Single image patch reconstruction method based on undirected graph learning model
A technology for learning models and undirected graphs, applied in the field of computer vision, can solve problems that affect the quality of reconstructed patches, difficult to adapt to diverse model categories, category restrictions, etc.
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[0180] In this example, if figure 2 Shown is the input image to be reconstructed, through the three-dimensional reconstruction method of the present invention, the three-dimensional shape of the object in the picture can be reconstructed. The specific implementation process is as follows:
[0181] Through steps 1 to 4, the present invention obtains the trained undirected graph initialization network and undirected graph update network.
[0182] In step five, the user inputs an image containing the chair object to be reconstructed, such as figure 2 shown. At the same time, the system provides an initialization triangular patch, such as image 3 shown. The image is input into the undirected graph initialization network and is encoded into the image information feature matrix by the image encoder composed of the deep residual network. Subsequently, the feature matrix will be input into the decoder, where the fully connected process of the decoder maps the feature matrix to...
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