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FCN Salient Object Detection Using Region Cropping

机译:使用区域裁剪的FCN显着物体检测

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An important issue in salient object detection is how to improve the result of saliency map for the reason that it is the basis of many subsequent operations in computer vision. In this paper, we propose a region-based salient object detection model using fully convolutional neural network (FCN) with traditional visual saliency method. We introduce the region cropping and jumping operation into FCN network for a more target-oriented feature extraction, which is a low-level cue based processing. It processes the training images into patches of various sizes and makes these patches jump to convolutional layers with corresponding depths as their input data in training. This operation can preserve the main structure of objects while decrease the background redundancy. In the meantime, it also takes into account topological property, which emphasizes the topological integrity of objects. Experimental results on four datasets show that the proposed model performs effectively on salient object detection compared with other ten approaches, including state-of-the-art ones.
机译:显着对象检测中的一个重要问题是如何提高显着性图的结果,因为它是计算机视觉中许多后续操作的基础。在本文中,我们提出了一种基于全卷积神经网络(FCN)和传统视觉显着性方法的基于区域的显着目标检测模型。我们将区域裁剪和跳跃操作引入FCN网络中,以进行更加面向目标的特征提取,这是一种基于低级提示的处理。它将训练图像处理成各种大小的小块,并使这些小块跳到具有相应深度的卷积层,作为它们在训练中的输入数据。此操作可以保留对象的主要结构,同时减少背景冗余。同时,它还考虑了拓扑属性,该属性强调对象的拓扑完整性。在四个数据集上的实验结果表明,与其他十种方法(包括最新方法)相比,所提出的模型在显着目标检测方面能有效执行。

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