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In-home hierarchical posture classification with a time-of-flight 3D sensor

机译:带有飞行时间3D传感器的室内分层姿势分类

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摘要

A non-invasive technique for posture classification suitable to be used in several in-home scenarios is proposed and preliminary validation results are presented. 3D point cloud sequences were acquired using a single time-of-flight sensor working in a privacy preserving modality and they were processed with a low power embedded PC. In order to satisfy different application requirements (e.g. covered distance range, processing speed and discrimination capabilities), a twofold discrimination approach was investigated in which features were hierarchically arranged from coarse to fine by exploiting both topological and volumetric representations. The topological representation encoded the intrinsic topology of the body's shape using a skeleton-based structure, thus guaranteeing invariance to scale, rotations and postural changes and achieving a high level of detail with a moderate computational cost. On the other hand, using the volumetric representation features were described in terms of 3D cylindrical histograms working within a wider range of distances in a faster way and also guaranteeing good invariance properties. The discrimination capabilities were evaluated in four different real-home scenarios related with the fields of ambient assisted living and homecare, namely "dangerous event detection", "anomalous behaviour detection", "activities recognition" and "natural human-ambient interaction". For each mentioned scenario, the discrimination capabilities were evaluated in terms of invariance to viewpoint changes, representation capabilities and classification performance, achieving promising results. The two feature representation approaches exhibited complementary characteristics showing high reliability with classification rates greater than 97%.
机译:提出了一种适用于几种家庭场景的非侵入性姿势分类技术,并提出了初步的验证结果。使用工作在隐私保护模式下的单个飞行时间传感器获取3D点云序列,并使用低功耗嵌入式PC对其进行处理。为了满足不同的应用需求(例如,覆盖范围,处理速度和区分能力),研究了一种双重区分方法,其中通过利用拓扑和体积表示将特征从粗糙到精细进行分层排列。拓扑表示使用基于骨骼的结构对人体形状的固有拓扑进行编码,从而确保比例,旋转和姿势变化的不变性,并以适度的计算成本实现高细节水平。另一方面,使用体积表示特征是根据3D圆柱直方图来描述的,它们以较快的方式在更宽的距离范围内工作,并且还保证了良好的不变性。在与环境辅助生活和家庭护理相关的四个不同的真实家庭场景中,分别对“歧视能力”进行了评估,即“危险事件检测”,“异常行为检测”,“活动识别”和“自然人与环境的互动”。对于每个提到的场景,根据视点变化的不变性,表示能力和分类性能对判别能力进行了评估,取得了可喜的结果。两种特征表示方法均表现出互补性,这些特征显示出较高的可靠性,分类率大于97%。

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