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A survey on joint object detection and pose estimation using monocular vision

机译:单眼视觉的联合目标检测与姿态估计研究

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In this survey we present a complete landscape of joint object detection and pose estimation methods that use monocular vision. Descriptions of traditional approaches that involve descriptors or models and various estimation methods have been provided. These descriptors or models include chordiograms, shape-aware deformable parts model, bag of boundaries, distance transform templates, natural 3D markers and facet features whereas the estimation methods include iterative clustering estimation, probabilistic networks and iterative genetic matching. Hybrid approaches that use handcrafted feature extraction followed by estimation by deep learning methods have been outlined. We have investigated and compared, wherever possible, pure deep learning based approaches (single stage and multi stage) for this problem. Comprehensive details of the various accuracy measures and metrics have been illustrated. For the purpose of giving a clear overview, the characteristics of relevant datasets are discussed. The trends that prevailed from the infancy of this problem until now have also been highlighted.
机译:在本次调查中,我们介绍了使用单眼视觉的联合对象检测和姿势估计方法的完整概况。已经提供了涉及描述符或模型的传统方法的描述以及各种估计方法。这些描述符或模型包括心电图,可感知形状的可变形零件模型,边界包,距离变换模板,自然3D标记和构面特征,而估计方法包括迭代聚类估计,概率网络和迭代遗传匹配。概述了使用手工特征提取然后通过深度学习方法进行估计的混合方法。我们已尽可能地研究和比较了基于深度学习的方法(单阶段和多阶段)。已经说明了各种准确性度量和度量的全面详细信息。为了给出清晰的概述,讨论了相关数据集的特征。从这个问题的婴儿期到现在流行的趋势也已被强调。

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