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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Hand action detection from ego-centric depth sequences with error-correcting Hough transform
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Hand action detection from ego-centric depth sequences with error-correcting Hough transform

机译:从自我为中心的深度序列检测与纠错Hough变换的动作检测

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摘要

Detecting hand actions from ego-centric depth sequences is a practically challenging problem, owing mostly to the complex and dexterous nature of hand articulations as well as non-stationary camera motion. We address this problem via a Hough transform based approach coupled with a discriminatively learned error-correcting component to tackle the well known issue of incorrect votes from the Hough transform. In this framework, local parts vote collectively for the start & end positions of each action over time. We also construct an in-house annotated dataset. Our system is empirically evaluated on this real-life dataset as well as a synthetic dataset, where it is shown to deliver favorable results in real-time (around 112 frame-per-second). To facilitate reproduction, the new dataset and our implementation are also provided online. (C) 2017 Elsevier Ltd. All rights reserved.
机译:从以自我为中心的深度序列检测手动是一个实际上具有挑战性的问题,主要是手动铰接的复杂和灵巧性以及非平稳相机运动。 我们通过基于Hough变换的方法解决了这个问题,耦合了一个辨别性地学习的错误纠正组件,以解决来自Hough变换的众所周知的错误投票问题。 在本框架中,本地部分会集中投票,以便随着时间的推移集体投票给每个动作的开始和结束位置。 我们还构建内部注释数据集。 我们的系统在这个现实生活数据集以及合成数据集上进行了经验评估,其中显示了实时提供有利的结果(每秒大约112帧)。 为了便于再生产,新数据集和我们的实施也在线提供。 (c)2017 Elsevier Ltd.保留所有权利。

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