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

144 results about "Score vector" patented technology

Score vector. In the theory of maximum likelihood estimation, the score vector (or simply, the score) is the gradient (i.e., the vector of first derivatives) of the log-likelihood function with respect to the parameters being estimated.

Systems and methods for semantically classifying shots in video

The present disclosure relates to systems and methods for classifying videos based on video content. For a given video file including a plurality of frames, a subset of frames is extracted for processing. Frames that are too dark, blurry, or otherwise poor classification candidates are discarded from the subset. Generally, material classification scores that describe type of material content likely included in each frame are calculated for the remaining frames in the subset. The material classification scores are used to generate material arrangement vectors that represent the spatial arrangement of material content in each frame. The material arrangement vectors are subsequently classified to generate a scene classification score vector for each frame. The scene classification results are averaged (or otherwise processed) across all frames in the subset to associate the video file with one or more predefined scene categories related to overall types of scene content of the video file.
Owner:TIVO SOLUTIONS INC

Method and apparatus for coordination of motion determination over multiple frames

PCT No. PCT / EP96 / 01272 Sec. 371 Date Nov. 21, 1997 Sec. 102(e) Date Nov. 21, 1997 PCT Filed Mar. 22, 1996 PCT Pub. No. WO96 / 29679 PCT Pub. Date Sep. 26, 1996The present invention concerns improved motion estimation in signal records. A method for estimating motion between one reference image and each frame in a sequence of frames, each frame consisting of a plurality of samples of an input signal comprises the steps of: transforming the estimated motion fields into a motion matrix, wherein each row corresponds to one frame, and each row contains each component of motion vector for each element of the reference image; performing a Principal Component Analysis of the motion matrix, thereby obtaining a motion score matrix consisting of a plurality of column vectors called motion score vectors and a motion loading matrix consisting of a plurality of row vectors called motion loading vectors, such that each motion score vector corresponds to one element for each frame, such that each element of each motion loading vector corresponds to one element of the reference image, such that one column of said motion score matrix and one motion loading vector together constitute a factor, and such that the number of factors is lower than or equal to the number of said frames; wherein the results from the Principal Component Analysis on the motion matrix are used to influence further estimation of motion from the reference image to one or more of the frames.
Owner:IDT INT DIGITAL TECH DEUTLAND

Systems and Methods for Semantically Classifying and Normalizing Shots in Video

The present disclosure relates to systems and methods for classifying videos based on video content. For a given video file including a plurality of frames, a subset of frames is extracted for processing. Frames that are too dark, blurry, or otherwise poor classification candidates are discarded from the subset. Generally, material classification scores that describe type of material content likely included in each frame are calculated for the remaining frames in the subset. The material classification scores are used to generate material arrangement vectors that represent the spatial arrangement of material content in each frame. The material arrangement vectors are subsequently classified to generate a scene classification score vector for each frame. The scene classification results are averaged (or otherwise processed) across all frames in the subset to associate the video file with one or more predefined scene categories related to overall types of scene content of the video file.
Owner:TIVO SOLUTIONS INC

Multi-behavior process monitoring method based on pivot analysis and vectorial data description support

The invention discloses a multi-operating process monitor method based on principal component analysis and support vectors data. The method establishes a uniform PCA model to various operating mixed data firstly, puts score vectors of principal component space and residual space to high dimension characteristic space. Two new statistics are established in the characteristic space for monitoring the principal component space and residual space. When the process goes wrong, a fault reconstruction method based on SVDD identifies fault. The method establishes two SVDD statistics monitor model to various operating based that the principal analysis method is used for reducing process variable dimension, reduces statistics limit of processing monitor, increases sensitivity of processing monitoring. In addition, the invention provides a fault reconstruction and identifying method aiming at detected process fault which can locate source of fault commendably, is benefit to removing fault as soon as possible, returns process to normal operation.
Owner:ZHEJIANG UNIV

Method and system for training a big data machine to defend

Disclosed herein are a method and system for training a big data machine to defend, retrieve log lines belonging to log line parameters of a system's data source and from incoming data traffic, compute features from the log lines, apply an adaptive rules model with identified threat labels produce a features matrix, identify statistical outliers from execution of statistical outlier detection methods, and may generate an outlier scores matrix. Embodiments may combine a top scores model and a probability model to create a single top scores vector. The single top scores vector and the adaptive rules model may be displayed on a GUI for labeling of malicious or non-malicious scores. Labeled output may be transformed into a labeled features matrix to create a supervised learning module for detecting new threats in real time and reducing the time elapsed between threat detection of the enterprise or e-commerce system.
Owner:CORELIGHT INC

Pre-screening training data for classifiers

A system and method provide recommendations for refining training data that includes a training set of digital objects. A submitter labels the digital objects in the training set with labels, which may indicate whether the object is considered positive, neutral, or negative with respect to each of a predefined set of classes. Score vectors are computed by a trained categorizer for each digital object in the labeled training set. From the score vectors, various metrics are computed, such as a representative score vector and distances of score vectors from the representative score vector for a label group, cluster, or category of the categorizer. Based on the computed metrics, heuristics are applied and the training data is evaluated and recommendations may be made to the submitter, such as proposing that mislabeled objects are relabeled. The training data may include unlabeled digital objects, in which case, the recommendations may include suggestions for labeling the unlabeled objects.
Owner:XEROX CORP

Categorizing network resources and extracting user interests from network activity

A method for network resource classification and identifying user interests based on the classification. The method uses a provided hierarchy of categories for classifying network resources, wherein each category is assigned a text item describing the category and the method includes obtaining resource description data collections corresponding to the network resources, and generating, using a semantic correlation algorithm, a category score vector of a network resource by comparing the resource description data collection to the text item assigned to each category in the hierarchy of categories, wherein the category score vector comprises a category score for each category in the hierarchy of categories, wherein the category score is determined based on at least a semantic correlation measure between the resource description data collection and the text item assigned to a corresponding category, wherein the plurality of network resources are classified based at least on the category score.
Owner:THE BOEING CO

Information processing apparatus, information processing method, and program

An information processing apparatus includes the following elements. A learning unit is configured to perform Adaptive Boosting Error Correcting Output Coding learning using image feature values of a plurality of sample images each being assigned a class label to generate a multi-class classifier configured to output a multi-dimensional score vector corresponding to an input image. A registration unit is configured to input a register image to the multi-class classifier, and to register a multi-dimensional score vector corresponding to the input register image in association with identification information about the register image. A determination unit is configured to input an identification image to be identified to the multi-class classifier, and to determine a similarity between a multi-dimensional score vector corresponding to the input identification image and the registered multi-dimensional score vector corresponding to the register image.
Owner:SONY CORP

Systems and Methods for Semantically Classifying and Extracting Shots in Video

The present disclosure relates to systems and methods for classifying videos based on video content. For a given video file including a plurality of frames, a subset of frames is extracted for processing. Frames that are too dark, blurry, or otherwise poor classification candidates are discarded from the subset. Generally, material classification scores that describe type of material content likely included in each frame are calculated for the remaining frames in the subset. The material classification scores are used to generate material arrangement vectors that represent the spatial arrangement of material content in each frame. The material arrangement vectors are subsequently classified to generate a scene classification score vector for each frame. The scene classification results are averaged (or otherwise processed) across all frames in the subset to associate the video file with one or more predefined scene categories related to overall types of scene content of the video file.
Owner:TIVO SOLUTIONS INC

Spelling error correction method and system of ES search engine

The invention discloses a spelling error correction method and system of an ES search engine, and relates to the technical field of information. The method comprises the following steps of: dividing spelling content input by a user into a plurality of entries by adoption of an ansj word segmentation device; carrying out error detection on each entry, if an error entry exists, searching error models matched from the error entry from an error model library, and obtaining correction candidate words corresponding to the error entry from the matched error models; calculating a score, under each matched error model, of each correction candidate word according to the matched error models, and forming a score vector according to the score under each matched error model; processing the score vectors by adoption of an L2R model so as to generate scores of the error models, and determining a total score of each correction candidate word according to the scores of the error models and a language model; and determining the correction candidate word with the highest score in the total score as a correct candidate word, and displaying the correct candidate word. The method and system disclosed by the invention can improve the correctness of spelling error correction.
Owner:广州智索信息科技有限公司

Partial least squares-based Gaussian regression soft measurement modeling method

The invention discloses a partial least squares-based Gaussian regression soft measurement modeling method. The method can be applied to industrial processes with relatively strong time-varying characteristic, coupling, nonlinearity, hysteresis and other complex characteristics. The method comprises the following steps of: firstly, carrying out dimensionality reduction on multi-element input dataon the basis of a partial least squares method, and selecting proper score vectors as input of a Gaussian process regression model; secondly, selecting and combining covariance functions, and constructing different types of Gaussian process regression soft measurement models to predict output data; and finally, evaluating prediction ability of the models by using test set data. Modeling results ofpaper-making wastewater treatment process data prove that a partial least squares-based dimensionality reduction technology for measured variables can improve the prediction ability of the Gaussian process regression model; and the Gaussian process regression models constructed by different covariance functions provide multiple options for effluent indexes, so that the method is more suitable forcomplex and changeable paper-making wastewater treatment environment.
Owner:NANJING FORESTRY UNIV

System and Method for Collecting and Distributing Traffic Information

In a center apparatus, a feature space projection processing unit performs a feature space projection process for probe data corresponding to a road section which are stored in a current probe data storage unit to extract the feature data, and a change point detecting unit; an event section partitioning unit and an event assigning unit determine a road section corresponding to the feature data, and assign the event information to the determined road section; and an event information distributing unit distributes the event information assigned to the road section. In a vehicle-installed terminal apparatus, a probe data partitioning unit and an orthogonal component decomposition unit performs processes of partitioning and orthogonal component decomposition of the probe data using a feature score vector obtained from the center apparatus, to thereby reduce the probe data to be uplinked.
Owner:CLARION CO LTD

Straw solid-state fermentation process parameter soft measurement method and device based on near infrared spectrum

The invention discloses a straw solid-state fermentation process parameter soft measurement method and a device based on near infrared spectrum. Firstly, a physical and chemical analysis method is adopted for obtaining solid-state fermentation process product sample reference measurement values to form a database, a near infrared spectrometer is used for acquiring spectral data, the acquired spectral data is transmitted to a computer, the computer conducts principal component analysis to the preprocessed spectral data to obtain the eigenvalue information of a principal component score matrix and a spectrum covariance matrix, cumulative variance contribution rate is calculated through an eigenvalue matrix, and first few principal component score vectors of the score matrix with the cumulative variance contribution rate being above 90 percent are extracted as the characteristic variables of a solid-state fermentation process product sample; then the characteristic variables of a solid-state fermentation process product sample are correlated with the database and a partial least square method is adopted for building a multi-parameter soft measurement model; and finally the obtained characteristic variables of the sample to be detected are input into the model for detection to obtain the predicted value of the process parameter index of the sample to be detected. The straw solid-state fermentation process parameter soft measurement method and the device based on near infrared spectrum have the advantages of simplicity and convenience in operation, high detection speed and good repeatability.
Owner:JIANGSU UNIV

User dynamic preference oriented commodity sequence personalized recommendation method

The invention discloses a user dynamic preference oriented commodity sequence personalized recommendation method. The method comprises the steps of extracting a commodity sequence under the same usersimilarity score to construct a commodity score vector; extracting a user sequence of similar scores of the same commodity to obtain a user score vector; combining user personal information, commoditybasic attribute information, user and article comments and commodity pictures; achieving feature extraction of a user and a commodity based on multi-task learning, taking a user feature vector and afeature vector of a historical commodity sequence of the user feature vector as input, achieving generation of the commodity sequence by training a coder-decoder, and accurately learning recommendation of the optimal commodity sequence in combination with a search strategy. According to the invention, based on the multi-modal user-commodity data, the user features and the commodity features are highly extracted and fused, personalized recommendation of the commodity sequence for user preferences is realized, and the user experience is improved.
Owner:SOUTH CHINA NORMAL UNIVERSITY +1

Action recognition method based on skeleton sequence

The invention relates to an action recognition method based on a skeleton sequence. The method comprises the steps that all skeletons of the skeleton sequence are projected to the front surface, the side surface and the top surface of a Descartes orthogonal system according to three-dimensional information, and a skeleton distribution diagram is generated; time information is added into the skeleton distribution diagram through color change; convolutional neural network model training is conducted on the skeleton distribution diagram, which is generated based on a training dataset and formed on the three projection surfaces and to which the time information is added, through the convolutional neural network; for each test sample, three Scores vectors are calculated according to three trained convolutional neural network models and targeted at the skeleton distribution diagram which is formed on the three projection surfaces and to which the time information is added; after the Scores vectors of the three projection surfaces are added, the category to which the maximum value belongs is taken as a subordinate category of the video sequence. Through the method, human actions can be recognized accurately and reliably.
Owner:TIANJIN UNIV

Crude oil type near infrared spectrum identification method

The invention relates to a crude oil type near infrared spectrum identification method, which comprises that various crude oil samples are collected; after a second order differentiation treatment, the absorbance of the spectrum regions 4628-4000 cm<-1> and 6076-5556 cm<-1> are taken to establish a crude oil sample near infrared spectrum database; the near infrared spectrum database is subjected to main component analysis, and the spectrum database scoring matrixes T and the spectrum database loading matrixes P of the first 14-16 main components are taken; after the second order differentiation treatment, the absorbance of a crude oil sample to be identified in the characteristic spectrum regions form vector x, the main component scoring vector t is calculated, 10-14 crude oil samples having the similar scoring vector t are selected from the spectrum database scoring matrixes T, the spectrums of the samples form an adjacent spectrum database, and the identification parameters of various samples in the adjacent spectrum database on the x are calculated; and the sample same to the crude oil to be identified does not exist if all Qi values are not more than Qi, and if Qi is more than Qt and each mobile correlation coefficients of the sample i is not less than 0.9900, the crude oil to be identified and the sample i in the adjacent database are the same. With the method of the present invention, the identification speed of the unknown crude oil sample can be improved.
Owner:CHINA PETROLEUM & CHEM CORP +1

Object identification device

In an object identification device, each score calculator extracts a feature quantity from the image, and calculates a score using the extracted feature quantity and a model of the specified object. The score represents a reliability that the specified object is displayed in the image. A score-vector generator generates a score vector having the scores as elements thereof. A cluster determiner determines, based on previously determined clusters in which the score vector is classifiable, one of the clusters to which the score vector belongs as a target cluster. An object identifier identifies whether the specified object is displayed in the image based on one of the identification conditions. The one of the identification conditions is previously determined for the target cluster determined by the cluster determiner.
Owner:DENSO CORP

Computational method for detecting remote sequence homology

The present invention relates to a computation method for detecting remote sequence homologies. The method comprises the following steps: First, a training sequence set of positive and negative examples each having a corresponding binary label is provided together with a database query sequence set (typically large) of unlabeled sequences. Second, each sequence in the training set is converted into a fixed-length vector of real values by computing pairwise sequence similarity scores with respect to the vectorization set to obtain vectorized training sequences each having corresponding binary labels. Third, the vectorized training sequences (along with their binary labels) are used to train a discriminative classification algorithm to obtain a trained discriminative classification algorithm. Fourth, the the database of unlabeled sequences are converted into pairwise score vectors, using the vectorization set to obtain vectorized database sequences. Finally, each vectorized database query sequence is presented to the trained discriminative classification algorithm to produce predicted classifications for the database query sequence.
Owner:NOBLE WILLIAM STAFFORD

Diagnosis method for sensor faults of motor train unit braking system

The invention discloses a diagnosis method for sensor faults of a motor train unit braking system. The method includes: subjecting collected historical sensor signals of a motor train unit to EEMD (ensemble empirical mode decomposition) processing, and creating energy feature vectors of the historical sensor signals; training an FDA (fisher discriminant analysis) model according to the energy feature vectors so as to obtain FDA model parameters; colleting on-line sensor test signals, subjecting the on-line sensor test signals to EEMD processing, and creating energy feature vectors of the on-line sensor test signals; computing FDA score vectors of the energy feature vectors of the sensor test signals according to a projection matrix in the FDA model parameters; classifying the FDA score vectors based on the parameters of the FDA model, and determining fault categories of the on-line test signals. By the method, the defect of modal aliasing effect in the EMD method is overcome, signal features can be extracted effectively, the single FDA model is used for fault classification, and complexity of the SVM (support vector machine) based fault classification algorithm is lowered.
Owner:TSINGHUA UNIV

Item recommendation method, apparatus, computer apparatus and storage medium

Embodiments of the present application disclose an item recommendation method, apparatus, computer device, and storage medium. The method includes: determining a target user group from a plurality ofuser groups according to a score vector of the target user, and then calculating a similarity value between the target user and each user in the user group to which the target user belongs; Determining a similar user of the target user according to the similarity value; Obtaining items scored by similar users but not scored by target users as recommendation items and generating a first item recommendation table according to the recommendation items; According to the similarity value between the target user and the similar user, the scoring value of each recommended item by the similar user andthe corresponding time attenuation factor, calculating the scoring value of each recommendation item according to the preset calculation formula; sorting a plurality of recommendation items accordingto a preset sorting rule according to an item score value to generate a second item recommendation table and push to a target user. This method can improve the accuracy of item recommendation and effectively avoid the lag problem of recommended projects.
Owner:PING AN TECH (SHENZHEN) CO LTD

Feature selection method for FMRI (Functional Magnetic Resonance Imaging) data

InactiveCN104504373AFully reflect the structuralStable Feature Importance MeasureCharacter and pattern recognitionFault toleranceResonance
The invention discloses a feature selection method for FMRI (Functional Magnetic Resonance Imaging) data, belongs to the technical field of biomedical image mode identification, and particularly relates to the feature selection method of a functional magnetic resonance image. The method comprises the following steps of randomly selecting a submatrix of data, calculating the weight vectors of selected features by using an elastic net method, and converting the obtained weight vectors into stable score vectors; repeating the process p (p is greater than 1,000) times to obtain the selected time vector of each feature, acquiring feature importance metrics according to the calculated accumulated stable score vectors and time vectors, and performing feature sequencing and selection. The method disclosed by the invention has the characteristics of high fault tolerance, high stability and the like. A novel effective technology is provided for feature selection and sequencing in the fields of magnetic resonance data mode identification and the like.
Owner:UNIV OF ELECTRONICS SCI & TECH OF CHINA

Adversarial sample detection method and device, computing equipment and computer storage medium

The invention relates to the technical field of machine learning, and discloses an adversarial sample detection method and device, computing equipment and a computer storage medium. The method comprises the following steps: acquiring a training sample and a corresponding training sample label, wherein the training sample label comprises a normal sample and an adversarial sample; inputting the training sample into a target model to obtain a first prediction score vector of the training sample; adding N times of random disturbance to the training sample to obtain N groups of contrast training samples; respectively inputting the N groups of contrast training samples into a target model to obtain a second prediction score vector of each group of contrast training samples; constructing featuredata according to the first prediction score vector and the second prediction score vector of each group of contrast training samples; training a classification model according to the feature data andthe training sample label corresponding to the feature data to obtain a detector; and detecting the input test data according to the detector. According to the embodiment of the invention, reliable detection of the adversarial sample can be realized according to the detector.
Owner:DONGGUAN UNIV OF TECH

Method and System for Contrast Inflow Detection in 2D Fluoroscopic Images

A method and system for contrast inflow detection in a sequence of fluoroscopic images is disclosed. Vessel segments are detected in each frame of a fluoroscopic image sequence. A score vector is determined for the fluoroscopic image sequence based on the detected vessel segments in each frame of the fluoroscopic image sequence. It is determined whether a contrast agent injection is present in the fluoroscopic image sequence based on the score vector. If it is determined that a contrast agent injection is present in the fluoroscopic image sequence, a contrast inflow frame, at which contrast agent inflow begins, is detected in the fluoroscopic image sequence based on the score vector.
Owner:SIEMENS HEALTHCARE GMBH

Method for fast identifying speeking person based on comparing ordinal number of archor model space projection

The invention relates to a fast speaker confirming method based on the ordinal number comparison of anchor model spatial projection, firstly making anchor model mapping on the test voice, and then making ordinal number comparison between the mapped test voice and the speaker declared by the test voice. The anchor model mapping: firstly extracting the characteristics of the test voice to obtain an eigenvector sequence, then estimating the probability density of each Gauss mixed model in the anchor model and the background model to obtain a mapped score vector. And the ordinal number comparison arranges the scores in the vector components and compares the score ordinal numbers of the test voice and the declared speaker and calculates Euclidian distance between the ordinal numbers, and finally compares the distance with a threshold value to obtain the final result. The invention has wider safety and adaptivity.
Owner:ZHEJIANG UNIV

Method of designing small fault diagnosis system used for high speed railway traction system inverter

ActiveCN106959397AAdvantages of Micro Fault Diagnosis CapabilityMinor glitches are validTesting electric installations on transportData setEngineering
The invention discloses a method of designing a small fault diagnosis system used for a high speed railway traction system inverter. The method comprises steps that 1) according to a sensor of a traction system, off-line data of three-phase current is acquired and stored; 2) the acquired data set is preprocessed; 3) characteristic extraction is carried out according to idea of PCA, and a characteristic value matrix, a load matrix, and a score matrix are acquired; 4) a distance between score vectors is measured by adopting KL divergences in pivotal element space and residual space; 5) according to the distribution and hypothesis testing method of the KL divergences of the score vectors, the detection threshold value of the pivotal element space and the threshold value of the residual space are determined; 6) data in an actual system is acquired and preprocessed; 7) KL divergences of pivotal element score vectors and KL divergences of off-line score vectors are acquired by calculation, and are compared with the threshold values for fault decision. The small fault diagnosis system of the high speed railway traction system is advantageous in that realizability and algorithm superiority are improved and optimized from application perspective.
Owner:NANJING UNIV OF AERONAUTICS & ASTRONAUTICS

Bilinear neural network false news detection method and system based on style guidance

The invention provides a bilinear neural network false news detection method and system based on style guidance. The method comprises the following steps: acquiring a news text to be subjected to network false news detection, quantifying language style characteristics of the news text through a neural network to obtain a style vector of the news text, and inputting the news text into a text characteristic extractor to obtain a text vector of the news text; inputting the style vector and the text vector into a bilinear neural network, the bilinear neural network comprising a bilinear function for modeling a correlation between the style vector and the text vector to obtain a style-style of the news text; using the maximum score vector in the style-text feature matrix to form a guide vector,and inputting the guide vector to the full connection layer to determine the false news label of the news text. The learning process of the deep learning model is guided according to the language style of the false news generality, and the recognition accuracy and the generalization performance of the model are improved.
Owner:INST OF COMPUTING TECH CHINESE ACAD OF SCI

Accurate audience advertisement pushing method and system based on artificial intelligence and readable storage medium

The invention relates to an accurate audience advertisement pushing method and system based on artificial intelligence and a readable storage medium, and the method comprises the steps: obtaining userportrait data through big data analysis, carrying out the behavior modeling of the user portrait data, and constructing a user data platform; collecting user behavior information, collecting user traffic advertisement materials, establishing a feature word bank, and generating a user behavior log; establishing an advertisement recommendation model through a user behavior log, inputting user behavior information into the recommendation model, generating a plurality of characteristic spectrums, outputting nonlinear data through an activation function, and extracting similarity characteristics of a user and an advertisement; obtaining a user score vector according to the user behavior information; judging whether the sparsity of the user scoring vector is greater than a preset threshold value or not; if the similarity is smaller than the preset threshold value, calculating the similarity between the advertisement materials and the user interest set to obtain user preference information,weighting the user preference information, obtaining the sequence of the advertisement materials in which the user is interested, and generating a push list.
Owner:苏州云开网络科技有限公司
Who we serve
  • R&D Engineer
  • R&D Manager
  • IP Professional
Why Patsnap Eureka
  • Industry Leading Data Capabilities
  • Powerful AI technology
  • Patent DNA Extraction
Social media
Patsnap Eureka Blog
Learn More
PatSnap group products