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首页> 外文期刊>International Journal of Computer Vision >Skeleton search: Category-specific object recognition and segmentation using a skeletal shape model
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Skeleton search: Category-specific object recognition and segmentation using a skeletal shape model

机译:骨架搜索:使用骨架形状模型进行类别特定的对象识别和分割

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摘要

We describe a top-down object detection and segmentation approach that uses a skeleton-based shape model and that works directly on real images. The approach is based on three components. First, we propose a fragment-based generative model for shape that is based on the shock graph and has minimal dependency among its shape fragments. The model is capable of generating a wide variation of shapes as instances of a given object category. Second, we develop a progressive selection mechanism to search among the generated shapes for the category instances that are present in the image. The search begins with a large pool of candidates identified by a dynamic programming (DP) algorithm and progressively reduces it in size by applying series of criteria, namely, local minimum criterion, extent of shape overlap, and thresholding of the objective function to select the final object candidates. Third, we propose the Partitioned Chamfer Matching (PCM) measure to capture the support of image edges for a hypothesized shape. This measure overcomes the shortcomings of the Oriented Chamfer Matching and is robust against spurious edges, missing edges, and accidental alignment between the image edges and the shape boundary contour. We have evaluated our approach on the ETHZ dataset and found it to perform well in both object detection and object segmentation tasks.
机译:我们描述了一种自上而下的对象检测和分割方法,该方法使用基于骨架的形状模型并直接在真实图像上工作。该方法基于三个组成部分。首先,我们提出了一种基于片段的形状生成模型,该模型基于冲击图并且在其形状片段之间具有最小的依赖性。该模型能够生成各种形状的变化作为给定对象类别的实例。其次,我们开发一种渐进式选择机制,以在生成的形状中搜索图像中存在的类别实例。搜索从由动态规划(DP)算法识别的大量候选对象开始,然后通过应用一系列标准(即局部最小标准,形状重叠程度和目标函数的阈值选择)逐步减小其大小。最终目标候选人。第三,我们提出了分割倒角匹配(PCM)措施,以捕获假设形状的图像边缘支持。该措施克服了定向倒角匹配的缺点,并且对于虚假边缘,缺失边缘以及图像边缘与形状边界轮廓之间的意外对齐具有鲁棒性。我们在ETHZ数据集上评估了我们的方法,发现它在对象检测和对象分割任务中均能很好地执行。

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