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Recognizing flu-like symptoms from videos

机译:从视频中识别流感样症状

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Background Vision-based surveillance and monitoring is a potential alternative for early detection of respiratory disease outbreaks in urban areas complementing molecular diagnostics and hospital and doctor visit-based alert systems. Visible actions representing typical flu-like symptoms include sneeze and cough that are associated with changing patterns of hand to head distances, among others. The technical difficulties lie in the high complexity and large variation of those actions as well as numerous similar background actions such as scratching head, cell phone use, eating, drinking and so on. Results In this paper, we make a first attempt at the challenging problem of recognizing flu-like symptoms from videos. Since there was no related dataset available, we created a new public health dataset for action recognition that includes two major flu-like symptom related actions (sneeze and cough) and a number of background actions. We also developed a suitable novel algorithm by introducing two types of Action Matching Kernels, where both types aim to integrate two aspects of local features, namely the space-time layout and the Bag-of-Words representations. In particular, we show that the Pyramid Match Kernel and Spatial Pyramid Matching are both special cases of our proposed kernels. Besides experimenting on standard testbed, the proposed algorithm is evaluated also on the new sneeze and cough set. Empirically, we observe that our approach achieves competitive performance compared to the state-of-the-arts, while recognition on the new public health dataset is shown to be a non-trivial task even with simple single person unobstructed view. Conclusions Our sneeze and cough video dataset and newly developed action recognition algorithm is the first of its kind and aims to kick-start the field of action recognition of flu-like symptoms from videos. It will be challenging but necessary in future developments to consider more complex real-life scenario of detecting these actions simultaneously from multiple persons in possibly crowded environments.
机译:背景技术基于视觉的监视和监视是在城市地区早期发现呼吸道疾病暴发的潜在替代方法,可补充分子诊断以及基于医院和医生就诊的警报系统。代表典型流感样症状的可见动作包括打喷嚏和咳嗽,这些与手掌到头部距离的变化模式有关。技术上的困难在于这些动作的高度复杂性和巨大差异以及许多类似的背景动作,例如抓头,手机使用,进食,喝水等等。结果在本文中,我们首次尝试了从视频中识别流感样症状这一具有挑战性的问题。由于没有可用的相关数据集,我们为动作识别创建了一个新的公共卫生数据集,其中包括两个与流感样症状相关的主要行为(打喷嚏和咳嗽)和许多背景行为。我们还通过引入两种类型的动作匹配核来开发了一种合适的新颖算法,其中两种类型都旨在整合局部特征的两个方面,即时空布局和词袋表示。特别是,我们表明金字塔匹配内核和空间金字塔匹配都是我们提出的内核的特殊情况。除了在标准试验台上进行实验之外,还对新的打喷嚏和咳嗽装置进行了评估。从经验上讲,我们观察到,与最新技术相比,我们的方法具有竞争优势,而即使在简单的单人视角下,在新的公共卫生数据集上的识别也被证明是一项艰巨的任务。结论我们的打喷嚏和咳嗽视频数据集以及新开发的动作识别算法是同类产品中的第一个,旨在启动视频中流感样症状的动作识别领域。考虑到可能在拥挤的环境中同时从多个人同时检测这些动作的更复杂的现实场景中,这将是具有挑战性的,但在未来的发展中很有必要。

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