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Salient object detection: From pixels to segments

机译:显着物体检测:从像素到片段

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In this paper we propose a novel approach to the task of salient object detection. In contrast to previous salient object detectors that are based on a spotlight attention theory, we follow an object-based attention theory and incorporate the notion of an object directly into our saliency measurements. Particularly, we consider proto-objects as units of the analysis, where a proto-object is a connected image region that can be converted into a plausible object or object-part, once a focus of attention reaches it. As the object-based attention theory suggests, we start with segmenting a complex image into proto-objects and then assess saliency for each proto-object. The most salient proto-object is considered as being a salient object. We distinguish two types of object saliency. Firstly, an object is salient if it differs from its surrounding, which we call center-surround saliency. Secondly, an object is salient if it contains rare or outstanding details, which we measure by integrated saliency. We demonstrate that these two types of object saliency have complementary characteristics; moreover, the combination of the two performs at the level of state-of-the-art in salient object detection.
机译:在本文中,我们提出了一种用于显着目标检测任务的新颖方法。与先前基于聚光注意力理论的显着物体检测器相比,我们遵循基于对象的注意力理论,并将对象的概念直接纳入我们的显着性测量中。特别地,我们将原型对象视为分析的单元,其中原型对象是一个连接的图像区域,一旦关注的焦点到达该图像区域,该图像区域可以转换为合理的对象或对象部分。正如基于对象的注意力理论所建议的那样,我们首先将复杂的图像分割为原型对象,然后评估每个原型对象的显着性。最突出的原始对象被视为突出对象。我们区分两种类型的对象显着性。首先,如果物体与其周围环境不同,则该物体是显着的,我们称其为中心环绕显着性。其次,如果一个对象包含稀有或突出的细节,则该对象是显着的,我们通过综合显着性对其进行度量。我们证明了这两种类型的对象显着性具有互补性。此外,两者的结合在显着目标检测方面处于最新水平。

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