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Hierarchical Hidden Markov Model in detecting activities of daily living in wearable videos for studies of dementia

机译:分层隐马尔可夫模型在可穿戴视频中检测日常生活活动以研究痴呆

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摘要

This paper presents a method for indexing activities of daily living in videos acquired from wearable cameras. It addresses the problematic of analyzing the complex multimedia data acquired from wearable devices, which has been recently a growing concern due to the increasing amount of this kind of multimedia data. In the context of dementia diagnosis by doctors, patient activities are recorded in the environment of their home using a lightweight wearable device, to be later visualized by the medical practitioners. The recording mode poses great challenges since the video data consists in a single sequence shot where strong motion and sharp lighting changes often appear. Because of the length of the recordings, tools for an efficient navigation in terms of activities of interest are crucial. Our work introduces a video structuring approach that combines automatic motion based segmentation of the video and activity recognition by a hierarchical two-level Hidden Markov Model. We define a multi-modal description space over visual and audio features, including mid-level features such as motion, location, speech and noise detections. We show their complementarities globally as well as for specific activities. Experiments on real data obtained from the recording of several patients at home show the difficulty of the task and the promising results of the proposed approach.
机译:本文提出了一种从可穿戴式摄像机获取的视频中索引日常生活活动的方法。它解决了分析从可穿戴设备获取的复杂多媒体数据的问题,由于越来越多的此类多媒体数据,近来引起了越来越多的关注。在医生诊断痴呆的情况下,使用轻便的可穿戴设备将患者的活动记录在他们家中的环境中,以供医生随后查看。录制模式提出了巨大的挑战,因为视频数据是一个连续拍摄的镜头,其中经常出现强烈的运动和强烈的照明变化。由于录音的时间长,对于感兴趣的活动进行有效导航的工具至关重要。我们的工作介绍了一种视频结构化方法,该方法通过分层的两级隐式马尔可夫模型将基于视频的自动运动分割和活动识别相结合。我们在视觉和音频功能(包括运动,位置,语音和噪声检测等中级功能)上定义了多模式描述空间。我们在全球以及特定活动中展示它们的互补性。从在家中记录多名患者获得的真实数据进行的实验表明,该任务很困难,而且该方法的结果令人鼓舞。

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