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Saliency detection algorithm based on LSC-RC

机译:基于LSC-RC的显着性检测算法

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摘要

Image prominence is the most important region in an image, which can cause the visual attention and response of human beings. Preferentially allocating the computer resources for the image analysis and synthesis by the significant region is of great significance to improve the image area detecting. As a preprocessing of other disciplines in image processing field, the image prominence has widely applications in image retrieval and image segmentation. Among these applications, the super-pixel segmentation significance detection algorithm based on linear spectral clustering (LSC) has achieved good results. The significance detection algorithm proposed in this paper is better than the regional contrast ratio by replacing the method of regional formation in the latter with the linear spectral clustering image is super-pixel block. After combining with the latest depth learning method, the accuracy of the significant region detecting has a great promotion. At last, the superiority and feasibility of the super-pixel segmentation detection algorithm based on linear spectral clustering are proved by the comparative test.
机译:图像突出是图像中最重要的区域,它可以引起人类的视觉注意力和反应。优先按重要区域分配计算机资源进行图像分析和合成,对于改善图像区域检测具有重要意义。作为图像处理领域其他学科的预处理,图像突出在图像检索和图像分割中具有广泛的应用。在这些应用中,基于线性光谱聚类(LSC)的超像素分割重要性检测算法取得了良好的效果。本文提出的显着性检测算法通过用线性光谱聚类图像超像素块代替后者的区域形成方法,优于区域对比度。结合最新的深度学习方法,有效区域检测的准确性有了很大的提高。最后,通过对比测试证明了基于线性光谱聚类的超像素分割检测算法的优越性和可行性。

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