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120results about How to "Accurate similarity" patented technology

Content aggregation method based on distributed web crawlers

The invention provides a content aggregation method based on distributed web crawlers, which comprises the steps that firstly different crawler platforms are arranged at different devices, a request is sent to a crawling network information source end, and the crawler platforms fabricate crawling rules according to target information required by a user and crawl information in which the target user is interested; the crawled network information is processed, similarity detection is carried out based on a data transmission and conversion method in a real-time database and by being combined with a locality sensitive hashing (LSH) method so as to reduce the redundancy of the information; and the information is classified and sorted by the system according to the category, the heat and keywords and then displayed on user equipment. According to the method provided by the invention, LSH and similarity comparison are carried out according to the data information acquired in an actual network so as to acquire a comparison result. Compared with a comparison result acquired by adopting a traditional mode of whole data duplication checking in the prior art, the content aggregation method is higher in calculation speed and more accurate in similarity comparison.
Owner:江苏未来网络集团有限公司

Video keyframe extraction method

The invention discloses a video keyframe extraction method, which comprises the steps of: using a ViBe algorithm fused with an inter-frame difference method to perform moving object detection on an acquired original video sequence, so as to obtain a key video sequence containing a moving object; performing keyframe crude extraction on the key video sequence by using a global characteristic peak signal-to-noise ratio to obtain candidate keyframe sequences; and establishing global similarity of the candidate keyframe sequences by using the peak signal-to-noise ratio, establishing local similarity of the candidate keyframe sequences by using SURF feature points, and performing weighted fusion on the global similarity and the local similarity to obtain comprehensive similarity, performing self-adoptive keyframe extraction on the candidate keyframe sequences by using the comprehensive similarity, and finally acquiring a target keyframe sequence. The video keyframe extraction method providedby the invention can effectively extract the video keyframes, obviously reduce the redundant information of video data, and express the main content of the video concisely. Moreover, the video keyframe extraction method has low algorithm complexity and is suitable for real-time extraction of keyframes of surveillance videos.
Owner:CHONGQING UNIV OF POSTS & TELECOMM

Collaborative filtering method on basis of scene implicit relation among articles

The invention discloses a collaborative filtering method on the basis of a scene implicit relation among articles. The collaborative filtering method comprises the following steps of: 1, extracting scores of the articles in different scenes from original score data and establishing an article-scene score matrix; 2, decomposing the article-scene score matrix by a matrix decomposition method to obtain an implicit factor matrix of the articles; 3, establishing a scene feature vector for each article by using the obtained implicit factor matrix of the articles so as to calculate the similarity among the articles by utilizing a Pearson correlation coefficient and establish an article implicit relation matrix; and 4, integrating obtained article implicit relation information into a probability matrix decomposition matrix to generate a personalized recommendation. According to the invention, scene information can be sufficiently utilized to mine the implicit relation information among the articles, and the recommendation is generated by utilizing the implicit relation among the articles; the collaborative filtering method has high expandability for the scene information, and a candidate scene set can be regulated according to the application requirements; and the accuracy and the personalization degree of the recommendation can be effectively improved.
Owner:ZHEJIANG UNIV

Heterogeneous media similarity calculation method and retrieval method based on correlation analysis

The invention provides a heterogeneous media similarity calculation method and heterogeneous media retrieval method based on correlation analysis. The heterogeneous media similarity calculation method includes the following steps that a heterogeneous media database including different media types is established, and the feature vector of data of each media type is extracted; based on the incidence relation inside media, the heterogeneous media similarity can be calculated through K nearest neighbor analysis; based on the incidence relation between media, the heterogeneous media similarity can be calculated through heterogeneous media constraint transmission; the content similarity inside the media and between the media can be fused through a self-adaptation sorting result fusion algorithm so that a final result can be obtained, the fusion weight is set in a self-adaptation mode, and accordingly the final heterogeneous media similarity can be obtained to be used for heterogeneous media retrieval. According to the heterogeneous media similarity calculation method and retrieval method based on correlation analysis, the class information inside the media and the constraint information between the media are fully considered, different similarity calculation methods can be fused in a self-adaptation mode, different media can be mutually promoted, the similarity calculation accuracy is improved, and therefore higher heterogeneous media retrieval accuracy can be achieved.
Owner:PEKING UNIV

Online learning-based potential semantic cross-media hash retrieval method

The invention discloses an online learning-based potential semantic cross-media hash retrieval method, which realizes cross-media retrieval of image and text modes. The method comprises the followingsteps of establishing an image and text pair data set, extracting features of data in the data set, performing mean removal, and dividing the data set into a training set and a test set according to acertain ratio; mapping discrete tags to continuous potential semantic spaces, and building an objective function by utilizing the similarity between the retention data; solving the objective functionby utilizing an online learning-based iterative optimization scheme, and when new data is generated, updating a hash function by only utilizing the new data, thereby improving the efficiency of a training process; and calculating hash codes of the image and text data in the test set by utilizing the hash function, by taking the data in one mode in the test set as a query set and the data in the other mode as a target data set, calculating Hamming distances between the data in the data query set and all the data in the target data set, performing sorting according to an ascending order, and returning the heterogeneous data sorted in front to serve as cross-media retrieval results.
Owner:LUDONG UNIVERSITY

Similar anchor classification model training method, anchor recommendation method and related devices

The embodiment of the invention discloses a similar anchor classification model training method, an anchor recommendation method and related devices. The training method comprises the steps of obtaining historical behavior data of watching live broadcast by a user; determining a plurality of first candidate anchor pairs according to the historical behavior data, wherein each first candidate anchorpair comprises two anchors; obtaining anchor information of each anchor; for each first candidate anchor pair, anchor pair features of the first candidate anchor pair are extracted based on historical behavior data and anchor information; determining an anchor pair sample from the plurality of first candidate anchor pairs, wherein the anchor pair sample comprises an anchor pair feature and an anchor pair label; and obtaining a similar anchor classification model for outputting the anchor similarity by adopting the anchor pair features of the anchor pair samples and the anchor pair label training model. According to the embodiment of the invention, the similarity of the two anchors can be determined from multiple dimensions and the trained similar anchor classification model, the universality is good, and the similarity of the anchors is accurate, so that the anchor recommendation accuracy is improved.
Owner:GUANGZHOU NETSTAR INFORMATION TECH CO LTD

Similar model retrieval implementing method based on three-dimensional labeling

The invention provides a similar model retrieval implementing method based on three-dimensional labeling. By means of the method, the function of extracting three-dimensional model labeling information is achieved through three-dimensional CAD software, and a three-dimensional model labeling feature database is formed with extracted size labeling information. The size labeling information of the current three-dimensional model is extracted when similar retrieval needs to be conducted on the three-dimensional model, and the extracted size information is processed, the similarity between the size information and the model size classification and counting standard value is calculated, and the similarity of the current three-dimensional model is obtained. Then, one or more pieces of three-dimensional model data the highest in the current model similarity are retrieved and returned according to the calculated similarity, and a similar data set is formed. The similarity between the size information and the size information of each three-dimensional model in the similar data set is calculated secondarily, similarity sequencing is conducted again, and in combination with a light-weight model, the result is presented in a visual mode. By means of the method, work efficiency is remarkably improved, and design capacity is improved.
Owner:CAPITAL AEROSPACE MACHINERY +1

Method for determining document similarity based on improved Jaccard coefficients

The invention discloses a method for determining document similarity based on improved Jaccard coefficients. The method comprises: step 1, respectively determining the corresponding number (which is shown in the description) of each element wi, the length of which is K in a document X, and the corresponding number (which is shown in the description) of each element wj, the length of which is K in a document Y; step 2, calculating the proportion (which is shown in the description) of each element wi in the document X; step 3, calculating the proportion (which is shown in the description) of each element wj in the document Y; step 4, calculating the Jaccard similarity (which is shown in the description) of a common element wh in the document X and the document Y; step 5, calculating the Epsilon (wh) of the element wh in elements, the n-Gram length of which is K in the document X and the document Y; step 6, calculating a parameter F(wh) representing whether the element wh simultaneously exists in the document X and the document Y; and step 7, setting a symbol (which is shown in the description) as the similarity of the document X and the document Y. According to the method for determining the document similarity based on the improved Jaccard coefficients, by considering the proportion of each element and sample in the documents and the contribution degree to the similarity of multiple documents, a problem that inter-document similarity calculation is inexact in the prior art is effectively solved.
Owner:FUJIAN NORMAL UNIV
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