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Balanced Mixture of Deformable Part Models With Automatic Part Configurations

机译:具有自动零件配置的可变形零件模型的平衡混合

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摘要

This paper presents a method to improve the traditional mixture of deformable part models (MDPM) method from the learning perspective. First, an object part configuration learning algorithm based on group sparsity constraint is introduced to automatically discover the object part number, size, and location. The algorithm imposes two additional regularization terms in addition to the standard hinge loss function. The first term focuses on automatic part selection and the second term focuses on automatic part placement. Second, this paper introduces an improved MDPM training framework. The framework applies a learned transformation to normalize the prediction score from each individual deformable part model (DPM) into a pseudo probability such that the partition of the entire object appearance feature space becomes less sensitive to the prior distributions of different DPMs. Finally, the two proposed improvements are combined and formulated under the expectation-maximization framework. We evaluate our method mainly using the PASCAL VOC2007 and VOC2010 detection benchmarks and show that the proposed learning algorithms could increase the detection mean AP score by 2.4% and 0.9%, respectively, on these two data sets when using the proposed part selection method and the training algorithm. We also present further in-depth analysis of the proposed algorithm in the experiments.
机译:本文从学习的角度提出了一种改进传统的可变形零件模型混合方法(MDPM)的方法。首先,引入了基于组稀疏约束的对象部件配置学习算法,以自动发现对象部件的数量,大小和位置。该算法除标准铰链损失函数外还施加了两个附加的正则项。第一项着重于自动零件选择,第二项着重于自动零件放置。其次,本文介绍了一种改进的MDPM培训框架。框架应用学习的变换将来自每个单独的可变形零件模型(DPM)的预测分数标准化为伪概率,以使整个对象外观特征空间的分区对不同DPM的先前分布变得不太敏感。最后,在预期最大化框架下将两个拟议的改进组合在一起并制定出来。我们主要使用PASCAL VOC2007和VOC2010检测基准对我们的方法进行了评估,结果表明,当使用建议的零件选择方法和方法时,所提出的学习算法可以在这两个数据集上分别将检测平均AP分数提高2.4%和0.9%。训练算法。我们还在实验中对提出的算法进行了进一步的深入分析。

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