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46results about How to "Optimize search results" patented technology

Information retrieval-oriented information map generation method and dynamic updating method

The invention discloses an information retrieval-oriented information map generation method and dynamic updating method. A document weight is calculated for a user retrieval result, and data visualization is performed according to the document weight so as to generate an information map; and a user retrieval demand is optimized through interactive operation, and the information map is dynamically adjusted and updated. The information map generation method specifically comprises the steps of establishing a target document set and constructing a hierarchical knowledge concept generation system; preprocessing the target document set; inputting a retrieval demand by a user, performing calculation to obtain a domain feature and a scale feature of the retrieval demand, generating an initial retrieval result and performing sorting; and generating the information map by the initial retrieval result according to the sorting through a data visualization method, and performing display. According to the information retrieval-oriented information map generation method and dynamic updating method, the user can retrieve the information and display the retrieval result more visually and flexibly, and the problems in information retrieval-oriented information map generation and dynamic updating are solved.
Owner:PEKING UNIV

Structured image description method

The invention belongs to the technical field of image retrieval, in particular to a structured image description method. The structured image description method comprises the steps that an image for training is obtained, and three-layer tree-shaped structure label is established for each object in the image, so that a training set is formed; the bottom-layer characteristics of each object of the image in the training set are extracted, all candidate classes, subclasses and classifiers with corresponding attributes are obtained through training, and therefore intermediate data required for modeling of the next step are formed; a conditional random field model is established and model parameters are obtained through training; image segmentation is firstly conducted, objects contained in an image to be described are segmented, and the bottom-layer characteristics of each object of the image to be described are further extracted; tree-shaped structure label of each object of the image to be described is predicated through the established CRF model and the model parameters obtained through training and according to the maximum product belief propagation algorithm. According to the structured image description method, the distinction degree between images can be improved and a good retrieval result is generated.
Owner:TIANJIN UNIV

A remote sensing image multi-label retrieval method and system based on a full convolutional neural network

The invention provides a remote sensing image multi-label retrieval method and system based on a full convolutional neural network. multi-label image retrieval is realized by considering multi-category information of remote sensing images, and the method comprises the following steps: inputting a retrieval image library, and dividing the retrieval image library into a training set and a verification set; Constructing a full convolutional neural network model FCN, and performing network training by using the training set; Performing multi-class label prediction on each image in the verificationset by using FCN to obtain a segmentation result; Carrying out up-sampling on each convolutional layer feature map; Extracting local features of each image in the verification set to obtain feature vectors for retrieval; And finally, carrying out coarse-to-fine two-step retrieval based on the extracted multi-scale features and the multi-label information. According to the method, the full convolutional neural network is used for learning multi-scale local features of the image, multi-label information hidden in the image is fully mined, and compared with an existing remote sensing image retrieval method based on a single label, the accuracy of image retrieval is effectively improved.
Owner:WUHAN UNIV

Matrix weighted association mode-based Indonesian and Chinese cross-language retrieval method and system

InactiveCN106383883ARetrieval performance improvements and enhancementsOptimize search resultsSpecial data processing applicationsCross language retrievalRule mining
The invention discloses a matrix weighted association mode-based Indonesian and Chinese cross-language retrieval method and system. The method comprises the steps of translating an Indonesian user query into a Chinese query by utilizing a machine translation module and submitting the Chinese query to a text retrieval module for retrieving a Chinese document; performing preprocessing by using a front initial retrieved document extraction and preprocessing module, and establishing a front initial retrieved document database; calling an Indonesian and Chinese cross-language retrieval-oriented matrix weighted association rule mining module to establish a matrix weighted association rule library; establishing an extension word base by utilizing a cross-language query extension word generation module; submitting a combined new query to the text retrieval module for retrieval again by utilizing a cross-language query extension realization module to obtain a Chinese document of a final retrieval result; and submitting the final retrieval result to the machine translation module for translation by utilizing a final result display module to obtain an Indonesian document, and returning the Indonesian document to a user. The method is applied to a cross-language text retrieval system for ASEAN countries; the cross-language retrieval performance is effectively enhanced and improved; and the application value and the popularization prospect are relatively high and good.
Owner:GUANGXI UNIVERSITY OF FINANCE AND ECONOMICS

Network page efficient and accurate deduplication system based on cloud computing

The invention provides a network page efficient and accurate deduplication system based on cloud computing, and aims to solve the problems that most of web pages searched by an existing search engineare static web pages, due to the existence of a large amount of transshipment and plagiarism, the main content of a large number of web pages is repeated, and for the search engine, the repeated web pages virtually increase the burden of index storage, and meanwhile, more retrieval time can be consumed; the webpage deduplication system based on the Hadoop cloud platform is designed and realized bycombining an open source framework, other modules of a search engine can be better connected by adopting a mode of detecting and judging duplicate in real time after a spider program captures a webpage; and in a massive webpage collection stage, the network page efficient and accurate deduplication system based on cloud computing can preprocess the web pages in advance, then web page similarity detection and discovery are carried out, repeated web pages or web pages with high similarity are removed, and therefore index quality is improved, retrieval results are optimized, and good search experience is provided for users.
Owner:扆亮海

Similar document retrieval auxiliary device and similar document retrieval auxiliary method

The invention provides a similar document retrieval auxiliary device and a similar document retrieval auxiliary method. The extent of the impact exerted on retrieval precision by an essential factor affecting similar document retrieval precision and information concerning countermeasures for improving retrieval precision are shown to a user, and therefore the retrieval work of the user can cyclically run in a highly-efficient manner, and the efficiency and quality of the retrieval work can be improved. Based on a right set of previous input documents and right answer documents, the essential factor is analyzed, and a correspondence relation is established between a value range of the essential factor and retrieval precision and is stored in a table. Through computer processing operation, newly input documents are subjected to the same essential analysis operation, retrieval precision corresponding to the value range which conforms with the essential factor value of the newly input documents is calculated based on comparison with the above table. Then, through computer processing, the retrieval precision and/or an average deviation value compared with the whole retrieval precision of the previous input documents is shown to the user. In a more ideal condition, information of countermeasures for improving the retrieval precision is shown to the user.
Owner:HITACHI LTD

A Structured Image Description Method

The invention belongs to the technical field of image retrieval, in particular to a structured image description method. The structured image description method comprises the steps that an image for training is obtained, and three-layer tree-shaped structure label is established for each object in the image, so that a training set is formed; the bottom-layer characteristics of each object of the image in the training set are extracted, all candidate classes, subclasses and classifiers with corresponding attributes are obtained through training, and therefore intermediate data required for modeling of the next step are formed; a conditional random field model is established and model parameters are obtained through training; image segmentation is firstly conducted, objects contained in an image to be described are segmented, and the bottom-layer characteristics of each object of the image to be described are further extracted; tree-shaped structure label of each object of the image to be described is predicated through the established CRF model and the model parameters obtained through training and according to the maximum product belief propagation algorithm. According to the structured image description method, the distinction degree between images can be improved and a good retrieval result is generated.
Owner:TIANJIN UNIV
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