突出对象的细分与检测研究

Shengfeng He, Jianbo Jiao, Xiaodan Zhang, Guoqiang Han, Rynson W. H. Lau
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引用次数: 51

摘要

主观化(即对数字的即时判断)和发现显著物体是人类与生俱来的能力。这两项任务在人类视觉系统中相互影响。在本文中,我们深入研究了这两个任务的互补性。提出了一种具有权重预测的多任务深度神经网络用于显著目标检测,其中自适应权重层的参数由辅助子化网络动态确定。因此,突出对象的数字表示被嵌入到空间表示中。该联合网络可以通过反向传播进行端到端训练。实验表明,本文提出的多任务网络优于现有的多任务架构,并且辅助细分网络通过减少误报和生成连贯的显著性图,为显著性目标检测提供了强有力的指导。此外,该方法是一种无约束的方法,能够处理具有/不具有显著目标的图像。最后,我们展示了在不同显著对象数据集上的最新性能。
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Delving into Salient Object Subitizing and Detection
Subitizing (i.e., instant judgement on the number) and detection of salient objects are human inborn abilities. These two tasks influence each other in the human visual system. In this paper, we delve into the complementarity of these two tasks. We propose a multi-task deep neural network with weight prediction for salient object detection, where the parameters of an adaptive weight layer are dynamically determined by an auxiliary subitizing network. The numerical representation of salient objects is therefore embedded into the spatial representation. The proposed joint network can be trained end-to-end using backpropagation. Experiments show the proposed multi-task network outperforms existing multi-task architectures, and the auxiliary subitizing network provides strong guidance to salient object detection by reducing false positives and producing coherent saliency maps. Moreover, the proposed method is an unconstrained method able to handle images with/without salient objects. Finally, we show state-of-theart performance on different salient object datasets.
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