N-best maximal decoders for part models

Dennis Park, Deva Ramanan
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引用次数: 126

Abstract

We describe a method for generating N-best configurations from part-based models, ensuring that they do not overlap according to some user-provided definition of overlap. We extend previous N-best algorithms from the speech community to incorporate non-maximal suppression cues, such that pixel-shifted copies of a single configuration are not returned. We use approximate algorithms that perform nearly identical to their exact counterparts, but are orders of magnitude faster. Our approach outperforms standard methods for generating multiple object configurations in an image. We use our method to generate multiple pose hypotheses for the problem of human pose estimation from video sequences. We present quantitative results that demonstrate that our framework significantly improves the accuracy of a state-of-the-art pose estimation algorithm.
零件模型的n -最佳最大解码器
我们描述了一种从基于零件的模型生成n个最佳配置的方法,根据用户提供的重叠定义,确保它们不重叠。我们从语音社区扩展了以前的N-best算法,以纳入非最大抑制线索,这样就不会返回单个配置的像素移位副本。我们使用近似算法,其执行效果与精确算法几乎相同,但速度要快几个数量级。我们的方法优于在图像中生成多个对象配置的标准方法。针对视频序列中人体姿态估计的问题,我们使用该方法生成了多个姿态假设。我们提出的定量结果表明,我们的框架显着提高了最先进的姿态估计算法的准确性。
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