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Hough Forests for Object Detection, Tracking, and Action Recognition

机译:用于对象检测,跟踪和动作识别的霍夫森林

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The paper introduces Hough forests, which are random forests adapted to perform a generalized Hough transform in an efficient way. Compared to previous Hough-based systems such as implicit shape models, Hough forests improve the performance of the generalized Hough transform for object detection on a categorical level. At the same time, their flexibility permits extensions of the Hough transform to new domains such as object tracking and action recognition. Hough forests can be regarded as task-adapted codebooks of local appearance that allow fast supervised training and fast matching at test time. They achieve high detection accuracy since the entries of such codebooks are optimized to cast Hough votes with small variance and since their efficiency permits dense sampling of local image patches or video cuboids during detection. The efficacy of Hough forests for a set of computer vision tasks is validated through experiments on a large set of publicly available benchmark data sets and comparisons with the state-of-the-art.
机译:本文介绍了霍夫森林,霍夫森林是适用于以有效方式执行广义霍夫变换的随机森林。与以前的基于Hough的系统(例如隐式形状模型)相比,Hough森林在分类级别上提高了用于对象检测的广义Hough变换的性能。同时,它们的灵活性允许将Hough变换扩展到新的领域,例如对象跟踪和动作识别。霍夫森林可以看作是适应任务的本地化代码簿,可以在培训时进行快速有监督的训练和快速匹配。它们实现了很高的检测精度,因为已优化了此类密码本的条目,以便以很小的方差投下霍夫票,并且由于其效率允许在检测期间对本地图像块或视频立方体进行密集采样。霍夫森林在一组计算机视觉任务中的功效通过对大量可公开获得的基准数据集进行的实验以及与最新技术的比较而得到验证。

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