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Part-Based Feature Synthesis for Human Detection

机译:基于零件的人体检测特征综合

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We introduce a new approach for learning part-based object detection through feature synthesis. Our method consists of an iterative process of feature generation and pruning. A feature generation procedure is presented in which basic part-based features are developed into a feature hierarchy using operators for part localization, part refining and part combination. Feature pruning is done using a new feature selection algorithm for linear SVM, termed Predictive Feature Selection (PFS), which is governed by weight prediction. The algorithm makes it possible to choose from O(10~6) features in an efficient but accurate manner. We analyze the validity and behavior of PFS and empirically demonstrate its speed and accuracy advantages over relevant competitors. We present an empirical evaluation of our method on three human detection datasets including the current de-facto benchmarks (the INRIA and Caltech pedestrian datasets) and a new challenging dataset of children images in difficult poses. The evaluation suggests that our approach is on a par with the best current methods and advances the state-of-the-art on the Caltech pedestrian training dataset.
机译:我们介绍了一种通过特征综合学习基于零件的对象检测的新方法。我们的方法包括要素生成和修剪的迭代过程。提出了一种特征生成过程,其中使用运算符将​​基于零件的基本特征开发为特征层次,以进行零件定位,零件精炼和零件组合。使用针对线性SVM的新特征选择算法(称为预测特征选择(PFS))进行特征修剪,该算法由权重预测控制。该算法可以高效,准确地从O(10〜6)个特征中进行选择。我们分析了PFS的有效性和行为,并通过经验证明了其在速度和准确性方面优于相关竞争对手的优势。我们对三个人类检测数据集(包括当前的实际基准(INRIA和Caltech行人数据集)和一个新的具有挑战性姿势的儿童图像的具有挑战性的数据集)进行了实证评估。评估表明,我们的方法可与当前最好的方法相提并论,并在加州理工学院行人训练数据集上取得了最新进展。

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