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Binary Relevance Model for Activity Recognition in Home Environment using Ambient Sensors

机译:使用环境传感器的家庭环境中活动识别的二进制相关模型

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One of the most important applications of the smart home environment is health monitoring and assistance by analysing activities of daily living and here Human Activity Recognition (HAR) plays a major role. The HAR problem, basically a temporal classification problem has been modelled in the past with various methods such as Bayesian Networks, Hidden Markov Model, Conditional Random Field, etc. Here, we propose the Binary Relevance Method of the multi- label classification to tackle the multi-resident activity recognition problem on real world dataset. Through the results obtained by the evaluation metrics namely accuracy, precision and hamming loss, it can be inferred that the model not only computes competitive results to previous works but also signifies the importance of the baseline Binary Relevance method to solve multi-label problems.
机译:智能家居环境最重要的应用之一是通过分析日常生活活动来进行健康监控和帮助,而人类活动识别(HAR)在这里起着重要作用。过去,HAR问题(基本上是时间分类问题)已通过多种方法建模,例如贝叶斯网络,隐马尔可夫模型,条件随机场等。在此,我们提出了多标签分类的二进制相关方法来解决真实数据集上的多居民活动识别问题。通过评估指标的准确性,精确度和汉明损失的评估结果,可以推断出该模型不仅可以计算出与以前的工作相比的竞争结果,而且还表明了基准二元相关度法对于解决多标签问题的重要性。

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