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Combining Top-Down and Ncut Methods for Figure-Ground Segmentation

机译:结合使用自顶向下和Ncut方法进行图形地面分割

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To locate the object accurately in a scene for further vision processing, a novel approach for figure-ground segmentation is proposed, which combines the normalized-cut method (Ncut) and top-down method inspired by the trickle-up and trickle-down processing in primate visual pathways. Firstly, as the trickle-up stage, The Ncut method groups the pixels into multiple partitions based on the global criterion, which measures both the total dissimilarity between the different groups as well as the total similarity within the groups. The computation of trickle-down includes mainly a covering operator, which covers the result of the trickle-up with the fragments of specific class. As one important computation in the trickle-down stage, the optimal method base on Back-propagation neural network is utilized to improve the performance of the model. The proposed approach is applied to several segmentation experiments of clustering conditions. The results demonstrate that the performance of the proposed approach overpasses those achieved by previous top-down or bottom-up schemes on figure-ground segmentation. In addition to its application in computer vision, the success of this approach suggests a plausibility method, which combines the forward and backward processes for solving the visual perceptual grouping problem.
机译:为了将物体准确地定位在场景中以进行进一步的视觉处理,提出了一种新颖的地物分割方法,该方法结合了by流和cut流处理的启发,将归一化切割方法(Ncut)和自顶向下方法相结合。在灵长类动物的视觉通路中。首先,作为the流阶段,Ncut方法基于全局准则将像素分为多个分区,该标准既测量不同组之间的总不相似度,又测量组内的总相似度。 le流的计算主要包括覆盖运算符,该覆盖运算符使用特定类的片段覆盖the流的结果。作为递归阶段的一项重要计算,利用了基于反向传播神经网络的最优方法来提高模型的性能。该方法适用于聚类条件的几种分割实验。结果表明,所提出的方法的性能超过了先前的自上而下或自下而上的图-地面分割方案所实现的性能。除了在计算机视觉中的应用外,这种方法的成功还提出了一种似真性方法,该方法结合了向前和向后的过程来解决视觉感知分组问题。

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