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Toward parts-based scene understanding with pixel-support parts-sparse pictorial structures

机译:通过像素支持零件稀疏的图形结构实现基于零件的场景理解

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摘要

Scene understanding remains a significant challenge in the computer vision community. The visual psy-chophysics literature has demonstrated the importance of interdependence among parts of the scene. Yet, the majority of methods in scene understanding remain local. Pictorial structures have arisen as a fundamental parts-based model for some vision problems, such as articulated object detection. However, the form of classical pictorial structures limits their applicability for global problems, such as semantic pixel labeling. In this paper, we propose an extension of the pictorial structures approach, called pixel-support parts-sparse pictorial structures, or PS3, to overcome this limitation. Our model extends the classical form in two ways: first, it defines parts directly based on pixel-support rather than in a parametric form, and second, it specifies a space of plausible parts-based scene models and permits one to be used for inference on any given image. PS3 makes strides toward unifying object-level and pixel-level modeling of scene elements. In this paper, we implement the first half of our model and rely upon external knowledge to provide an initial graph structure for a given image. Our experimental results on benchmark datasets demonstrate the capability of this new parts-based view of scene modeling.
机译:场景理解仍然是计算机视觉社区中的重大挑战。视觉心理物理学文献已经证明了场景各部分之间相互依存的重要性。但是,场景理解中的大多数方法仍然是局部的。图形结构已经成为一些视觉问题(例如,铰接对象检测)的基于零件的基本模型。但是,经典图片结构的形式限制了它们对诸如语义像素标记之类的全局问题的适用性。在本文中,我们提出了一种绘画作品结构方法的扩展,称为像素支撑部分-稀疏绘画作品结构或PS3,以克服此限制。我们的模型通过两种方式扩展了经典形式:首先,它直接基于像素支持而不是参数形式来定义零件;其次,它指定了可能的基于零件的场景模型空间,并允许将其用于推理在任何给定的图像上。 PS3朝着统一场景元素的对象级和像素级建模迈进了一大步。在本文中,我们实现模型的前半部分,并依靠外部知识为给定图像提供初始图结构。我们在基准数据集上的实验结果证明了这种新的基于零件的场景建模视图的功能。

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