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DeepSaliency: Multi-Task Deep Neural Network Model for Salient Object Detection

机译:DeepSaliency:用于显着目标检测的多任务深度神经网络模型

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摘要

A key problem in salient object detection is how to effectively model the semantic properties of salient objects in a data-driven manner. In this paper, we propose a multi-task deep saliency model based on a fully convolutional neural network with global input (whole raw images) and global output (whole saliency maps). In principle, the proposed saliency model takes a data-driven strategy for encoding the underlying saliency prior information, and then sets up a multi-task learning scheme for exploring the intrinsic correlations between saliency detection and semantic image segmentation. Through collaborative feature learning from such two correlated tasks, the shared fully convolutional layers produce effective features for object perception. Moreover, it is capable of capturing the semantic information on salient objects across different levels using the fully convolutional layers, which investigate the feature-sharing properties of salient object detection with a great reduction of feature redundancy. Finally, we present a graph Laplacian regularized nonlinear regression model for saliency refinement. Experimental results demonstrate the effectiveness of our approach in comparison with the state-of-the-art approaches.
机译:显着对象检测中的关键问题是如何以数据驱动方式有效地对显着对象的语义属性建模。在本文中,我们提出了一个基于全卷积神经网络的多任务深度显着性模型,该模型具有全局输入(整个原始图像)和全局输出(整个显着性地图)。原则上,提出的显着性模型采用数据驱动策略对潜在的显着性先验信息进行编码,然后建立一个多任务学习方案,以探索显着性检测与语义图像分割之间的内在关联。通过从这两个相关任务中进行协作特征学习,共享的完全卷积层可为对象感知提供有效的特征。而且,它能够使用全卷积层在不同级别上捕获显着对象的语义信息,从而研究显着对象检测的特征共享特性,同时极大地减少了特征冗余。最后,我们提出了一个图拉普拉斯正则化非线性回归模型以进行显着性细化。实验结果证明了我们的方法与最新技术方法相比的有效性。

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