Salient Object Detection Method Based on Superpixel Segmentation and Depth Feature Location
A technology of superpixel segmentation and depth features, which is applied in the field of salient target detection based on superpixel segmentation and depth feature positioning, can solve the problem of unsatisfactory target shape extraction, and achieve complete background removal, complete position and shape, and robustness strong effect
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Embodiment 1
[0024] Some of the existing salient target detection methods only consider the characteristics of the image itself to find the difference between the target area and the background area of the image, so as to distinguish the target position and the background area. In addition, the Markov chain is used to process the saliency map, and the mutual influence relationship between the central saliency area and the surrounding background area is found. There is also a method of using the convolution of the magnitude spectrum and the filter to realize the redundant information and finally find the salient target area. Although these methods are effective in detecting salient targets, the detection effect is not satisfactory in terms of edge segmentation, background removal, and target shape extraction, and has certain limitations.
[0025] Aiming at these defects of the prior art, after discussion and innovation, the present invention proposes a salient target detection method base...
Embodiment 2
[0036] The salient target detection method based on superpixel segmentation and depth feature location is the same as in embodiment 1, and the superpixel segmentation of the target image to be detected in step 1 of the present invention includes the following steps:
[0037] 1.1 First assume the target image, that is, the original Figure 1 There are N pixels in total, and the total area expected to be segmented is K. Obviously, there are N / K pixels in each divided area, and the distance between different areas is about It may happen that the set center point just appears on the edge. In order to avoid this situation, find the position with the minimum local gradient around the set center, and move the center position to the minimum local gradient. And set a label number in the same area as a mark.
[0038] 1.2 Calculate the Euclidean distance value of the five-dimensional feature vector from each pixel point to the determined center point of the surrounding neighborhood, an...
Embodiment 3
[0048] The salient target detection method based on superpixel segmentation and depth feature location is the same as that of Embodiment 1-2. In step 3 of the present invention, the three types of feature information, namely, nearest neighbor region information, global region information and corner background region information, are collected to fully consider Pay more attention to the center and ignore the surrounding background, the feature similarity of the target area, and the prior knowledge compared to the uniqueness of the global feature, including the following steps:
[0049] 3.1 Considering that the center is more likely to be salience than the surrounding background, saliency targets must be concentrated in a certain area. For each segmented area, the information in the nearest adjacent area is collected, that is, the nearest neighbor area information.
[0050] 3.2 Consider the degree of influence of the processing area on the entire image, by removing the informatio...
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