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A Deconvolutional Bottom-up Deep Network for multi-person pose estimation

机译:用于多人姿态估计的解压力自下而上的深网络

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Due to the trade off between model complexity and estimation accuracy, current human pose estimators either are of low accuracy or requires long running time. Such dilemma is especially severe in real time multi-person pose estimation. To address this issue, we design a deep network of reduced parameter size and high estimation accuracy, via introducing deconvolution layers instead of widely used fully-connected configuration. Specifically, our model consists of two successive parts: Detection network and matching network. The former outputs keypoint heatmap and person locations, and then the latter produces the final pose estimation using multiple deconvolutional layers. Benefiting from the simple structure and explicit utilization of previously neglected spatial structure in heatmap, the matching network is of specially high efficiency and at high precision. Experiments on the challenging COCO dataset demonstrate our method can almost cut off the running parameters of matching network, while achieving higher accuracy than existing methods.
机译:由于模型复杂性和估计准确度之间的折衷,当前人类姿势估计值均为低精度或需要长时间的运行时间。这种困境在实时多人姿势估计中特别严重。为了解决这个问题,我们通过引入Deconvolution层而不是广泛使用的完全连接配置,设计了减少参数大小和高估计精度的深度网络。具体来说,我们的模型包括两个连续部分:检测网络和匹配网络。前者输出Keypoint Heatmap和人的位置,然后后者使用多个碎屑层产生最终的姿势估计。受益于在Heatmap中先前被忽略的空间结构的简单结构和明确利用,匹配网络具有特殊高效率和高精度。在挑战的Coco DataSet上的实验证明了我们的方法几乎可以切断匹配网络的运行参数,同时实现比现有方法更高的准确性。

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