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DHSNet: Deep Hierarchical Saliency Network for Salient Object Detection

机译:DHSNet:用于显着对象检测的深度分层显着网络

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Traditional salient object detection models often use hand-crafted features to formulate contrast and various prior knowledge, and then combine them artificially. In this work, we propose a novel end-to-end deep hierarchical saliency network (DHSNet) based on convolutional neural networks for detecting salient objects. DHSNet first makes a coarse global prediction by automatically learning various global structured saliency cues, including global contrast, objectness, compactness, and their optimal combination. Then a novel hierarchical recurrent convolutional neural network (HRCNN) is adopted to further hierarchically and progressively refine the details of saliency maps step by step via integrating local context information. The whole architecture works in a global to local and coarse to fine manner. DHSNet is directly trained using whole images and corresponding ground truth saliency masks. When testing, saliency maps can be generated by directly and efficiently feed forwarding testing images through the network, without relying on any other techniques. Evaluations on four benchmark datasets and comparisons with other 11 state-of-the-art algorithms demonstrate that DHSNet not only shows its significant superiority in terms of performance, but also achieves a real-time speed of 23 FPS on modern GPUs.
机译:传统的显着物体检测模型通常使用手工制作的特征来形成对比度和各种先验知识,然后人为地将它们组合在一起。在这项工作中,我们提出了一种基于卷积神经网络的新型端到端深度分层显着网络(DHSNet),用于检测显着物体。 DHSNet首先通过自动学习各种全局结构化显着性线索(包括全局对比度,客观性,紧凑性及其最佳组合)来进行粗略的全局预测。然后,采用一种新颖的递归卷积神经网络(HRCNN),通过整合局部上下文信息,逐步对渐进图的细节进行层次化和逐步细化。整个体系结构以全局到局部以及从粗略到精细的方式工作。使用整个图像和相应的地面真实显着性掩模直接训练DHSNet。测试时,可以通过网络直接有效地馈送转发测试图像来生成显着性映射,而无需依赖任何其他技术。对四个基准数据集的评估以及与其他11个最新算法的比较表明,DHSNet不仅在性能方面显示出其显着的优越性,而且在现代GPU上实现了23 FPS的实时速度。

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