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RGBD Salient Object Detection: A Benchmark and Algorithms

机译:RGBD显着物体检测:基准和算法

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Although depth information plays an important role in the human vision system, it is not yet well-explored in existing visual saliency computational models. In this work, we first introduce a large scale RGBD image dataset to address the problem of data deficiency in current research of RGBD salient object detection. To make sure that most existing RGB saliency models can still be adequate in RGBD scenarios, we continue to provide a simple fusion framework that combines existing RGB-produced saliency with new depth-induced saliency, the former one is estimated from existing RGB models while the latter one is based on the proposed multi-contextual contrast model. Moreover, a specialized multi-stage RGBD model is also proposed which takes account of both depth and appearance cues derived from low-level feature contrast, mid-level region grouping and high-level priors enhancement. Extensive experiments show the effectiveness and superiority of our model which can accurately locate the salient objects from RGBD images, and also assign consistent saliency values for the target objects.
机译:尽管深度信息在人类视觉系统中起着重要的作用,但是在现有的视觉显着性计算模型中尚未对其进行充分的研究。在这项工作中,我们首先介绍一个大规模的RGBD图像数据集,以解决当前RGBD显着目标检测研究中的数据不足问题。为了确保大多数现有RGB显着性模型在RGBD场景下仍然足够,我们将继续提供一个简单的融合框架,将现有RGB产生的显着性与新的深度诱导显着性相结合,前者是根据现有RGB模型估算的,而后者基于提出的多上下文对比模型。此外,还提出了一种专门的多阶段RGBD模型,该模型考虑了从低级特征对比度,中级区域分组和高级先验增强得到的深度和外观提示。大量的实验证明了我们模型的有效性和优越性,该模型可以从RGBD图像中准确定位显着对象,并为目标对象分配一致的显着性值。

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