Small sample image segmentation method based on guide network and full-connection conditional random field
A conditional random field and guided network technology, applied in the field of image processing, can solve the problems of large amount of training data and low segmentation accuracy, and achieve the effect of considering comprehensive information, improving segmentation accuracy, and ensuring robustness
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Embodiment 1
[0049] Such as figure 1 As shown, this embodiment provides a small-sample image segmentation method based on a guided network and a fully connected conditional random field, including:
[0050] Step (1): Obtain the data of the image to be segmented, divide the image into groups, and obtain the supporting image and the query image;
[0051] Step (2): After marking the positive sample points and negative sample points in the support image, obtain the foreground information feature map and background information feature map containing the positive and negative sample positions;
[0052] Step (3): Based on the supporting image, the foreground information feature map and the background information feature map, the guided network is used to extract task features;
[0053] Step (4): According to the task characteristics and the query image, the segmentation network is used to perform preliminary segmentation, and the preliminary segmentation result is obtained;
[0054] Step (5): ...
Embodiment 2
[0093] Such as Figure 6 As shown, this embodiment provides a small-sample image segmentation system based on a guided network and a fully connected conditional random field, including:
[0094] The image division module is configured to divide the obtained images to be segmented into groups to obtain support images and query images;
[0095] The image labeling module is configured to obtain a foreground information feature map and a background information feature map containing positive and negative sample positions after labeling the positive sample points and negative sample points in the support image;
[0096] The guidance module is configured to use a guidance network to extract task features based on the support image, the foreground information feature map and the background information feature map;
[0097] The preliminary segmentation module is configured to perform preliminary segmentation according to the task feature and the query image, and obtain a preliminary ...
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