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Coarse-to-fine salient object detection based on deep convolutional neural networks

机译:基于深卷积神经网络的粗致良性对象检测

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摘要

With explosive growth of image data, automatic image interpretation becomes more and more important. Saliency detection is one of the fundamental problems. To predict the saliency map, traditional saliency detection approaches use handcrafted features, which are not robust for complex scene. Recently, convolutional neural network (CNN) have shown good performance in computer vision problems. In this paper, we propose a coarse to-fine approach combining pixel-wise FCN with superpixel-based CNN for detecting salient objects with precise boundaries. Firstly, the fully convolutional network (FCN) model is used to produce a coarse saliency map. Instead of patch-based CNN taking in overlapping patches as samples, the FCN model adopts the pixel-wise structure which can predict the location of the salient objects from the global aspect. Then, superpixel clustering is presented to decompose the image into homogeneous superpixels. For each superpixel, the local superpixel-based CNN model is created to integrate the coarse saliency map with the original image information for refining the detected salient objects with precise boundaries. Experimental results on large benchmark databases demonstrate the proposed method perform well when tested against the state-of-the-art methods.
机译:随着图像数据的爆炸性增长,自动图像解释变得越来越重要。显着性检测是一个基本问题之一。为了预测显着性图,传统的显着性检测方法使用手工制作功能,这对于复杂的场景并不稳健。最近,卷积神经网络(CNN)在计算机视觉问题中表现出良好的性能。在本文中,我们提出了一种粗略的方法,与基于Superpixel的CNN合成的像素-WISE FCN组合用于检测具有精确边界的突出对象。首先,全卷积网络(FCN)模型用于产生粗糙的显着图。除了样本中,FCN模型可以采用基于修补程序的CNN,而不是将基于补丁的CNN进行重叠贴片,而是可以预测来自全局方面的突出对象的位置的像素方面结构。然后,提出了SuperPixel聚类以将图像分解成均匀的超像素。对于每个SuperPixel,创建了基于局部超级缀合的CNN模型,以将粗糙显着性图与原始图像信息集成,以便用精确的边界精炼检测到的突出对象。在大型基准数据库上的实验结果证明了在针对最先进的方法测试时表现良好的方法。

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