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A novel approach to creating artificial training and test data for an HMM based posture recognition system

机译:为基于HMM的姿势识别系统创建人工训练和测试数据的新颖方法

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Demographic change in the next few years will lead to a pronounced disparity in generation distribution. Hence there is a need to develop intelligent systems to support and maintain the autonomy of the elderly at home. A high priority in this case assumes the preparation-free acquisition of vital signs and patient parameters in long-term monitoring systems to detect early changes or deterioration in health. It is thus possible to initiate treatment of a disease at an early stage. One way to carry out a long-term monitoring of vital signs at home is based on the functionalization of furniture, for example, through the use of suitable sensors in chairs [1] and beds [2, 3] to derive various patient parameters. In addition to monitoring basic parameters, e.g. the heart rate and respiratory activity, it is also possible to access information regarding motion or sleep patterns by means of pattern recognition systems. In addition to the challenge of building a suitable pattern recognition system there is a need for corresponding training data to create reference patterns. Typically, the necessary sensor data for the reference pattern training is generated in time-consuming sessions with real people. In this paper, a novel approach is presented, which provides a multi-stage model to create artificial training or test data. The model can be used as a supporting tool in the development of posture recognition systems and to create artificial data for training and testing.
机译:未来几年的人口变化将导致世代分配的明显差距。因此,需要开发智能系统以支持和维持老年人在家中的自主权。在这种情况下,高度优先考虑的是假设在长期监测系统中无需准备就可以获取生命体征和患者参数,以发现健康的早期变化或恶化。因此有可能在早期开始疾病的治疗。在家中对生命体征进行长期监视的一种方法是基于家具的功能性,例如,通过在椅子[1]和床[2,3]中使用合适的传感器来导出各种患者参数。除了监控基本参数外,例如在心率和呼吸活动方面,还可以通过模式识别系统访问有关运动或睡眠模式的信息。除了构建合适的模式识别系统的挑战之外,还需要相应的训练数据来创建参考模式。通常,用于参考模式训练的必要传感器数据是在与真实人的耗时会话中生成的。在本文中,提出了一种新颖的方法,该方法提供了一个多阶段的模型来创建人工训练或测试数据。该模型可以用作开发姿势识别系统的支持工具,并创建用于训练和测试的人工数据。

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