Salient object detection, which aims to identify and locate the most salient pixels or regions in images, has been attracting more and more interest due to its various real-world applications. However, this vision task is quite challenging, especially under complex image scenes. Inspired by the intrinsic reflection of natural images, in this paper we propose a novel feature learning framework for large-scale salient object detection. Specifically, we design a symmetrical fully convolutional network (SFCN) to learn complementary saliency features under the guidance of lossless feature reflection. The location information, together with contextual and semantic information, of salient objects are jointly utilized to supervise the proposed network for more accurate saliency predictions. In addition, to overcome the blurry boundary problem, we propose a new structural loss function to learn clear object boundaries and spatially consistent saliency. The coarse prediction results are effectively refined by these structural information for performance improvements. Extensive experiments on seven saliency detection datasets demonstrate that our approach achieves consistently superior performance and outperforms the very recent state-of-the-art methods.
翻译:突出的物体探测旨在识别和定位图像中最突出的像素或区域,由于各种现实世界应用,它吸引了越来越多的兴趣。然而,这一远景任务具有相当的艰巨性,特别是在复杂的图像场景下。受自然图像内在反射的启发,我们在本文件中为大型突出物体探测提出了一个新的特征学习框架。具体地说,我们设计了一个对称的全演化网络(SFCN),以在无损失特征反射的指导下学习互补的显著特征。重点物体的位置信息,连同背景和语义信息,被联合用来监督拟议的网络,以便进行更准确的显著预测。此外,为了克服模糊的边界问题,我们提出了一个新的结构损失功能,以学习清晰的物体界限和空间上一致的显著特征。粗略的预测结果被这些结构信息有效地改进了性能。关于七个突出的探测数据集的广泛实验表明,我们的方法取得了一贯的优异性,并超越了最近的状态方法。