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518 results about "Sample selection" patented technology

Sample selection bias is a type of bias caused by choosing non-random data for statistical analysis. The bias exists due to a flaw in the sample selection process, where a subset of the data is systematically excluded due to a particular attribute.

Multiclass image classification method based on active learning and semi-supervised learning

InactiveCN101853400AEfficient image classification effectDoes not increase computational burdenCharacter and pattern recognitionInformation processingComputation complexity
The invention relates to the technical field of image information processing, in particular to a multiclass image classification method based on active learning and semi-supervised learning. The method comprises five steps: initial sample selection and classifier model training, BvSB active learning sample selection, CST semi-supervised learning, training sample set and classifier model updating and assorting process iteration. Through the operations of BvSB active learning sample selection, CST semi-supervised learning and SVM classification, the invention has efficient image classification effect under the condition of less manual tagging, does not increase overmuch computation burden, can quickly provide classification effects and also can take consideration of the demand of a classification system on the computation complexity.
Owner:WUHAN UNIV

Asynchronous servo RRO detection employing interpolation

A repeatable read-out (RRO) detector employs one or more digital interpolators to interpolate asynchronous sample values that represent RRO data. The asynchronous sample values are read from a recording medium and generated by an A / D converter at a symbol rate, and the interpolators generate interpolated samples at at least one time in between the asynchronous sample value times. Each interpolated sample corresponding to some phase relative to that of the sample values generated by the A / D converter. The RRO detector receives 1) the asynchronous samples at symbol rate and 2) the interpolated samples to efficiently detect the encoded RRO data. An RRO address mark indicates when detection of encoded RRO data starts, and is employed to select those samples suitable for RRO data detection. Detection of the RRO address mark employs peak detection among filtered asynchronous and interpolated samples. The process of peak detection adjusts the current best phase for sample selection. When the RRO address mark is found, the corresponding best phase corresponds to either asynchronous sampled values or interpolated samples that are subsequently selected for RRO data detection, termed best samples. Once the best phase is selected, the RRO data detector uses that information along with RRO encoding constraints to decode the encoded RRO data from the best samples.
Owner:AVAGO TECH INT SALES PTE LTD

Sample selection for secondary synchronization signal (SSS) detection

Methods and apparatus for selecting samples for secondary synchronization signal (SSS) detection are described. Several alternatives are provided for efficient cell identifier detection. In a first alternative, multiple bursts of a signal received from a cell are sampled with non-uniform spacing between sampling intervals to determine a sequence for cell identification. In a second alternative, samples of a first and a second signal received from a stronger cell are cancelled, and a sequence for detecting a weaker cell is determined by reducing effects of the samples of a third signal received from the weaker cell which do not overlap with the primary synchronization signal (PSS) or SSS of the stronger cell. In a third alternative, a sequence for detecting a weaker cell is determined by reducing effects of any sampled bursts that correspond to a high transmission power portion of a signal from a stronger cell.
Owner:QUALCOMM INC

Simultaneous orthogonal light sheet microscopy and computed optical tomography

An apparatus for and method of performing orthogonal light sheet microscopy (OLM) and computer optical tomography (COT) simultaneously in a single device are provided. The dual-mode imaging microscope allows for the use of both OLM and COT in a single instrument. This dual-mode device will allow researchers to have access to both types of microscopy, allowing access to the widest possible selection of samples, and improved imaging results. In addition, the device will reduce the high costs and space requirements associated with owning two different imagers (OLM and COT).
Owner:CALIFORNIA INST OF TECH

Sample-training-based non-stationary clutter suppression method of vehicle-mounted radar

InactiveCN103018727ASolve the problem of clutter distance dependenceImproved clutter suppression performanceWave based measurement systemsTime domainRadar
The invention discloses a sample-training-based non-stationary clutter suppression method of a vehicle-mounted radar, which relates to vehicle-mounted radar technology. The method comprises the steps of estimation of a clutter covariance matrix based on combined time-dimension sample training strategies, application of a self-adaptive weight, and coherence stack to output signals. The method specifically comprises the following steps of: inputting raw echo data; compressing and windowing pulses in a distance dimension; segmenting slow-time-dimension data; selecting quick-slow time dimension training samples; estimating the clutter covariance matrix; calculating and applying the self-adaptive weight; and carrying out coherence stack on the output signals. According to the method, the sample training strategies are changed under an STAP (space-time adaptive processing) time domain dimension reducing structure in light of the clutter range dependence of the vehicle-mounted radar, thus the estimation precision of the clutter covariance matrix can be effectively improved, and the clutter suppression performance of a main lobe is improved as well. The sample-training-based non-stationary clutter suppression method shows high robustness in engineering application, and is particularly applicable to detection on a slow moving object.
Owner:INST OF ELECTRONICS CHINESE ACAD OF SCI

Systems, devices, and/or methods for managing sample selection bias

A method for managing sample selection bias is disclosed. Embodiments of the method can include automatically determining an unbiased estimate of a distribution from occurrence data via a special purpose processor. The occurrence data that is utilized in determining the estimate may have an occurrence data sample selection bias that is substantially equivalent to a background data sample selection bias associated with background data. Additionally, the occurrence data may be related to the background data, and the background data may be chosen with the background data sample selection bias. Furthermore, the occurrence data may represent a physically-measurable variable associated with one or more physical and tangible objects or substances.
Owner:NUANCE COMM INC

Circuits and methods for generating a threshold signal used in a magnetic field sensor based on a peak signal associated with a prior cycle of a magnetic field signal

A circuit to detect a movement of an object includes a magnetic field sensing element for generating a magnetic field signal proportional to a magnetic field associated with the object and a motion detector to generate a motion signal indicative of the movement of the object. The motion detector includes a peak identifying circuit to provide a peak signal and a peak sample selection module that selects a sample associated with one or more prior cycles of a magnetic field signal to generate a selected peak signal. The motion detector further includes a threshold generator to generate a threshold signal as a function of the selected peak signal and a comparator to compare the threshold signal with the magnetic field signal to generate the motion signal. Peak samples from prior magnetic field signal cycles may be averaged for use to establish the threshold signal. A method associated with the circuit is also described.
Owner:ALLEGRO MICROSYSTEMS INC

Remote sensing image classification method based on image block active learning

The invention discloses a remote sensing image classification method based on image block active learning and belongs to the technical field of image information processing. The method comprises the following steps of remote sensing image blocking, initial sample selection, classifier model training, active learning sample selection, training sample set and classifier model updating, classification process iteration; image block classification prediction, and conversion of a block classification result into a pixel classification result. The remote sensing image classification method serves an image block as a research object, compared with a traditional remote sensing image classification method based on active learning of pixel points, under the same experiment condition, the classification result of the image is more accurate, a block sample screened out by the active learning can more rapidly and accurately conduct manual annotating, constitutive properties of the classified image are stronger, spots directly brought by classification of the pixel points are greatly reduced, and the better visual effect is brought to people.
Owner:南京艾利特节能科技有限公司

Sampling Strategy Using Genetic Algorithms in Engineering Design Optimization

A sampling strategy using genetic algorithms (GA) in engineering design optimization is disclosed. A product is to design and optimize with a set of design variables, objectives and constraints. A suitable number of design of experiments (DOE) samples is then identified such that each point represents a particular or unique combination of design variables. The sample selection strategy is based on genetic algorithms. Computer-aided engineering (CAE) analysis or analyses (e.g., finite element analysis, finite difference analysis, mesh-free analysis, etc.) is / are performed for each of the samples during the GA based sample selection procedure. A meta-model is created to approximate the CAE analysis results at all of the DOE samples. Once the meta-model is satisfactory (e.g., accuracy within a tolerance), an optimized “best” design can be found by using the meta-model as function evaluator for the optimization method. Finally, a CAE analysis is performed to verify the optimized “best” design.
Owner:LIVERMORE SOFTWARE TECH

Black box antagonistic attack defense method based on sample selection and model evolution

The invention provides a black box antagonistic attack defense method based on sample selection and model evolution. The method includes the following steps: 1) using a sample selector to randomly select partial samples from the multiple types of samples to be input into various attack models to generate a large number of counter samples; 2) calculating the attack effect of the counter samples, and analyzing the attack effect of different input samples and the attack model; (3) updating the number of different samples selected by different samples in the attack model and the sample selector according to the attack effect to make the newly generated counter sample have a better attack effect, meanwhile, updating the counter sample pool, storing the several counter samples with the best attack effect, and outputting the counter samples with the best attack effect in the pool to serve as the final result of the current evolution; and 4) training a large number of training output results and normal samples, so that the attack can be defended. According to the invention, the defense capability of the black box model can be improved.
Owner:ZHEJIANG UNIV OF TECH

Classifier training method, apparatus, electronic apparatus, and computer readable medium

The invention provides a classifier training method, a device, an electronic device and a computer-readable medium, belonging to the technical field of the Internet. A method for train that classifierinclude training labeled samples in a plurality of data feature to obtain a primary classifier; Inputting an unlabeled sample from the plurality of data features to the primary classifier for training to output a label of the unlabeled sample, and calculating a probability that the unlabeled sample labels the label; According to the probability of the label, a part of the unlabeled samples is selected for expert labeling, and the samples labeled by the expert are retrained to obtain a new classifier. This method is based on active learning to update the classifier. Combined with a large number of data and artificial experience, the classifier model can make the classification results more accurate and improve the classification effect. There are only a small number of labeled samples anda small number of manual labeling in the training samples, which can quickly process the classification of a large number of unlabeled samples and improve the efficiency.
Owner:BEIJING SANKUAI ONLINE TECH CO LTD

Target detection method based on full-automatic learning

InactiveCN111191732AReduce the likelihood of fittingImprove rapid adaptabilityCharacter and pattern recognitionNeural architecturesPattern recognitionData set
The invention discloses a target detection method based on full-automatic learning. The method comprises the following steps: carrying out the training of a model through employing a small-scale manual labeling data set after preprocessing and a deep neural network, carrying out the fine adjustment of the model trained through an Imagenet data set, and obtaining a deep model; carrying out reasoning prediction on the pseudo-labeled part of the original large-scale image data set by utilizing the deep model, removing repeated prediction of the same target after carrying out non-maximum suppression, and respectively storing bounding boxes and confidence of prediction results according to categories. Through self-supervised pseudo labeling and active learning sample selection, the informationentropy and the divergence degree predicted by the deep neural network are learned in a combined manner, unlabeled samples are sorted according to the weight, and pseudo labels are allocated to high-confidence samples ranked at the top. The objective of the invention is to solve the problems of too high labor cost of common target detection and labeling and poor mobility and adaptability of a training model in an actual scene.
Owner:TIANJIN UNIV

Active learning based network data anomaly detection method

The invention provides an active learning based network data anomaly detection method, relating to an SVM (support vector machine) based detection method. The method solves the problems of more training samples, high complexity and poor classification feature of SVM in the traditional network data anomaly detection method. The method comprises the following steps: 1, choosing C points from unmarked samples as candidate cluster centers, carrying out iteration optimized clustering operation on candidate unmarked sample set A, and choosing representative samples from iteration clustering results to construct a training sample set B; 2, training an SVM on the training sample set B to obtain a training hyperplane; 3, choosing a sample which can best improve classification feature from the candidate unmarked sample set A according to sample choosing standards, making the sample with classification and then adding to the training sample set B; 4, retraining the SVM on the updated training sample set B; and 5, ending if detection precision reaches a preset value; if not, returning the step 3. The algorithm can effectively lower complexity if applied to anomaly detection research.
Owner:HARBIN INST OF TECH

Computerized face photograph-based dating recommendation system

A computer vision dating system analyzes combinations of face features of the system's user's photographs and recommends potential dating partners. A user selects preferred and not-preferred faces from a sample of other user's pictures. The system analyzes the features of the preferred and not-preferred faces comparing the combinations of features in both categories with the features of other users in the database to find the users that most match the collective features preferred by the user. These pictures are presented to the user. Data from the user's profile input are analyzed to automatically generate the sample pictures from which the user selects his / her preferences. As the users are presented pictures after their sample selection, they can continue to select and reject pictures allowing the system to learn and refine the combinations of features and better locate those that most conform to a user's most preferred photo images.
Owner:BENT JONATHAN BINNINGS +2

Improvements to data recovery circuits using oversampling for isi compensation

An improved data recovery circuit based on an oversampling technique wherein intersymbol interference (ISI) is compensated. A detection circuit is connected at the output of a conventional recovery circuit. The recovered data is applied to the detection circuit which includes flip-flops to memorize the previous state of the recovered data when no data transition is detected within a predefined number of clock periods. The detection circuit detects sequences of a predetermined number of consecutive identical bits which indicates the presence of ISI. It generates a feedback signal that is applied to the decision circuit and to the data sample selection circuit to shift the selection of a data sample of one position to compensate ISI.
Owner:IBM CORP

Improvements to data recovery circuits using oversampling for best data sample selection

An improved data recovery circuit based on an oversampling technique to select the best data sample to be kept as the data to recover that is only based on accumulating the data edges (or transitions). The incoming serial data stream with jitter is oversampled in an oversampling circuit by means of the multiple phases of a reference clock (clk) to produce data samples. Each sample is compared to the sample(s) collected with the next clock phase(s) in an edge detector circuit to determine the presence of a data edge and the edge information is stored and accumulated in a data edge memory. A selection determination circuit uses the memorized edge information to indicate which sample is the farthest from the data edges. A selection validation circuit validates the selection to avoid false determination due to jitter and skew.
Owner:IBM CORP

Named entity identification method oriented to field of network security

The invention discloses a named entity identification method oriented to the field of network security. The method comprises two stages of model training and sample selection. The first stage comprises the steps: acquiring an initial character vector which contains semantic information and changes dynamically through ALBERT training of a pre-training language model, sending the initial character vector into a Bi-LSTM + CRF network to be trained, and outputting a label sequence with the maximum input text sequence probability is output. The second stage comprises the steps: based on the model obtained through training in the first stage, selecting network security text data with marking value and training value for manual and machine marking in the mode of combining active learning and self-learning, and iteratively training the model after the network security text data with marking value and training value are added to existing marked text data. According to the method, the accuracy of network security entity identification is remarkably improved, and the problems of lack of marking corpora, high marking cost and the like in the network security field are effectively relieved.
Owner:XI AN JIAOTONG UNIV

Layer processing

Layer processing to grow a layer structure upon a substrate surface comprises supplying a vapor mixture stream to the substrate (28) to deposit constituents, monitoring growth with an ellipsometer (12) and using its output in real-time growth control of successive pseudo-layers. A Bayesian algorithm is used to predict a probability density function for pseudo-layer growth parameters from initial surface composition, growth conditions and associated growth probabilities therewith, the function comprising discrete samples. Weights are assigned to the samples representing occurrence likelihoods based on most recent sensor output. A subset of the samples is chosen with selection likelihood weighted in favor of samples with greater weights. The subset provides a subsequent predicted probability density function and associated pseudo-layer growth parameters for growth control, and becomes a predicted probability density function for a further iteration of pseudo-layer growth.
Owner:CUFER ASSET LTD LLC

Method and system for change detection based on multi-temporal remote sensing image and GIS data

The invention discloses a method and a system for change detection based on a multi-temporal remote sensing image and GIS data. The method is aimed at solving problems existing in segmentation, classification and change detection methods based on multi-temporal images and GIS data. The method includes the following steps: step 1, segmentation of a remote sensing image and extraction of pixel-levelchange information, mainly including remote sensing image segmentation and pixel-level change detection; step 2, object-oriented remote sensing image classification, mainly including change polygon decision, automatic sample selection and object-oriented SVM decision tree classification model; step 3, change detection after the object-oriented classification. Compared with existing methods of extracting change information using remote sensing images and GIS data, the method can realize automatic and large-area application change information detection method flow, can fully excavate relationship between remote sensing images and GIS data, utilizes attribute information such as type of the GIS data, and improves accuracy of change information extraction.
Owner:POLYU RES BASE SHENZHEN

Transfer learning design method and system based on domain adaptation under multi-example multi-label framework

The invention discloses a transfer learning design method and system based on domain adaptation under a multi-example multi-label framework. According to the invention, multi-example multi-label learning and transfer learning are unified into one framework, source domain data samples and target domain data samples are effectively utilized for correlation statistics, and the source domain samples can be effectively used in the learning of target domain tasks; the characteristics of a source domain data sample set and a target domain data set in RKHS are utilized, a two-step domain adaptation process formed by sample weighting and a sample selection mechanism based on clustering is utilized, so that the learning of target tasks has enough training samples weighted and selected from the source domain set; and a miFV algorithm is utilized to convert multi-examples into a single example, and the calculation cost problem of domain adaptation is solved.
Owner:NANJING UNIV OF POSTS & TELECOMM

On-line detection method for particle size and shape of stacked aggregate

ActiveCN105510195AEffective, accurate and timely online deliveryAccurate and timely online deliveryParticle size analysisSample selectionMaterials science
The invention provides an on-line detection method for particle size and shape of stacked aggregate. The method comprises the following steps: directly performing image acquisition on the stacked aggregate under an actual production state; processing an acquired stacked aggregate image; performing geometric characteristic analysis on the processed stacked aggregate image, and calculating a geometric characteristic of each aggregate particle in the stacked aggregate image; according to the geometric characteristic of each aggregate particle in the stacked aggregate image, analyzing to obtain particle size statistics information and particle shape distribution information of the stacked aggregate. According to the on-line detection method for the particle size and shape of the stacked aggregate, sample selection detection of the aggregate is avoided, and the simultaneous aggregate particle size and shape on-line detection can be realized under the actual production state, so that aggregate particle size and shape information in the actual production can be effectively, accurately and timely provided on line.
Owner:HUAQIAO UNIVERSITY

Fully automatic operation instrument for routine inspection of excrement

The invention provides a fully automatic operation instrument for the routine inspection of excrement, belonging to the technical field of the routine clinical inspection of excrement. The invention mainly solves the problems of much discomfort on sense organs because of the existing artificial smear and microscopical examination of excrement and potential threat to the health of inspectors. The fully automatic operation instrument is mainly characterized by comprising a three-dimensional orthogonal coordinate manipulator operation platform, a camera, a smear operation head, an object-moving fixture, a biological microscope, a digital camera, a work master disk, a check disk, an automatic slide feeding device, a peristaltic pump, a liquid crystal display screen and operation keys; and automatic slide feeding, automatic box opening, automatic shooting and automatic image display are completed, a suspected part of an excrement sample is selected and is smeared on a slide, microscopical examination is automatically carried out, an occult blood experiment is automatically completed, experimental wastes are automatically recovered, and the laboratory bio-safety level is increased. The fully automatic operation instrument is mainly used for the automatic sample selection, the automatic smear, the automatic microscopical examination and the selective graphic data retaining of excrement and other human body secretions.
Owner:王海波

Method and apparatus for software GPS receiver

A receiver architecture for processing spread spectrum signals. The receiver has an RF front end to receive and down convert a broadcast signal to an intermediate frequency carrier. The IF signal is digitized and provided to a processor (which may be a software-driven DSP, an ASIC or other embodiment) for processing. A given IF carrier is removed and the signal is low pass filtered. The signal is provided to a number of channels, each, for example, correspond to a unique transmitter. On each channel the sample rate is reduced to a predetermined fixed rate with timing mismatch compensated. The Doppler frequency shift, as estimated for the channel, is removed succeedingly. A locally generated copy of the spreading code used by the transmitter is applied to the carrier and Doppler removed signal at the predetermined fixed sample rate. The de-spread signal is used to provide estimates of the Doppler shift and for subsequent sample selection. Pseudo-range and delta pseudo-range estimates from each channel are used to estimate, for example, the receiver's position.
Owner:ANALOG DEVICES INC

Method for full-automatic sample selection oriented to classification of remote-sensing images

The invention belongs to the technical field of computer-based remote-sensing image information processing and provides a method for full-automatic sample selection oriented to the supervised classification processes of remote-sensing images. The decision tree method is mainly applied to the method of the invention to achieve the integration of geosciences and expert knowledge and hereby carry out the automatic sample selection. The method comprises the following steps: firstly, establishing a standard decision tree according to various indexes, spectra and experiential knowledge; then, automatically pruning and forming a classification decision tree targeted on the current image; and further selecting a sample automatically by using the classification decision tree and introducing membership degree targeted on various requirements for classifiers or specific classification tasks at the same time to automatically adjust the distribution of samples to be selected. Accordingly, the method of the invention can improve the procedure of automatic classification and guarantee the accuracy of sample selection, thus achieving the good effect of classification in cooperation with supervised classification.
Owner:INST OF REMOTE SENSING & DIGITAL EARTH CHINESE ACADEMY OF SCI

Tumble detection method and system

The invention provides a tumble detection method and system. The method comprises an off-line training phase and on-line detection phase. In the off-line training phase, a plurality of sub-classifiers are trained combined with random sample selection and random classification attribute. In the on-line tumble detection phase, a final determination result is given based on the classification results of the plurality of sub-classifiers. Experiments show that through the provided tumble detection method, an accuracy rate of 95.2%, sensitivity of 90.6% and specificity of 93.5% can be obtained, the provided tumble detection method is better than a tumble detection method based on SVM and BP neural networks obviously, tumble behaviors are detected accurately, and the tumble detection method has strong generalization capability and robustness.
Owner:SHENZHEN TINNO WIRELESS TECH +1

Trace ratio criterion-based triple loss function design method

The invention discloses a trace ratio criterion-based triple loss function design method. Through investigation and survey of image feature extraction, a triple loss function and a trace ratio criterion, the trace ratio criterion is used as a triple selection criterion and a loss calculation method. The method mainly comprises the steps of A, performing triple sample establishment: establishing triple samples by samples in a data set; B, performing triple sample selection: performing screening in the established triple samples, setting an effective selection mechanism, and while the precisionloss is avoided, increasing the training speed; C, performing loss function design: according to the triple samples obtained in the step B, calculating distances between current samples in triples andpositive and negative samples, and designing the loss function for calculating an error between a model prediction result and a real result; and D, performing deep network training: transmitting themodel error to a deep convolutional neural network, performing update adjustment on network parameters, and iteratively training a model until convergence.
Owner:HARBIN INST OF TECH SHENZHEN GRADUATE SCHOOL

Intelligent extraction method of build-up area on the basis of nighttime light data

The invention relates to an intelligent extraction method of a build-up area on the basis of nighttime light data. The intelligent extraction method comprises the following steps: adopting an adaptive particle swarm optimization algorithm to realize the optimal selection of the selection parameters of a VIIRS (Visible Infrared Imaging Radiometer Suite) nighttime light image sample and a MODIS (Moderate Resolution Imaging Spectroradiometer) normalized difference vegetation index image sample; adopting a region growing algorithm based on SVM (Support Vector Machine) classification to finish SVM model training, and adopting a cross validation method to carry out precision validation on the model; and according to an optimized parameter, determining a city sample and a non-city sample, and adopting the region growing algorithm based on the SVM to extract a city built-area range. By use of the intelligent extraction method, from a sample selection source, the adaptive optimization of a sample selection parameter is carried out, and the SVM and the region growing algorithm are adopted to improve processing efficiency and precision for the nighttime light data to extract the nighttime light data.
Owner:四川省遥感信息测绘院

Broadband digital beam forming method

The invention discloses a digital beam forming method of a broad band, which includes the steps of time division multiplexing quadrature sampling with intermediate frequency, quadrature demodulation, low pass filtering, interpolation delay, phase rotation and beam summation, etc. The beam forming method of the invention puts emphasis on that a single sample circuit is used for carrying out the time division multiplexing quadrature sampling with intermediate frequency on multipath bandpass signals; an FIR wave filter is used for completing the low pass filtering, the interpolation delay and the phase rotation which are matched with the signals at one time to realize the actual formation of delayed beams. As to the executive mode of wave filtering, a multi-channel wave filter with a cascade structure is disclosed. The wave filtering in the same path signal is completed in different filtering submodules by cascading while the different path signals share the same filtering module. The filtering output is completed with the sample selection, and the method of the invention is suitable for being realized in an ASIC or an FPGA and saves a great quantity of logic resources compared with the conventional wave filters.
Owner:ZHEJIANG UNIV
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