利用像素和体素特征进行剪影分类,以改善动态环境中老年人的监测

Erik E. Stone, M. Skubic
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引用次数: 19

摘要

我们提出了一种在校准的多视图环境中使用来自像素(图像)和体素(体积)空间的特征来改进人体分割结果的方法。这项工作的主要重点是开发一种低成本,基于视觉的系统,用于家中老年人的被动活动监测,以捕捉疾病和功能衰退的早期迹象,并使老年人能够独立生活。剪影被提取出来以解决隐私问题。具体的嵌入式评估目标包括日常步态、跌倒风险、整体活动以及跌倒检测。为了实现这些目标,需要从捕获的视频数据中准确,稳健地分割人类受试者(剪影提取)。我们提出了一种简单的技术,利用从多个校准相机的背景减去结果(剪影)中获得的特征,以及由这些多个剪影在体空间中相交形成的3D体素对象,以改善动态环境中的人体分割结果;移动的物体、非人类的物体和光线的变化常常使这项任务复杂化。该技术在三个数据序列上进行了定性评估,其中两个数据序列是在老年人独立生活设施中捕获的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Silhouette classification using pixel and voxel features for improved elder monitoring in dynamic environments
We present a method for improving human segmentation results in calibrated, multi-view environments using features derived from both pixel (image) and voxel (volume) space. The main focus of this work is to develop a low-cost, vision-based system for passive activity monitoring of older adults in the home, to capture early signs of illness and functional decline and allow seniors to live independently. Silhouettes are extracted to address privacy concerns. Specific embedded assessment goals include daily gait, fall risk, and overall activity, as well as fall detection. To achieve these goals, accurate, robust segmentation of human subjects (silhouette extraction) from captured video data is required. We present a simple technique that makes use of features acquired from background subtraction results (silhouettes) of multiple calibrated cameras, along with the 3D voxel object formed from the intersection of those multiple silhouettes in a volume space to improve human segmentation results in dynamic environments; moving objects, non-human objects, and lighting changes often complicate this task. The technique is qualitatively evaluated on three data sequences, two of which were captured in an independent living facility for older adults.
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