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公开(公告)号:US20220026982A1
公开(公告)日:2022-01-27
申请号:US17311393
申请日:2019-12-16
Applicant: ZTE CORPORATION
Inventor: Dehui KONG , Ke XU , Xiao ZHANG , Bin HAN , Chong XIANG , Shuai JIAO , Hong WANG , Guoning LU , Degen ZHEN
Abstract: A virtual reality display method, device, apparatus and storage medium are provided. The method includes: acquiring multimedia data to be displayed and a visible region of a viewer on a curved display surface, wherein the visible region is obtained by projecting a visible range of the viewer to the curved display surface, and is not larger than a display area of the curved display surface; determining target curvatures of at least two positions in the visible region of the viewer, wherein in the target curvatures, target curvatures of different positions are related to a distance to a center of the visible region of the viewer; adjusting, based on the target curvatures of the at least two positions in the visible region, a curvature of a corresponding position on the curved display surface; and mapping the multimedia data to be displayed to the curved display surface having the adjusted curvature.
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公开(公告)号:US20220253668A1
公开(公告)日:2022-08-11
申请号:US17597066
申请日:2020-04-20
Applicant: ZTE CORPORATION
Inventor: Hong WANG , Ke XU , Guoning LU , Degen ZHEN , Dehui KONG , Xiao ZHANG
Abstract: A data processing method and device, a storage medium and an electronic device are disclosed. The method includes: reading M*N feature map data of all input channels and weights of a preset number of output channels, here a value of M*N and a value of the preset number are respectively determined by preset Y*Y weights; inputting the read feature map data and the weights of the preset number of output channels into a multiply-add array of the preset number of output channels for a convolution calculation; here a mode of the convolution calculation includes: not performing the convolution calculation in a case that the feature map data or the weights of the output channels are zero, and selecting one from same values for the convolution calculation in a case that there are a plurality of feature map data with the same values; and outputting a result of the convolution calculation.
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公开(公告)号:US20220014745A1
公开(公告)日:2022-01-13
申请号:US17295266
申请日:2019-11-20
Applicant: ZTE Corporation
Inventor: Hong WANG , Ke XU , Bo HUANG , Chengqiang LIU , Sheng LUO , Guoning LU , Degen ZHEN
IPC: H04N19/124 , H04N19/60 , H04N19/85 , H04N19/42
Abstract: Provided are method and device for inverse quantization and inverse transformation and non-transitory computer-readable storage medium. The method includes: performing inverse quantization processing on input data; determining whether secondary inverse transform processing is necessary; performing, in response to determining that the secondary inverse transform processing is necessary, the secondary inverse transform processing on data obtained through the inverse quantization processing, first one-dimensional inverse transform control processing on data obtained through the secondary inverse transform processing, and second one-dimensional inverse transform control processing on data obtained through the first one-dimensional inverse transform control processing; and performing, in response to determining that the secondary inverse transform processing is unnecessary, first one-dimensional inverse transform control processing on the data obtained through the inverse quantization processing, and second one-dimensional inverse transform control processing on the data obtained through the first one-dimensional inverse transform control processing.
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公开(公告)号:US20220036506A1
公开(公告)日:2022-02-03
申请号:US17299557
申请日:2019-12-20
Applicant: ZTE Corporation
Inventor: Dehui KONG , Ke XU , Xiao ZHANG , Bin HAN , Zhou HAN , Hong WANG , Guoning LU , Long HUANG , Sheng LUO
Abstract: An image reconstruction method, device and apparatus and non-transitory computer-readable storage medium are disclosed. The method may include: determining norms of convolution kernels of each convolutional layer of a deep neural network model; determining the convolution kernels with norms greater than or equal to a preset threshold in each convolutional layer to obtain a target convolution kernel set of each convolutional layer; processing an input image of each convolutional layer by using the convolution kernels in the target convolution kernel set of each convolutional layer respectively, to obtain a first image processing result; obtaining a second image processing result by performing interpolation on an initial image; and determining a fusion result according to the first image processing result and the second image processing result and reconstructing the initial image according to the fusion result.
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