A magnetic resonance parameter matching method, device and medical image processing equipment
A magnetic resonance and image technology, applied in the field of image processing, can solve the problems of not ideally sparsely representing images and reconstructing images, etc., and achieve good sparse representation results, reduce sampling time, and accurately match magnetic resonance parameters
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Embodiment 1
[0039] figure 1 It shows the flow chart of the realization of the magnetic resonance parameter acquisition method provided by Embodiment 1 of the present invention, which is described in detail as follows:
[0040] In S101, acquire an image to be optimized;
[0041] In S102, input the image into a preset image reconstruction model, the preset image reconstruction model is a reconstruction model generated according to non-adaptive sparse transformation and adaptive dictionary learning;
[0042] In this embodiment, any non-adaptive sparse transformation, such as wavelet transformation, principal component transformation analysis transformation (PCA transformation) or full variation transformation (TV transformation), etc., can be adapted to the reconstruction model
[0043] In S103, process the image according to the reconstruction model to generate a reconstructed image;
[0044] In S104, the reconstructed image is fitted to obtain magnetic resonance parameters.
[0045] Opt...
Embodiment 2
[0052] image 3 It shows a flow chart of the implementation of the magnetic resonance parameter acquisition method provided by Embodiment 2 of the present invention, which is described in detail as follows:
[0053] In S301, the k-p space is under-sampled to obtain L parameter coding dimensions p={p 1 ,p 2 ,...,p L} undersampled k-space signal
[0054] In this embodiment, the k-p space is under-sampled to obtain L parameter coding dimensions p={p 1 ,p 2 ,...,p L} on the corresponding k-space signal in Its corresponding vector form is y={y 1 ,y 2 ,...,y L},
[0055] In S302, for the L k-space signals Perform reconstruction and generate L temporary reconstructed images The reconstructed image as the image to be optimized;
[0056] In this example, from reconstructs a series of images in each parameter-encoded dimension The corresponding vector form is x={x 1 ,x 2 ,…,x L}, Wherein, the reconstruction method includes various linear or nonlinear re...
Embodiment 3
[0101] Figure 4 The structure diagram of the magnetic resonance parameter acquisition system provided by the third embodiment of the present invention is shown. For the convenience of description, only the part related to the embodiment of the present invention is shown. The device may be a software unit built in a medical image processing device, Hardware unit or soft-hard combination unit.
[0102] The system includes: an acquisition unit 41 , an input unit 42 , a generation unit 43 and a fitting unit 44 .
[0103] an acquisition unit 41, for acquiring the image to be optimized;
[0104] The input unit 42 is used to input the image into a preset image reconstruction model, where the preset image reconstruction model is a reconstruction model generated according to non-adaptive sparse transformation and adaptive dictionary learning;
[0105] a generating unit 43, configured to process the image according to the reconstruction model to generate a reconstructed image;
[01...
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