更深入地了解显著性:特征对比、语义及其他

Neil D. B. Bruce, Christopher Catton, Sasa Janjic
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引用次数: 55

摘要

在本文中,我们考虑了视觉显著性建模问题,包括人类凝视预测和显著性目标分割。本文的首要目标是确定与推导更复杂的视觉显著性模型相关的高级考虑因素。提出了一种基于全卷积网络(fcn)的深度学习模型,相对于现有的建议,该模型在各种基准测试中表现出非常好的性能。我们还证明了选择训练数据和处理基础真值的方式对最终模型行为至关重要。最近的研究已经探索了人类凝视和显著物体之间的关系,我们也在fcn的背景下进一步研究了这一点。对所建议的模型和备选模型的仔细检查可以作为识别问题的工具,这些问题对于开发更全面的模型至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deeper Look at Saliency: Feature Contrast, Semantics, and Beyond
In this paper we consider the problem of visual saliency modeling, including both human gaze prediction and salient object segmentation. The overarching goal of the paper is to identify high level considerations relevant to deriving more sophisticated visual saliency models. A deep learning model based on fully convolutional networks (FCNs) is presented, which shows very favorable performance across a wide variety of benchmarks relative to existing proposals. We also demonstrate that the manner in which training data is selected, and ground truth treated is critical to resulting model behaviour. Recent efforts have explored the relationship between human gaze and salient objects, and we also examine this point further in the context of FCNs. Close examination of the proposed and alternative models serves as a vehicle for identifying problems important to developing more comprehensive models going forward.
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