforms along the Datong-Qinhuangdao railroad in Northern China recorded in the suburban Huairou district of Bei... Based on schematically formulation of the vibrations induced by moving trains, this paper analyses the waveforms along the Datong-Qinhuangdao railroad in Northern China recorded in the suburban Huairou district of Beijing on March 8, 2003. It is illustrated that vibrations induced by train, except traditional recognized noises and interfer- ence effects, could be used as a seismic source to detect crustal structures with its advantage of abundant frequency spectrum, repeatability and no additional harm to the environment. It will bring lights to the traditional exploration seismology with the further studies of signal processing and interpretation methods, and related models and new observing systems. 展开更多
关键词 列车振动 多点运动源 记录特征
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磁共振feature tracking初步评价终末期肾病患者心肌形变 被引量:4
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作者 牟安娜 李智勇 +4 位作者 张晨 李梦颖 宋清伟 金凤强 刘爱连 《中国医学影像技术》 CSCD 北大核心 2016年第6期881-884,共4页
目的采用心脏磁共振feature tracking(CMR-FT)技术初步分析终末期肾病患者左心室心肌形变各参数的变化情况。方法对10例正常志愿者和9例终末期肾病接受血液透析治疗的患者行1.5T心脏非对比增强、FIESTA序列电影成像,并采用feature track... 目的采用心脏磁共振feature tracking(CMR-FT)技术初步分析终末期肾病患者左心室心肌形变各参数的变化情况。方法对10例正常志愿者和9例终末期肾病接受血液透析治疗的患者行1.5T心脏非对比增强、FIESTA序列电影成像,并采用feature tracking(FT)2D模型对左心室运动及整体心肌形变情况进行定量分析。结果终末期肾病患者左心室心肌质量[(132.70±44.44)g]大于正常志愿者[(80.00±11.29)g,P<0.05]。终末期肾病患者左心室心肌整体径向应变、环向应变、径向收缩期峰值运动速度、径向舒张期峰值运动速度均低于健康志愿者[(22.52±10.41)%vs(39.46±7.10)%,(-12.57±3.91)%vs(-19.80±2.11)%,(22.70±5.72)mm/s vs(34.77±3.81)mm/s,(-24.71±8.83)mm/s vs(-43.88±8.89)mm/s,P均<0.05)。而终末期肾病患者和正常志愿者的左心室射血分数、左心室舒张末期容积、左心室收缩末期容积差异无统计学意义(P均>0.05)。结论 CMR-FT技术能够定量评价终末期肾病患者左心室心肌运动及形变情况。 展开更多
关键词 磁共振成像 特征追踪 终末期肾病 形变
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Probing the Linguistic and Rhetorical Features of English Speeches 被引量:1
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作者 李庆明 《西安理工大学学报》 CAS 2004年第3期327-331,共5页
English speech is a discourse delivered at an assembly or on formal occasions. As a variety of the English language, English speech has a unique presentation of its own. This paper, as its title indicates, is to analy... English speech is a discourse delivered at an assembly or on formal occasions. As a variety of the English language, English speech has a unique presentation of its own. This paper, as its title indicates, is to analyze and probe the linguistic and rhetorical features of famous English speeches with a view to improving the ability to appreciate English speeches on the part of Chinese learners of English. 展开更多
关键词 英语演讲 语言学 修辞特征 句型
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基于Feature Forest的图像检索 被引量:2
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作者 宋金龙 胡福乔 赵宇明 《计算机工程》 CAS CSCD 北大核心 2010年第21期231-233,共3页
基于语义树(Vocabulary tree)的图像检索方法是效果最好的方法之一,但目前存在的基于Vocabulary tree的方法都是建立在一种特征上的,当图像库比较大时很难达到理想的效果。基于此,提出一种多特征检索结果的融合框架Feature forest,根据... 基于语义树(Vocabulary tree)的图像检索方法是效果最好的方法之一,但目前存在的基于Vocabulary tree的方法都是建立在一种特征上的,当图像库比较大时很难达到理想的效果。基于此,提出一种多特征检索结果的融合框架Feature forest,根据各种特征的检索结果好坏动态确定对应特征树的权值。实验结果证明,相对于单种特征的特征树,该方法有一定的优越性。 展开更多
关键词 语义树 特征融合 feature forest框架 SURF特征 HOG特征
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Mechanical properties and deformation features of AZ31-0.84%Sb alloy 被引量:3
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作者 田素贵 SOHN Keun-yong KIM Kyung-hyun 《材料与冶金学报》 CAS 2005年第2期138-141,共4页
The mechanical properties and deformation features of AZ31-0.84% Sb alloy have been studied by means of the measurement of the properties and morphology observation. Results show that UTS of AZ31-0.84% Sb alloy at roo... The mechanical properties and deformation features of AZ31-0.84% Sb alloy have been studied by means of the measurement of the properties and morphology observation. Results show that UTS of AZ31-0.84% Sb alloy at room temperature is 297MPa, a higher value of UTS is still maintained up to 189MPa as temperature elevated to 200℃. One of the main reasons for enhancing UTS of the alloy is attributed to the high volume fraction of the precipitates dispersed in the matrix, including Mg3Sb2 phase, which effectively hindered the movement of dislocations during the elevated temperature deformation. The deformation mechanisms of AZ31-0.84% Sb alloy are the twins and dislocations activated on basal and non-basal planes. a+c dislocations may be activated on the basal and non-basal planes in twins regions, and some of the thinner twins may shear through the dense dislocations within the thicker twins. 展开更多
关键词 机械性能 变形特征 AZ31合金 显微结构
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Feature fusion method for edge detection of color images 被引量:4
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作者 Ma Yu Gu Xiaodong Wang Yuanyuan 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2009年第2期394-399,共6页
A novel feature fusion method is proposed for the edge detection of color images. Except for the typical features used in edge detection, the color contrast similarity and the orientation consistency are also selected... A novel feature fusion method is proposed for the edge detection of color images. Except for the typical features used in edge detection, the color contrast similarity and the orientation consistency are also selected as the features. The four features are combined together as a parameter to detect the edges of color images. Experimental results show that the method can inhibit noisy edges and facilitate the detection for weak edges. It has a better performance than conventional methods in noisy environments. 展开更多
关键词 color image processing edge detection feature extraction feature fusion
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Feature evaluation and extraction based on neural network in analog circuit fault diagnosis 被引量:16
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作者 Yuan Haiying Chen Guangju Xie Yongle 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2007年第2期434-437,共4页
Choosing the right characteristic parameter is the key to fault diagnosis in analog circuit. The feature evaluation and extraction methods based on neural network are presented. Parameter evaluation of circuit feature... Choosing the right characteristic parameter is the key to fault diagnosis in analog circuit. The feature evaluation and extraction methods based on neural network are presented. Parameter evaluation of circuit features is realized by training results from neural network; the superior nonlinear mapping capability is competent for extracting fault features which are normalized and compressed subsequently. The complex classification problem on fault pattern recognition in analog circuit is transferred into feature processing stage by feature extraction based on neural network effectively, which improves the diagnosis efficiency. A fault diagnosis illustration validated this method. 展开更多
关键词 Fault diagnosis feature extraction Analog circuit Neural network Principal component analysis.
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Multi-scale object detection by top-down and bottom-up feature pyramid network 被引量:14
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作者 ZHAO Baojun ZHAO Boya +2 位作者 TANG Linbo WANG Wenzheng WU Chen 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2019年第1期1-12,共12页
While moving ahead with the object detection technology, especially deep neural networks, many related tasks, such as medical application and industrial automation, have achieved great success. However, the detection ... While moving ahead with the object detection technology, especially deep neural networks, many related tasks, such as medical application and industrial automation, have achieved great success. However, the detection of objects with multiple aspect ratios and scales is still a key problem. This paper proposes a top-down and bottom-up feature pyramid network(TDBU-FPN),which combines multi-scale feature representation and anchor generation at multiple aspect ratios. First, in order to build the multi-scale feature map, this paper puts a number of fully convolutional layers after the backbone. Second, to link neighboring feature maps, top-down and bottom-up flows are adopted to introduce context information via top-down flow and supplement suboriginal information via bottom-up flow. The top-down flow refers to the deconvolution procedure, and the bottom-up flow refers to the pooling procedure. Third, the problem of adapting different object aspect ratios is tackled via many anchor shapes with different aspect ratios on each multi-scale feature map. The proposed method is evaluated on the pattern analysis, statistical modeling and computational learning visual object classes(PASCAL VOC)dataset and reaches an accuracy of 79%, which exhibits a 1.8% improvement with a detection speed of 23 fps. 展开更多
关键词 convolutional neural NETWORK (CNN) feature PYRAMID NETWORK (FPN) object detection deconvolution.
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一种博弈树静态估值算法——ΔFeature状态估值 被引量:2
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作者 叶品星 《计算机工程与设计》 CSCD 2004年第7期1214-1217,共4页
在考虑下棋操作对棋盘影响的局部性后,提出了棋博弈的Δfeature状态估值算法,通过计算博弈树中相邻结点的特征变化来避免在叶结点上扫描整个棋盘,有效地减少了静态估值的时间开销。若棋子影响的局部范围足够小,还可以考虑将局部范围的... 在考虑下棋操作对棋盘影响的局部性后,提出了棋博弈的Δfeature状态估值算法,通过计算博弈树中相邻结点的特征变化来避免在叶结点上扫描整个棋盘,有效地减少了静态估值的时间开销。若棋子影响的局部范围足够小,还可以考虑将局部范围的所有情况列成表,以查表代替棋形匹配。ΔFeature状态估值算法也可以与其它优化博弈树搜索的方法一同使用,达到更好的效果。 展开更多
关键词 博弈树 静态评估函数 feature状态估值 空间搜索
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The Lexis Features of Advertisement English
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作者 张高锋 田建国 《陕西师范大学学报(哲学社会科学版)》 CSSCI 北大核心 2004年第S2期401-404,共4页
This paper is going to focus on the lexis characteristics of the advertisement English in stylistics. The lexis characteristics of advertisement include using the new form of the spelling of a word to attract the cons... This paper is going to focus on the lexis characteristics of the advertisement English in stylistics. The lexis characteristics of advertisement include using the new form of the spelling of a word to attract the consumers’ attention; using the borrowed words to enhance the transmission effect of the advertisements; Frequent use of some verbs, adjectives to express the information and enhance the effect of language expression; Using the compounds in flexibility. Meanwhile, we could find out that some specific terms are used and the word used in advertisements show the gender. 展开更多
关键词 ADVERTISEMENT ENGLISH lexis feature LANGUAGE EXPRESSION
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Electronic image stabilization system based on global feature tracking 被引量:7
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作者 Zhu Juanjuan Guo Baolong 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2008年第2期228-233,共6页
A new robust electronic image stabilization system is presented, which involves feature-point, tracking based global motion estimation and Kalman filtering based motion compensation. First, global motion is estimated ... A new robust electronic image stabilization system is presented, which involves feature-point, tracking based global motion estimation and Kalman filtering based motion compensation. First, global motion is estimated from the local motions of selected feature points. Considering the local moving objects or the inevitable mismatch, the matching validation, based on the stable relative distance between the points set is proposed, thus maintaining high accuracy and robustness. Next, the global motion parameters are accumulated for correction by Kalman filteration. The experimental result illustrates that the proposed system is effective to stabilize translational, rotational, and zooming jitter and robust to local motions. 展开更多
关键词 electronic image stabilization global motion estimation feature tracking Kalman filter.
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