Patents by Inventor Luyan LIU
Luyan LIU has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
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Publication number: 20250005888Abstract: An image processing method includes: obtaining, through a plurality of radio frequency coils, a plurality of pieces of corresponding undersampled frequency-domain data respectively; and performing, by using a plurality of image processing networks that are cascaded, an information supplement operation respectively on the plurality of pieces of frequency-domain data to obtain a plurality of corresponding target restored images, and determining a target reconstructed image based on the plurality of target restored images, a piece of frequency-domain data being configured for obtaining one target restored image, and an image processing network including an image restoring network, a frequency-domain complement network, and a susceptibility estimation network.Type: ApplicationFiled: August 18, 2024Publication date: January 2, 2025Inventors: Ruifen ZHANG, Luyan LIU, Hong WANG, Yawen HUANG, Yefeng ZHENG
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Patent number: 11961233Abstract: This application provides a method and apparatus for training an image segmentation model, a device, and a storage medium.Type: GrantFiled: September 9, 2021Date of Patent: April 16, 2024Assignee: TENCENT TECHNOLOGY (SHENZHEN) COMPANY LIMITEDInventor: Luyan Liu
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Publication number: 20230097391Abstract: An image processing method can reduce costs related to manual labeling, improve training efficiency, and increase a quantity of training samples, thereby improving the accuracy of an image classification model. First images and second images are processed using an image classification model to obtain predicted classification results. The first images include a classification label and the second images include a pseudo classification label. A first loss value indicating accuracy is acquired based on the predicted classification results, the corresponding classification labels, and the corresponding pseudo classification labels. A second loss value indicating accuracy is acquired based on the predicted classification results and the corresponding pseudo classification labels. A model parameter of the image classification model is updated based on the first loss value and the second loss value. Classification processing and acquisition is performed until a target image classification model is obtained.Type: ApplicationFiled: November 29, 2022Publication date: March 30, 2023Applicant: Tencent Technology (Shenzhen) Company LimitedInventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20230101539Abstract: A physiological electric signal classification processing method includes: performing data alignment on an initial physiological electric signal corresponding to a target user identity based on target signal spatial information corresponding to the target user identify to obtain a target physiological electric signal; performing spatial feature extraction on the target physiological electric signal based on a target spatial filtering matrix to obtain a target spatial feature, the target spatial filtering matrix being generated based on target training physiological electric signals corresponding to a plurality of training user identities respectively and training labels corresponding to the target training physiological electric signals, the target training physiological electric signals being obtained by performing data alignment on initial training physiological electric signals based on training signal spatial information corresponding to the training user identities; and obtaining a classification resultType: ApplicationFiled: December 6, 2022Publication date: March 30, 2023Inventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20230080533Abstract: An electroencephalogram signal classification method includes: obtaining a first electroencephalogram signal; processing the first electroencephalogram signal using at least two electroencephalogram signal classification models to obtain respective motor imagery probability distributions from the at least two electroencephalogram signal classification models; and determining a motor imagery type of the first electroencephalogram signal based on the motor imagery probability distributions. A plurality of electroencephalogram signal classification models is respectively trained using an augmented data set obtained through augmentation. During prediction, by combining the plurality of electroencephalogram signal classification models, the accuracy of classifying an electroencephalogram signal to determine a motor imagery type may be improved, when using a model trained with a relatively small number of training samples.Type: ApplicationFiled: November 22, 2022Publication date: March 16, 2023Inventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20230077726Abstract: A method for classification processing of an electrophysiological signal, including acquiring an electrophysiological signal collected by an acquisition device, and acquiring a channel association feature corresponding to the acquisition device. The channel association feature indicates spatial locations of multiple acquisition channels of the acquisition device, each of the multiple acquisition channels collecting the electrophysiological signal at a respective spatial location. The method further includes extracting a time feature corresponding to the electrophysiological signal, and generating an embedded feature based on the channel association feature and the time feature, and extracting a spatial feature corresponding to the embedded feature, and obtaining a classification result corresponding to the electrophysiological signal based on the spatial feature.Type: ApplicationFiled: November 22, 2022Publication date: March 16, 2023Applicant: Tencent Technology (Shenzhen) Company LimitedInventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20230075309Abstract: An electroencephalogram (EEG) signal classification method and apparatus, a device, a storage medium, and a program product are provided, and relate to the field of signal processing technologies. The method includes: obtaining a first EEG signal; obtaining time-frequency feature maps of at least two electrode signals in the first EEG signal; performing feature extraction based on the time-frequency feature maps of the at least two electrode signals to obtain a first extracted feature map; performing weighting processing based on an attention mechanism on the first extracted feature map to obtain an attention feature map; and obtaining a motor imagery type of the first EEG signal based on the attention feature map.Type: ApplicationFiled: October 31, 2022Publication date: March 9, 2023Applicant: TENCENT TECHNOLOGY (SHENZHEN) COMPANY LTDInventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20230054751Abstract: A method and an apparatus for classifying an electroencephalogram signal, a device and a computer-readable storage medium. The method includes: obtaining an electroencephalogram signal; performing feature extraction on the electroencephalogram signal to obtain a signal feature corresponding to the electroencephalogram signal; obtaining a difference distribution ratio, the difference distribution ratio being used for representing impacts of difference distributions of different types on distributions of the signal feature and a source domain feature in a feature domain, the source domain feature being a feature corresponding to a source domain electroencephalogram signal; aligning the signal feature with the source domain feature according to the difference distribution ratio to obtain an aligned signal feature; and classifying the aligned signal feature to obtain a motor imagery type corresponding to the electroencephalogram signal.Type: ApplicationFiled: October 19, 2022Publication date: February 23, 2023Applicant: Tencent Technology (Shenzhen) Company LimitedInventors: Luyan Liu, Xiaolin Hong, Kai Ma, Yefeng Zheng
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Patent number: 11536469Abstract: A saddle-type window air conditioner comprises an indoor part, an outdoor part and a connecting part. The connecting part includes an indoor connecting box and an outdoor connecting box sleeved in each other. The indoor connecting box is connected with the indoor part, the outdoor connecting box is connected with the outdoor part, and the connecting part is provided with locking assemblies. Each of the locking assemblies includes a lock sleeve, a lock core, a push button and a rack. The lock sleeve is disposed on the indoor connecting box located on an outer side or on the outdoor connecting box, and is provided with a lock hole; the rack is disposed on the outdoor connecting box located on an inner side or on the indoor connecting box; the push button is connected with the lock core and configured to push the lock core to move; and the lock core is provided with a lock pillar.Type: GrantFiled: March 16, 2020Date of Patent: December 27, 2022Assignees: QINGDAO HAIER AIR CONDITIONER GENERAL CORP., LTD., HAIER SMART HOME CO., LTD.Inventors: Chuanling Si, Guangbao Qiao, Ruofeng Wang, Qiang Zhang, Wenquan Song, Yanfei Wang, Luyan Liu
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Publication number: 20220215558Abstract: A method for three-dimensional edge detection includes obtaining, for each of plural two-dimensional slices of a three-dimensional image, a two-dimensional object detection result and a two-dimensional edge detection result, stacking the two-dimensional object detection results into a three-dimensional object detection result, and stacking the two-dimensional edge detection results into a three-dimensional edge detection result. The method also includes performing encoding according to a feature map of the three-dimensional image, the three-dimensional object detection result, and the three-dimensional edge detection result, to obtain an encoding result, and performing decoding according to the encoding result, the three-dimensional object detection result, and the three-dimensional edge detection result, to obtain an optimized three-dimensional edge detection result of the three-dimensional image.Type: ApplicationFiled: March 24, 2022Publication date: July 7, 2022Applicant: Tencent Technology (Shenzhen) Company LimitedInventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20220146121Abstract: A saddle-type window air conditioner comprises an indoor part, an outdoor part and a connecting part. The connecting part includes an indoor connecting box and an outdoor connecting box sleeved in each other. The indoor connecting box is connected with the indoor part, the outdoor connecting box is connected with the outdoor part, and the connecting part is provided with locking assemblies. Each of the locking assemblies includes a lock sleeve, a lock core, a push button and a rack. The lock sleeve is disposed on the indoor connecting box located on an outer side or on the outdoor connecting box, and is provided with a lock hole; the rack is disposed on the outdoor connecting box located on an inner side or on the indoor connecting box; the push button is connected with the lock core and configured to push the lock core to move; and the lock core is provided with a lock pillar.Type: ApplicationFiled: March 16, 2020Publication date: May 12, 2022Applicants: QINGDAO HAIER AIR CONDITIONER GENERAL CORP., LTD., HAIER SMART HOME CO., LTD.Inventors: Chuanling SI, Guangbao QIAO, Ruofeng WANG, Qiang ZHANG, Wenquan SONG, Yanfei WANG, Luyan LIU
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Publication number: 20220148191Abstract: An image segmentation method includes obtaining target domain images and source domain images, and segmenting the source domain images and the target domain images by using a generative network in a first generative adversarial network. The method further includes segmenting the source domain images and the target domain images by using a generative network in a second generative adversarial network, and determining a first source domain image and a second source domain image according to source domain segmentation losses, and determining a first target domain image and a second target domain image according to target domain segmentation losses. The method also includes performing cross training on the first generative adversarial network and the second generative adversarial network to obtain a trained first generative adversarial network; and segmenting a to-be-segmented image based on the generative network in the trained first generative adversarial network.Type: ApplicationFiled: January 28, 2022Publication date: May 12, 2022Applicant: Tencent Technology (Shenzhen) Company LimitedInventors: Luyan LIU, Kai MA, Yefeng ZHENG
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Publication number: 20210407086Abstract: This application provides a method and apparatus for training an image segmentation model, a device, and a storage medium.Type: ApplicationFiled: September 9, 2021Publication date: December 30, 2021Applicant: Tencent Technology (Shenzhen) Company LimitedInventor: Luyan LIU