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Parameterizing Object Detectors in the Continuous Pose Space

机译:在连续姿势空间中对目标检测器进行参数化

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Object detection and pose estimation are interdependent problems in computer vision. Many past works decouple these problems, either by discretizing the continuous pose and training pose-specific object detectors, or by building pose estimators on top of detector outputs. In this paper, we propose a structured kernel machine approach to treat object detection and pose estimation jointly in a mutually benificial way. In our formulation, a unified, continuously parameterized, discriminative appearance model is learned over the entire pose space. We propose a cascaded discrete-continuous algorithm for efficient inference, and give effective online constraint generation strategies for learning our model using structural SVMs. On three standard benchmarks, our method performs better than, or on par with, state-of-the-art methods in the combined task of object detection and pose estimation.
机译:目标检测和姿势估计是计算机视觉中相互依赖的问题。过去的许多工作通过离散化连续姿势并训练特定于姿势的对象检测器,或通过在检测器输出的顶部构建姿势估计器,来消除这些问题。在本文中,我们提出了一种结构化的内核机器方法,以一种互惠互利的方式共同处理目标检测和姿态估计。在我们的公式中,在整个姿势空间上学习了一个统一的,连续参数化的,具有区别性的外观模型。我们提出了一种级联的离散连续算法进行有效推理,并给出了有效的在线约束生成策略,以使用结构化SVM学习我们的模型。在三个标准基准上,我们的方法在对象检测和姿态估计的组合任务中的性能优于或优于最新方法。

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