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Daily Human Activity Recognition Using Depth Silhouettes and 9t Transformation for Smart Home

机译:使用深度剪影和9t转换的智能家居日常人类活动识别

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We present a human activity recognition (HAR) system for smart homes utilizing depth silhouettes and 9? transformation. Previously, 9? transformation has been applied only on binary silhouettes which provide only the shape information of human activities. In this work, we utilize 9i transformation on depth silhouettes such that the depth information of human body parts can be used in HAR in addition to the shape information. In 9{ transformation, 2D directional projection maps are computed through Radon transform, and then ID feature profiles, that are translation and scaling invariant, are computed through 9? transform. Then, we apply Principle Component Analysis and Linear Discriminant Analysis to extract prominent activity features. Finally, Hidden Markov Models are used to train and recognize daily home activities. Our results show the mean recognition rate of 96.55% over ten typical home activities whereas the same system utilizing binary silhouettes achieves only 85.75%. Our system should be useful as a smart HAR system for smart homes.
机译:我们提出了一种利用深度轮廓和9?的智能家居人类活动识别(HAR)系统。转型。以前是9吗?变换仅应用于仅提供人类活动形状信息的二进制轮廓。在这项工作中,我们在深度轮廓上利用了9i变换,因此除了形状信息之外,人体零件的深度信息还可以用于HAR中。在9 {变换中,通过Radon变换计算2D定向投影图,然后通过9?计算出平移和缩放不变的ID特征轮廓。转变。然后,我们应用主成分分析和线性判别分析来提取突出的活动特征。最后,隐马尔可夫模型用于训练和识别日常的家庭活动。我们的结果显示,在十种典型家庭活动中的平均识别率为96.55%,而使用二进制轮廓的同一系统仅达到85.75%。我们的系统作为用于智能家居的智能HAR系统应该很有用。

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