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Object detection using geometrical context feedback

机译:使用几何上下文反馈进行对象检测

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摘要

We propose a new coherent framework for joint object detection, 3D layout estimation, and object supporting region segmentation from a single image. Our approach is based on the mutual interactions among three novel modules: (i) object detector; (ii) scene 3D layout estimator; (iii) object supporting region segmenter. The interactions between such modules capture the contextual geometrical relationship between objects, the physical space including these objects, and the observer. An important property of our algorithm is that the object detector module is capable of adaptively changing its confidence in establishing whether a certain region of interest contains an object (or not) as new evidence is gathered about the scene layout. This enables an iterative estimation procedure where the detector becomes more and more accurate as additional evidence about a specific scene becomes available. Extensive quantitative and qualitative experiments are conducted on the table-top dataset (Sun et al. in ECCV, 2010b) and two publicly available datasets (Hoiem et al. in CVPR, 2006; Sudderth et al. in IJCV, 2008), and demonstrate competitive object detection, 3D layout estimation, and segmentation results.
机译:我们提出了一个新的相干框架,用于从单个图像进行联合对象检测,3D布局估计和对象支持区域分割。我们的方法基于三个新颖模块之间的相互影响:(i)对象检测器; (ii)场景3D布局估算器; (iii)对象支持区域分割器。这些模块之间的交互捕获对象,包括这些对象的物理空间以及观察者之间的上下文几何关系。我们的算法的一个重要特性是,当收集到有关场景布局的新证据时,对象检测器模块能够自适应地更改其信心,以确定某个感兴趣区域是否包含对象(或不包含对象)。这使得能够进行迭代估计过程,其中随着可获得有关特定场景的其他证据,检测器变得越来越准确。在台式数据集(Sun等人,ECCV,2010b)和两个公开可用的数据集(Hoiem等人,CVPR,2006; Sudderth等人,IJCV,2008)中进行了广泛的定量和定性实验,并进行了演示竞争对象检测,3D布局估计和分割结果。

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