Salient object detection is a problem that has been considered in detail and many solutions proposed. In this paper, we argue that work to date has addressed a problem that is relatively ill-posed. Specifically, there is not universal agreement about what constitutes a salient object when multiple observers are queried. This implies that some objects are more likely to be judged salient than others, and implies a relative rank exists on salient objects. The solution presented in this paper solves this more general problem that considers relative rank, and we propose data and metrics suitable to measuring success in a relative objects saliency landscape. A novel deep learning solution is proposed based on a hierarchical representation of relative saliency and stage-wise refinement. We also show that the problem of salient object subitizing can be addressed with the same network, and our approach exceeds performance of any prior work across all metrics considered (both traditional and newly proposed).
翻译:在本文中,我们认为,迄今为止的工作解决了一个相对不恰当的问题。具体地说,在询问多个观察者时,对于什么是突出对象的问题没有普遍一致的意见,这意味着一些对象比其他对象更有可能被判断为显著,并意味着在突出对象上存在相对等级的相对等级。本文件提出的解决办法解决了这个比较普遍的问题,我们提出了适合于衡量相对物体显著景观成功与否的数据和衡量尺度。根据相对显著性和分阶段改进的等级代表性提出了一个新的深层次学习解决方案。我们还表明,突出对象的分级问题可以同一个网络一起解决,我们的方法超过了以往在所有考虑的指标(传统和新提出的指标)中的工作业绩。