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Randomized decision bush: Combining global shape parameters and local scalable descriptors for human body parts recognition

机译:随机决策丛:结合全局形状参数和局部可扩展描述符以识别人体部位

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This paper presents a novel method which combines global shape parameters and scalable local descriptors for accurate body parts recognition from a single depth image in real-time. Human poses are of extremely large variation in aspects of visual shapes, because human can take poses from daily activities to gymnastic actions. In order to cover wide-range of the human poses, the proposed algorithm employs a unified structure which combines pose clustering and body parts classification. We name the proposed method Randomized Decision Bush (RDB). Specifically, global shape parameters which can discriminate coarse level shapes are utilized for pose clustering while scalable local shape descriptors are employed for accurate classification. RDB splits the various human poses into multiple clusters which contain similar shapes of the poses. As a result, it provides robust clustering which enables fine level classification within the cluster. The experimental results show improvements on recognizing body parts due to the pose clustering and classification with scalable local descriptors. Additionally, we significantly reduce the complexity of training a large number of human shapes.
机译:本文提出了一种新颖的方法,该方法结合了全局形状参数和可伸缩的局部描述符,可以实时从单个深度图像中准确识别身体部位。人的姿势在视觉形状方面有极大的变化,因为人可以从日常活动到体操动作采取姿势。为了覆盖广泛的人体姿势,该算法采用了一种统一的结构,该结构结合了姿势聚类和身体部位分类。我们将提出的方法命名为“随机决策布什”(RDB)。具体地,可以区分粗略形状的全局形状参数被用于姿势聚类,而可缩放局部形状描述符被用于精确分类。 RDB将各种人体姿势分为多个群集,这些群集包含相似形状的姿势。结果,它提供了强大的集群功能,可以在集群内进行精细级别的分类。实验结果表明,由于姿势聚类和可扩展的局部描述符分类,在识别身体部位方面取得了进步。此外,我们大大降低了训练大量人体形状的复杂性。

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