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Adaptation of Models for Food Intake Sound Recognition Using Maximum a Posteriori Estimation Algorithm

机译:基于最大后验估计算法的食品摄入声音识别模型的自适应

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Obesity and overweight are big healthcare challenges in the world''s population. Automatic food intake recognition algorithms based on analysis of food intake sounds offer the potential of being a useful tool for simplifying data logging of consumed food. High inter-individual differences of the users'' food intake sounds decrease the classification accuracy achieved with a user-unspecific algorithm. To overcome this problem, the Maximum a Posteriori (MAP) estimation is implemented and tested on one user consuming eight types of food. The dependency of the classification enhancement from the size of the adaptation set is investigated. Overall recognition accuracy can be increased from 48 % to around 79 % using records of 10 intake cycles for every food type of one subject. An increase by 7.5 % can be shown for a second subject. This shows the usability of the MAP adaptation algorithm at food intake sound classification tasks. The algorithm provides a suitable way for adapting models to a user, thereby, enhancing the performance of food intake classification.
机译:肥胖和超重是世界人口面临的重大医疗挑战。基于食物摄入声音分析的自动食物摄入识别算法提供了成为简化食用食物数据记录的有用工具的潜力。用户的食物摄取声音之间存在很大的个体差异,从而降低了使用非特定用户算法实现的分类精度。为了克服此问题,对食用八种食物的一位用户实施并测试了最大后验(MAP)估计。研究了分类增强对适应集大小的依赖性。使用一个对象的每种食物类型的10个摄入周期的记录,总体识别准确度可以从48%提高到79%左右。对于第二个主题,可以显示增加了7.5%。这表明MAP自适应算法在食物摄入声音分类任务中的可用性。该算法提供了用于使模型适应用户的合适方式,从而增强了食物摄入分类的性能。

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