A trademark image retrieval method based on multi-scale regional feature comparison
An image retrieval and regional feature technology, applied in digital data information retrieval, special data processing applications, instruments, etc., can solve problems such as poor robustness, high missed detection rate, and large impact, and achieve improved robustness and high consistency. The effect of speeding up the retrieval speed
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Embodiment 1
[0052] Image A to be retrieved w×h For example, w and h represent the width and height of the graphic respectively, and the retrieval method of the present invention is used for retrieval.
[0053] First, extract image A w×h And retrieve the features of all images in the system, the specific steps are as follows:
[0054] 1. Customize the specification and sliding step of the multi-scale sliding window. The specification of the sliding window is shown in Table 1. The sliding step μ is 0.1, the horizontal step of the sliding window is 0.1w, and the vertical step of the sliding window is 0.1 h.
[0055]
[0056] Table 1. Specifications of multi-scale sliding windows
[0057] 2. Use the sliding window defined in step 1 as graph A w×h Starting from the upper left corner of , according to the horizontal sliding step and vertical sliding step, slide from left to right and from top to bottom in turn to obtain a system of window image sets R of different sizes, a total of 225, ...
Embodiment 2
[0094] The difference between this embodiment and Embodiment 1 is that the specification of the sliding window and the sliding step are different, see Table 2 for the specific specification, and the horizontal and vertical sliding steps of the sliding window are 0.2w and 0.2h respectively. The similarity distance d of similar window pairs obtained by global inter-scale feature window matching is 0.3, and the offset distance u of the window center position is 0.4; the adaptive threshold matrix T=κ·T 0 ·(s / 100wh) α The κ in α is 0.4, and α is 0.4; the offset distance u of the center position of the similar window obtained by matching the local window features in the ROI is 0.3.
[0095]
[0096] Table 2. Specifications of multi-scale sliding windows
[0097] attached Figure 5 The retrieval results of this embodiment are given, wherein, the graph 000000 is the input graph to be retrieved, and the graphs 000001-000009 are the retrieval results.
Embodiment 3
[0099] The difference between this embodiment and Embodiment 1 is that the specification of the sliding window and the sliding step are different. The specific specification is shown in Table 3. The horizontal and vertical sliding steps of the sliding window are 0.2w and 0.1h respectively. The offset distance u of the window center position of the similar window pair obtained by the feature window matching between global scales is 0.6; the adaptive threshold matrix T=κ·T 0 ·(s / 100wh) α The κ in α is 0.6, and α is 0.8; the offset distance u of the center position of the similar window obtained by matching the local window features in the ROI is 0.3.
[0100]
[0101] Table 3. Specifications of multi-scale sliding windows
[0102] attached Figure 6 The retrieval results of this embodiment are given, wherein, the graph 000000 is the input graph to be retrieved, and the graphs 000001-000009 are the retrieval results.
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