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Saliency detection via integrating deep learning architecture and low-level features

机译:通过集成深度学习架构和低级功能进行显着性检测

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Deep learning methods, with their good performance in semantic representation of different images, have been widely used for saliency detection. Recent saliency detection methods have applied deep learning to obtain high-level features and combined them with hand-crafted low-level features to estimate saliency in the images. However, it is difficult to find the relationship between high-level and low-level features, resulting in incomplete integration framework for saliency detection. In this paper, we novely propose a saliency detection model by integrating high-level and low-level features with joint probability estimation. Firstly, the high-level features from FCN-8S network are used to estimate the probability of each superpixel as foreground or background region. Secondly, low-level features are extracted from each superpixels and clustered via affinity propagation (AP) clustering. The distributions of vectors from different clusters are consequently utilized to calculate the conditional probability of each superpixel as salient object under different assumptions. Thirdly, the joint probability of each superpixel as salient object in foreground or background is computed to compose the saliency map of the whole image. To further improve the uniformity of saliency in the same object region, the structured random forest (SRF) method is used to detect the contour of the image and the saliency of superpixels in homogeneous regions are uniformly merged. The advantage of high-level features in representing semantic regions and that of low-level features in differentiating local details in the image are unified and restrained by the joint probability estimation in the proposed model. Experimental results demonstrate that the proposed method provide better saliency detection performance than the state-of-the-art methods on 5 public databases. (C) 2019 Elsevier B.V. All rights reserved.
机译:深度学习方法以其在不同图像的语义表示中的良好性能,已被广泛用于显着性检测。最近的显着性检测方法已应用深度学习来获得高级特征,并将其与手工制作的低级特征结合在一起以估计图像中的显着性。但是,很难找到高级功能与低级功能之间的关系,从而导致显着性检测的集成框架不完整。在本文中,我们新颖地提出了一种显着性检测模型,该模型将高级和低级特征与联合概率估计相结合。首先,使用FCN-8S网络的高级特征来估计每个超像素作为前景或背景区域的概率。其次,从每个超像素中提取低级特征,并通过亲和力传播(AP)聚类进行聚类。因此,利用来自不同聚类的向量的分布来计算在不同假设下作为显着对象的每个超像素的条件概率。第三,计算每个超像素在前景或背景中作为显着对象的联合概率,以构成整个图像的显着性图。为了进一步提高同一物体区域中显着性的均匀性,采用结构化随机森林(SRF)方法检测图像轮廓,并将均匀区域中超像素的显着性进行合并。提出的模型通过联合概率估计统一并限制了高级特征在表示语义区域方面的优势以及低级特征在区分图像局部细节方面的优势。实验结果表明,与5个公共数据库中的最新方法相比,该方法提供了更好的显着性检测性能。 (C)2019 Elsevier B.V.保留所有权利。

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