用于显著目标检测的固定导向网络

Zhe Cui, Li Su, Weigang Zhang, Qingming Huang
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摘要

基于卷积神经网络(CNN)的显著目标检测(SOD)近年来取得了很大的发展。然而,在一些具有挑战性的情况下,如小尺度显著目标、低对比度显著目标和杂乱背景,现有的显著目标检测方法仍然不能令人满意。为了准确检测显著目标,SOD网络需要固定最显著部分的位置。注视预测(FP)专注于最具视觉吸引力的区域,因此我们认为它可以帮助定位显著物体。据我们所知,联合考虑SOD和FP任务的方法很少。在本文中,我们提出了一个固定引导显著目标检测网络(FGNet)来利用SOD和FP之间的相关性。FGNet包括两个分支,分别处理注视预测和显著目标检测。在此基础上,提出了一种有效的特征协同模块(FCM)来融合两个分支之间的互补信息。在四个流行的数据集上进行了大量的实验,并与12种最先进的方法进行了比较,结果表明,所提出的FGNet可以很好地捕捉图像的主要背景,并更准确地定位显著目标。
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Fixation guided network for salient object detection
Convolutional neural network (CNN) based salient object detection (SOD) has achieved great development in recent years. However, in some challenging cases, i.e. small-scale salient object, low contrast salient object and cluttered background, existing salient object detect methods are still not satisfying. In order to accurately detect salient objects, SOD networks need to fix the position of most salient part. Fixation prediction (FP) focuses on the most visual attractive regions, so we think it could assist in locating salient objects. As far as we know, there are few methods jointly consider SOD and FP tasks. In this paper, we propose a fixation guided salient object detection network (FGNet) to leverage the correlation between SOD and FP. FGNet consists of two branches to deal with fixation prediction and salient object detection respectively. Further, an effective feature cooperation module (FCM) is proposed to fuse complementary information between the two branches. Extensive experiments on four popular datasets and comparisons with twelve state-of-the-art methods show that the proposed FGNet well captures the main context of images and locates salient objects more accurately.
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