Superpixel segmentation method and system based on attention mechanism and convolutional neural network
A convolutional neural network and superpixel segmentation technology, applied in the field of image processing, can solve problems such as not considering the spatial relationship between pixels and seed points, and irregular superpixel shapes, so as to improve network performance, reduce dimensions, improve efficiency and The effect of accuracy
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Embodiment 1
[0038] The purpose of this embodiment is to provide a superpixel segmentation method based on attention mechanism and convolutional neural network.
[0039] A superpixel segmentation method based on attention mechanism and convolutional neural network, comprising:
[0040] Obtain an image to be subjected to superpixel segmentation;
[0041] The image is input into a pre-trained superpixel segmentation model to obtain a predicted superpixel correlation map, and based on the superpixel correlation map, determine the image superpixel segmentation result;
[0042] Wherein, the superpixel segmentation model adopts an encoder-decoder design, and the encoder includes several convolutional layers, and the image generates feature maps of different scales through convolutional layers of different levels in the encoder; the decoder Including several deconvolution layers, the feature maps generated by different levels of convolution layers in the encoder are passed to the corresponding l...
Embodiment 2
[0065] The purpose of this embodiment is to provide a superpixel segmentation system based on attention mechanism and convolutional neural network.
[0066] A superpixel segmentation system based on attention mechanism and convolutional neural network, including:
[0067] A data acquisition unit, which is used to acquire an image to be subjected to superpixel segmentation;
[0068] A superpixel segmentation unit, which is used to input the image into a pre-trained superpixel segmentation model to obtain a predicted superpixel correlation map, and determine an image superpixel segmentation result based on the superpixel correlation map;
[0069] Wherein, the superpixel segmentation model adopts an encoder-decoder design, and the encoder includes several convolutional layers, and the image generates feature maps of different scales through convolutional layers of different levels in the encoder; the decoder Including several deconvolution layers, the feature maps generated by d...
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