首页 | 本学科首页   官方微博 | 高级检索  
文章检索
  按 检索   检索词:      
出版年份:   被引次数:   他引次数: 提示:输入*表示无穷大
  收费全文   3128篇
  免费   476篇
  国内免费   430篇
电工技术   298篇
综合类   320篇
化学工业   194篇
金属工艺   87篇
机械仪表   239篇
建筑科学   101篇
矿业工程   99篇
能源动力   123篇
轻工业   77篇
水利工程   48篇
石油天然气   37篇
武器工业   30篇
无线电   350篇
一般工业技术   204篇
冶金工业   30篇
原子能技术   10篇
自动化技术   1787篇
  2024年   4篇
  2023年   53篇
  2022年   68篇
  2021年   87篇
  2020年   121篇
  2019年   103篇
  2018年   88篇
  2017年   119篇
  2016年   100篇
  2015年   152篇
  2014年   195篇
  2013年   224篇
  2012年   217篇
  2011年   257篇
  2010年   190篇
  2009年   208篇
  2008年   239篇
  2007年   289篇
  2006年   266篇
  2005年   228篇
  2004年   170篇
  2003年   121篇
  2002年   123篇
  2001年   87篇
  2000年   65篇
  1999年   83篇
  1998年   49篇
  1997年   44篇
  1996年   22篇
  1995年   23篇
  1994年   2篇
  1993年   4篇
  1992年   2篇
  1991年   2篇
  1990年   3篇
  1989年   6篇
  1988年   4篇
  1987年   1篇
  1986年   1篇
  1984年   4篇
  1983年   5篇
  1981年   1篇
  1980年   3篇
  1977年   1篇
排序方式: 共有4034条查询结果,搜索用时 31 毫秒
71.
特征权对贝叶斯分类器文本分类性能的影响   总被引:1,自引:0,他引:1  
高秀梅  陈芳  宋枫溪  金忠 《计算机应用》2008,28(12):3080-3083
在文本分类研究中,人们希望用特征权来改善文本分类效果。以最优分类器——贝叶斯分类器为基准分类器,研究了特征权对文本分类性能的可能影响。理论推导表明,就最优分类器而言,特征权不能有效提高文本分类效果。  相似文献   
72.
基于亮度分级和方向密度的无监督文本定位   总被引:1,自引:0,他引:1  
刘琼  周慧灿  王耀南 《计算机应用》2008,28(6):1523-1526
提出一种基于RGB亮度分级和方向密度的自然场景无监督文本定位方法,该方法基于场景文本通常与局部背景有较大的对比度这一特性,分别在R、G、B三个颜色层进行亮度分级,以降低背景复杂性;然后,利用文字笔画的显著方向性,以方向密度为依据进行文本区域粗定位;再进一步利用SVM多类分类器实现文本区域精确判别。新方法克服了一般无监督方法颜色聚类数目选定困难的问题,限制了候选区域的种类,从而降低了SVM分类器的训练难度,具有较高的准确性和鲁棒性。  相似文献   
73.
针对磁编码器中各类误差导致的解码精度低的问题,在神经网络原理的基础上提出单层自适应神经网络对正余弦信号中存在的幅值不相等、相位不正交、直流偏置、谐波与噪声等误差进行补偿。采用锁相环算法对补偿后的正余弦信号进行解码。电路中采用TLE5501磁阻芯片检测角度变化,利用TL082C运放芯片对信号进行调理,最后采用STM32G431单片机验证算法的性能。通过仿真与试验验证,证明了该算法的有效性与可行性。  相似文献   
74.
For a long time, legal entities have developed and used crime prediction methodologies. The techniques are frequently updated based on crime evaluations and responses from scientific communities. There is a need to develop type-based crime prediction methodologies that can be used to address issues at the subgroup level. Child maltreatment is not adequately addressed because children are voiceless. As a result, the possibility of developing a model for predicting child abuse was investigated in this study. Various exploratory analysis methods were used to examine the city of Chicago’s child abuse events. The data set was balanced using the Borderline-SMOTE technique, and then a stacking classifier was employed to ensemble multiple algorithms to predict various types of child abuse. The proposed approach successfully predicted crime types with 93% of accuracy, precision, recall, and F1-Score. The AUC value of the same was 0.989. However, when compared to the Extra Trees model (17.55), which is the second best, the proposed model’s execution time was significantly longer (476.63). We discovered that Machine Learning methods effectively evaluate the demographic and spatial-temporal characteristics of the crimes and predict the occurrences of various subtypes of child abuse. The results indicated that the proposed Borderline-SMOTE enabled Stacking Classifier model (BS-SC Model) would be effective in the real-time child abuse prediction and prevention process.  相似文献   
75.
Nowadays in the medical field, imaging techniques such as Optical Coherence Tomography (OCT) are mainly used to identify retinal diseases. In this paper, the Central Serous Chorio Retinopathy (CSCR) image is analyzed for various stages and then compares the difference between CSCR before as well as after treatment using different application methods. The first approach, which was focused on image quality, improves medical image accuracy. An enhancement algorithm was implemented to improve the OCT image contrast and denoise purpose called Boosted Anisotropic Diffusion with an Unsharp Masking Filter (BADWUMF). The classifier used here is to figure out whether the OCT image is a CSCR case or not. 150 images are checked for this research work (75 abnormal from Optical Coherence Tomography Image Retinal Database, in-house clinical database, and 75 normal images). This article explicitly decides that the approaches suggested aid the ophthalmologist with the precise retinal analysis and hence the risk factors to be minimized. The total precision is 90 percent obtained from the Two Class Support Vector Machine (TCSVM) classifier and 93.3 percent is obtained from Shallow Neural Network with the Powell-Beale (SNNWPB) classifier using the MATLAB 2019a program.  相似文献   
76.
77.
Owing to the recent proliferation of smartphones and the SNS, a large number of images taken by smartphones at various places have been uploaded to SNSs. In addition, smartphones are equipped with various sensors such as Wi-Fi modules that enable us to generate an image associated with the sensory information that represents the context in which the image was captured. This study demonstrates the benefits of images associated with Wi-Fi signals in the automated construction of a Wi-Fi-based indoor logical location classifier that predicts a semantic location label of a user’s position for shopping complexes. In this study, a logical location class refers to the store class label in a shopping complex, such as Starbucks and H&M. Given a collection of images associated with Wi-Fi signals taken at a shopping complex and the complex’s floor plan, the proposed method first estimates the store label at which an image was taken by analyzing the image and crawled online images of branch stores. Then, the 2D coordinates of the images taken at branch stores on the floor coordinate system can be estimated using the floor plan. Subsequently, by using the Wi-Fi signals of the branch store images and their estimated 2D coordinates, we construct a transformation function that maps Wi-Fi signals onto the 2D coordinates, and we adopt this function to predict an indoor location class of an observed Wi-Fi scan from a smartphone possessed by an end user. The proposed transformation function comprises an ensemble of sub-functions designed based on CVAEs. Finally, we demonstrate the effectiveness of the proposed method for three actual shopping complexes.  相似文献   
78.
Fault detection and classification is a key challenge for the protection of High Voltage DC (HVDC) transmission lines. In this paper, the Teager–Kaiser Energy Operator (TKEO) algorithm associated with a decision tree-based fault classi f ier is proposed to detect and classify various DC faults. The Change Identification Filter is applied to the average and differential current components, to detect the first instant of fault occurrence (above threshold) and register a Change Identified Point (CIP). Further, if a CIP is registered for a positive or negative line, only three samples of currents (i.e., CIP and each side of CIP) are sent to the proposed TKEO algorithm, which produces their respective 8 indices through which the, fault can be detected along with its classification. The new approach enables quicker detection allowing utility grids to be restored as soon as possible. This novel approach also reduces computing complexity and the time required to identify faults with classification. The importance and accuracy of the proposed scheme are also thor oughly tested and compared with other methods for various faults on HVDC transmission lines.  相似文献   
79.
在图像分类和工业视觉检测过程中,缺陷样本量少导致神经网络分类器训练效率低及检测精度差,直接采用原始的离散标签又无法使网络分类器学习到不同类别间的相似度信息。针对上述问题,在区域丢弃算法的基础上,提出一种基于生成对抗网络的知识蒸馏数据增强算法。使用补丁对丢弃区域进行填补,减少区域丢弃产生的非信息噪声。在补丁生成网络中,保留生成对抗网络的编码器-解码器结构,利用编码器卷积层提取特征,通过解码器对特征图上采样生成补丁。在样本标签生成过程中,采用知识蒸馏算法中的教师-学生训练模式,按照交叉检验方式训练教师模型,根据教师模型生成的软标签对学生模型的训练进行指导,提高学生模型对特征的学习能力。实验结果表明,与区域丢弃算法相比,该算法在CIFAR-100、CIFAR-10数据集图像分类任务上的Top-1 Err、Top-5 Err分别降低3.1、0.8、0.5、0.6个百分点,在汽车转向器轴承数据集语义分割任务上的平均交并比和识别准确率分别提高2.8、2.3个百分点。  相似文献   
80.
This article proposes a novel and efficient methodology for the detection of Glioblastoma tumor in brain MRI images. The proposed method consists of the following stages as preprocessing, Non‐subsampled Contourlet transform (NSCT), feature extraction and Adaptive neuro fuzzy inference system classification. Euclidean direction algorithm is used to remove the impulse noise from the brain image during image acquisition process. NSCT decomposes the denoised brain image into approximation bands and high frequency bands. The features mean, standard deviation and energy are computed for the extracted coefficients and given to the input of the classifier. The classifier classifies the brain MRI image into normal or Glioblastoma tumor image based on the feature set. The proposed system achieves 99.8% sensitivity, 99.7% specificity, and 99.8% accuracy with respect to the ground truth images available in the dataset.  相似文献   
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号