A Massive Image Classification Method Based on Deep Local Feature Descriptors
A technology of local features and classification methods, applied in the field of image processing and deep learning, to achieve the effect of improving accuracy
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[0021] The massive image classification method based on the deep local feature descriptor proposed by the present invention specifically includes the following steps:
[0022] Step 1: Set the entire deep learning model as an L-layer deep learning process; extract the SIFT features of each training picture, and the SIFT feature set S of the entire training sample set is expressed as:
[0023] S=[s 1 ,...,s N ], S ∈ R D×N
[0024] Among them, N is the number of SIFT features in the SIFT feature set, and D is the dimension of each SIFT feature; Kmeans clustering is performed on the SIFT feature set S to obtain the dictionary of the first layer of deep learning process D. 1 ∈ R D×K , where K is the dictionary D 1 The number of cluster centers in D, D is the dimension of the cluster centers;
[0025] Step 2: Define that each training picture is a set B=[B of T=M1×M2×M3 image blocks 1 ,...,B t ,...,B T ], that is, each training picture has M3 sub-regions, and each sub-reg...
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