Patents
Literature
Patsnap Copilot is an intelligent assistant for R&D personnel, combined with Patent DNA, to facilitate innovative research.
Patsnap Copilot

57 results about "One-class classification" patented technology

In machine learning, one-class classification (OCC), also known as unary classification or class-modelling, tries to identify objects of a specific class amongst all objects, by primarily learning from a training set containing only the objects of that class, although there exist variants of one-class classifiers where counter-examples are used to further refine the classification boundary. This is different from and more difficult than the traditional classification problem, which tries to distinguish between two or more classes with the training set containing objects from all the classes. An example is the classification of the operational status of a nuclear plant as 'normal': In this scenario, there are few, if any, examples of catastrophic system states; only the statistics of normal operation are known.

A sensitive image identification method and a system

The invention discloses a sensitive-image identification method and a system, and belongs to the technical field of image identification. The sensitive-image identification method and the system are characterized in that the following steps are comprised: a step 1, grid dividing characteristic extraction fused with skin color detection is carried out, and original bag-of-words expressing vectors of images are obtained through a bag-of-words model; a step 2, image characteristic optimization is carried out, and dimension-reduced optimization image vector expressions are obtained through the utilization of a random forest; a step 3, identification model training is carried out, that is to say through the utilization of a one-class support vector machine, a one class classifier is trained in optimization vector space; and a step 4, image identification is carried out, i.e., if the images completely do not contain skin color pixels in the pretreatment process of the step 1, the images are directly determined to be normal images; and otherwise, optimization characteristic expressions are obtained after processing, and the optimization characteristic expressions enter the one-class classification model obtained through the training, so that identification results of the images are finally obtained. According to the invention, a one-class classification algorithm is utilized to solve sensitive-image identification problem, and a plurality of techniques are fused in the processing process, and the characteristic optimization processing is carried out, so that the accuracy and the efficiency of the sensitive-image identification are improved.
Owner:南京多目智能科技有限公司

Incremental learning-fused support vector machine multi-class classification method

The invention relates to an incremental learning-fused support vector machine multi-class classification method, and aims to reduce sample training time and improve classification precision and anti-interference performance of a classifier. The technical scheme comprises the following steps of: 1, extracting partial samples from total samples at random to serve as a training sample set D, and using the other part of samples as a testing sample set T; 2, pre-extracting support vectors from the training sample set D; 3, performing support vector machine training on a pre-extracted training sample set PTS by using a cyclic iterative method so as to obtain a multi-class classification model M-SVM; 4, performing binary tree processing on the multi-class classification model M-SVM to obtain a support vector machine multi-class classification model BTMSVM0; 5, performing incremental learning training on the multi-class classification model BTMSVM0 to obtain a model BTMSVM1; and 6, inputting the testing sample set T in the step 1 into the multi-class classification model BTMSVM1 for classification. The incremental learning-fused support vector machine multi-class classification method is used for performing high-efficiency multi-class classification on massive information through incremental learning.
Owner:ZHEJIANG GONGSHANG UNIVERSITY

On-line diagnostic method for abnormal energy consumption branch of building

The invention discloses an on-line diagnostic method for an abnormal energy consumption branch of a building. The method comprises the following steps of: (1) circularly detecting all branches of an entire building according to a preset branch detection sequence; (2) determining detection reference time, and if a branch is detected for the first time, reading energy consumption information of thebranch from an energy consumption information management database and reconstructing to a phase space according to a phase space theory; and (3) providing branch abnormal alarm information corresponding to the energy consumption data when the detected energy consumption data is abnormal. The invention provides the method for performing data mining from a great capacity of energy consumption information of the building branch and discovering abnormal energy consumption data; and by the method, dynamic modeling and real-time abnormal data judgment can be realized and an adaptive diagnostic model is established by scrolling correction. The method solves the problem of processing the non-linear abnormal data detection by other methods based on a phase space reconstruction theory and classification technology by using a kernel function.
Owner:NANJING UNIV OF TECH

Multi-view human facial image gender identification method and device

The invention discloses a multi-view human facial image gender identification method and a device, wherein the method comprises the following steps: a step of matching by classifiers and a step of identifying human facial image gender. The step of matching by the classifiers comprises the following steps: S11, obtaining a plurality of sample human facial images from a human facial image library; S12, extracting sample characteristics of all sample human facial images and fuzzy matching the first classifier according to the sample characteristics; and S13, testing the sample characteristics by the first classifier and screening a target characteristic, and precisely matching the second classifier according to the target characteristic. The step of identifying human facial image gender comprises the following steps: S21, collecting video images of the target characteristic containing human faces to be detected; S22, extracting the target characteristic of the human faces to be detected; and S23, processing the target characteristic by the second classifier and identifying the human facial gender. The method and device disclosed by the invention can improve the identification rate of human facial images collected from different views.
Owner:SHENZHEN SUNWIN INTELLIGENT CO LTD

SAR target identification method based on scattering point and K-center one-class classifier

The invention discloses an SAR target identification method based on a scattering point and a K-center one-class classifier, and mainly overcomes the defects that in the prior art the difference of a target from a clutter false-alarm is not revealed in the view of the nature of radar imaging, and the total identification accuracy rate is low. According to the technical scheme, the SAR target identification method comprises the following steps: 1) detecting the clutter false-alarm of an SAR image, and extracting sections; 2) selecting sections with real targets from the extracted sections, thereby forming a training sample; 3) extracting a scattering point matrix from the training sample according to a scattering point model, and performing amplitude 2-norm normalization; 4) performing K-center clustering on the scattering point matrix of the training sample, thereby obtaining a cluster center; 5) calculating an identification threshold Thr of the K-center one-class classifier; 6) calculating the minimum bidirectional Hausdorff distance of a testing sample and the cluster center; 7) judging whether the testing sample is a target or not according to the distance. Through the adoption of the SAR target identification method, the false-alarm rate of clutter false-alarm is reduced, the total identification accuracy rate is effectively increased, and the SAR target identification method is applicable to artificial targets such as vehicles with remarkable strong scattering point distribution characteristics in SAR images.
Owner:XIDIAN UNIV

A natural resource vector-oriented surface coverage change statistical processing method

The invention discloses a natural resource vector-oriented surface coverage change statistical processing method and a storage medium. According to the method, administrative division is taken as a statistical unit, data of a plurality of different historical periods are matched, precisely spliced and cut, statistical analysis of different ground class classification codes is carried out after surface covering layer space superposition, and finally different types of statistical data reports are selected according to needs and are output. Statistical analysis is carried out by taking administrative division as a statistical unit; the volume of each data processing task is reduced; parallel processing resources of an existing computer can be utilized; A large amount of historical data oriented to natural resource vector surface coverage is processed at the same time, the processing speed and the processing efficiency are improved, query can be carried out in a mode of combination of administrative division codes and ground class distribution codes, and classification of different administrative divisions, ground class classification, classification area summarization and multi-dimensional extraction are achieved.
Owner:CHINESE ACAD OF SURVEYING & MAPPING
Who we serve
  • R&D Engineer
  • R&D Manager
  • IP Professional
Why Eureka
  • Industry Leading Data Capabilities
  • Powerful AI technology
  • Patent DNA Extraction
Social media
Try Eureka
PatSnap group products