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Object detection algorithm based on deformable part models

机译:基于变形零件模型的目标检测算法

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The paper proposes an object detection algorithm based on the deformable part models, and integrates the idea of global and local information to improve the accuracy and robustness of target detection. Firstly, we train the pyramid HOG feature of the sample images and get the feature representation containing the root model, component model and the corresponding deformable part models, then use the HOG features to train the classifier LSVM. Finally, we use the algorithm of dynamic programming combined distance transformation to section out the region on the detected images that matches the deformable part model, thus achieve the location of our interested target. The experimental analysis indicates that the proposed method can solve the problem of localization when the targets are blocked or interfered in the complex environment.
机译:提出了一种基于可变形零件模型的目标检测算法,并结合了全局信息和局部信息的思想,以提高目标检测的准确性和鲁棒性。首先,我们训练样本图像的金字塔HOG特征,并得到包含根模型,组件模型和相应的可变形零件模型的特征表示,然后使用HOG特征来训练分类器LSVM。最后,我们使用动态规划结合距离变换的算法在检测到的图像上切出与可变形零件模型匹配的区域,从而实现我们感兴趣目标的定位。实验分析表明,该方法可以解决复杂环境中目标被阻挡或干扰时的定位问题。

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