IEEE Trans Image Process. 2014 May;23(5):1937-52. doi: 10.1109/TIP.2014.2307434.
This paper proposes a novel saliency detection framework termed as saliency tree. For effective saliency measurement, the original image is first simplified using adaptive color quantization and region segmentation to partition the image into a set of primitive regions. Then, three measures, i.e., global contrast, spatial sparsity, and object prior are integrated with regional similarities to generate the initial regional saliency for each primitive region. Next, a saliency-directed region merging approach with dynamic scale control scheme is proposed to generate the saliency tree, in which each leaf node represents a primitive region and each non-leaf node represents a non-primitive region generated during the region merging process. Finally, by exploiting a regional center-surround scheme based node selection criterion, a systematic saliency tree analysis including salient node selection, regional saliency adjustment and selection is performed to obtain final regional saliency measures and to derive the high-quality pixel-wise saliency map. Extensive experimental results on five datasets with pixel-wise ground truths demonstrate that the proposed saliency tree model consistently outperforms the state-of-the-art saliency models.
本文提出了一种新颖的显著度检测框架,称为显著度树。为了进行有效的显著度测量,首先使用自适应颜色量化和区域分割简化原始图像,将图像分割成一组基本区域。然后,将三种度量标准,即全局对比度、空间稀疏性和对象先验与区域相似性相结合,为每个基本区域生成初始区域显著度。接下来,提出了一种具有动态尺度控制方案的显著度导向区域合并方法,以生成显著度树,其中每个叶节点表示一个基本区域,每个非叶节点表示在区域合并过程中生成的非基本区域。最后,通过利用基于区域中心-环绕的节点选择准则,对显著度树进行系统的分析,包括显著节点的选择、区域显著度的调整和选择,以获得最终的区域显著度测量值,并得到高质量的像素级显著度图。在五个具有像素级地面实况的数据集上进行的广泛实验结果表明,所提出的显著度树模型始终优于最先进的显著度模型。