An Image Classification Method Based on Incremental Neural Network and Subgraph Coding
A technology of neural network and classification method, applied in the field of image classification
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[0055] This embodiment is divided into a training phase and a classification phase, and the main processes of each embodiment part are introduced below:
[0056] Training phase process:
[0057] 1. Local feature extraction: Local feature extraction is performed on a set of training image sets I, and the local feature descriptor can effectively represent the local information of the image, which provides the basis for forming the subsequent overall image description. The present invention uses SIFT feature as the local feature of the image. In addition, when extracting local features of the image, it is also necessary to determine the sampling strategy, that is, dense sampling or sparse sampling (interest point sampling). These two sampling methods are divided by the number of sampling points in an image. If only some interest points of an image are sampled and the number of sampling points is relatively small, it is called sparse sampling; Widely extracting sampling points f...
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