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Algorithms for the Detection of Chewing Behavior in Dietary Monitoring Applications

机译:饮食监测应用中咀嚼行为的检测算法

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The detection of food consumption is key to the implementation of successful behavior modification in support of dietary monitoring and therapy, for example, during the course of controlling obesity, diabetes, or cardiovascular disease. Since the vast majority of humans consume food via mastication (chewing), we have designed an algorithm that automatically detects chewing behaviors in surveillance video of a person eating. Our algorithm first detects the mouth region, then computes the spatiotemporal frequency spectrum of a small perioral region (including the mouth). Spectral data are analyzed to determine the presence of periodic motion that characterizes chewing. A classifier is then applied to discriminate different types of chewing behaviors.rnOur algorithm was tested on seven volunteers, whose behaviors included chewing with mouth open, chewing with mouth closed, talking, static face presentation (control case), and moving face presentation. Early test results show that the chewing behaviors induce a temporal frequency peak at 0.5Hz to 2.5Hz, which is readily detected using a distance-based classifier. Computational cost is analyzed for implementation on embedded processing nodes, for example, in a healthcare sensor network. Complexity analysis emphasizes the relationship between the work and space estimates of the algorithm, and its estimated error. It is shown that chewing detection is possible within a computationally efficient, accurate, and subject-independent framework.
机译:食物消耗的检测是成功实施行为改变以支持饮食监测和治疗的关键,例如在控制肥胖,糖尿病或心血管疾病的过程中。由于绝大多数人是通过咀嚼(咀嚼)来食用食物的,因此我们设计了一种算法,该算法可自动检测吃饭的人的监视视频中的咀嚼行为。我们的算法首先检测嘴巴区域,然后计算小口周区域(包括嘴巴)的时空频谱。分析频谱数据,以确定是否存在表征咀嚼的周期性运动。然后使用分类器来区分不同类型的咀嚼行为。我们的算法在7名志愿者身上进行了测试,他们的行为包括张开咀嚼,张开咀嚼,说话,静态面部表情(控制案例)和动态面部表情。早期的测试结果表明,咀嚼行为会在0.5Hz至2.5Hz处产生一个时域频率峰值,可以使用基于距离的分类器轻松检测到。分析计算成本以便在嵌入式处理节点上实施,例如在医疗保健传感器网络中。复杂度分析强调了算法的工作量和空间估计及其估计误差之间的关系。结果表明,在计算有效,准确且与受试者无关的框架内进行咀嚼检测是可能的。

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