Download PDFOpen PDF in browserImage Saliency Detection Based on Regional Label FusionEasyChair Preprint 892810 pages•Date: October 3, 2022AbstractIn this paper, an image saliency detection method based on regional label fusion is proposed to solve the problems with fuzzy boundaries, unclear profile, and less interior density commonly existing in the researches of salient region detection. The image is segmented by super pixel segmentation algorithm, then the spectral clustering is carried out for the super pixel region to reduce the number of regions, thereby the label set with the boundary information could be obtained. Next, three salient features of the image have been fused under conditional random field model to generate the coarse saliency map. Afterwards, regional label fusion method is operated, which organically fuses the boundary information into the coarse saliency map by using the salient mean value calculated with the label information as the regional salient features, moreover, together with adaptive threshold segmentation algorithm to acquire reconstructed saliency map. At last, accurate salient region detection are achieved by calculating with a tag indicating vector defined and reconstructed coarse saliency map. Experimental results show that the salient regions obtained by this algorithm display clearer boundary contours and that the density of salient regions has been greatly improved compared with the other six significant detection methods prevailed in recent years. Particularly, it is confirmed that this method could give better detection for the images with high color similarity between salient and non-saliency regions. The multi-leveled salient detection run on the pixel level and at the regional level further enhance the accuracy of detection results. In short, regional label fusion method shows higher accuracy and stability in the field based on visual saliency such as image retrieval and image annotation. Keyphrases: Conditional Random Fields, Super-pixel, regional label, saliency detection, spectral cluster
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