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Multi-view action recognition using local similarity random forests and sensor fusion

机译:使用局部相似性随机森林和传感器融合的多视图动作识别

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摘要

This paper addresses the multi-view action recognition problem with a local segment similarity voting scheme, upon which we build a novel multi-sensor fusion method. The recently proposed random forests classifier is used to map the local segment features to their corresponding prediction histograms. We compare the results of our approach with those of the baseline Bag-of-Words (BoW) and the Naieve-Bayes Nearest Neighbor (NBNN) methods on the multi-view IXMAS dataset. Additionally, comparisons between our multi-camera fusion strategy and the normally used early feature concatenating strategy are also carried out using different camera views and different segment scales. It is proven that the proposed sensor fusion technique, coupled with the random forests classifier, is effective for multiple view human action recognition.
机译:本文利用局部相似度投票方案解决了多视角动作识别问题,并在此基础上构建了一种新颖的多传感器融合方法。最近提出的随机森林分类器用于将局部片段特征映射到其对应的预测直方图。我们在多视图IXMAS数据集上将我们的方法的结果与基准词袋(BoW)和Naieve-Bayes最近邻(NBNN)方法的结果进行比较。此外,还使用不同的摄像机视图和不同的分段比例对我们的多摄像机融合策略与通常使用的早期特征级联策略进行了比较。事实证明,提出的传感器融合技术与随机森林分类器相结合,对于多视角人类动作识别是有效的。

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