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Shape recognition by bag of contour fragments with a learned pooling function

机译:通过袋状轮廓碎片进行形状识别并具有学习的合并功能

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Bag of Contour Fragments (BoCF), derived from the well-known Bag-of-Features (BoF), is an effective framework for shape representation. The feature pooling in this framework is a critical step, while either max pooling or average pooling is not a learnable process. In this paper, we aim at learning a pooling function which is adaptive to the input contour fragment features instead. Towards this end, we formulate our pooling function as a weighted sum of max pooling and average pooling, where the weight is expressed by an activation function of the input contour fragment features. To automatically learn this weight, the output of the pooling function is fed into a SVM classifier and they are trained jointly to minimize a shape classification loss. Experimental results on several standard shape datasets demonstrate the effectiveness of the proposed learned pooling function, which can achieve considerable improvements compared with BoCF.
机译:轮廓片段袋(BoCF)源自著名的特征袋(BoF),是一种有效的形状表示框架。此框架中的功能池是关键步骤,而最大池或平均池则不是一个可学习的过程。在本文中,我们旨在学习一种池化函数,该池化函数适合于输入轮廓片段特征。为此,我们将池化函数公式化为最大池化和平均池化的加权和,其中权重由输入轮廓片段特征的激活函数表示。为了自动学习此权重,将合并函数的输出输入到SVM分类器中,并对它们进行联合训练以最大程度地减少形状分类损失。在几个标准形状数据集上的实验结果证明了所提出的学习化合并函数的有效性,与BoCF相比,可以实现相当大的改进。

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