Image semantics classification method based on class-shared multiple kernel learning (MKL)
A classification method and multi-core learning technology, applied in the fields of image semantic classification, image classification and object recognition based on class sharing multi-core learning, can solve the problem of weakening training samples, and achieve weakening adverse effects, good recognition ability, and strong image category recognition. The effect of performance and generalization ability
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[0043] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.
[0044] figure 2 is a workflow diagram according to an embodiment of the present invention. Utilize the present invention to solve the image semantic classification problem of multiple categories, take Scene15 image data set as example, Scene15 data set includes 15 kinds of natural scene categories, such as bedroom (bedroom class), kitchen (kitchen class), forest (forest class), mountain (alpine category) and coast (seashore category), etc. Each category contains 200 to 400 positive samples, from which 100 are randomly selected and added to the training data set, and the remaining images are used as test data.
[0045] Step 1, preprocessing stage
[0046] Local features are used to extract the local content of the image, including Dense-Color-SIFT (DCSIFT) and Dense-SIFT (DSIFT) based on color and grayscale images. Both local features adopt...
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