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BIDIRECTIONAL LSTM RECURRENT NEURAL NETWORK PLUS HIDDEN MARKOV MODEL FOR WEARABLE SENSOR BASED DYNAMIC STATE ESTIMATION

机译:基于可穿戴传感器动态状态估计的双向LSTM递归神经网络加隐马尔可夫模型

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Behavior of animals living in the wild is often studied using visual observations made by trained experts. However, these observations tend to be used to classify behavior during discrete time periods, and become more difficult when used to monitor multiple individuals for days or weeks. In this work we present automatic tools to enable efficient behavior and dynamic state estimation/classification from data collected with animal borne bio-logging tags, without the need for statistical feature engineering. A combined framework of an LSTM (Long Short-Term Memory) network and HMM (Hidden Markov Model) was developed to exploit sequential temporal information in raw motion data at two levels: within and between windows. Taking a moving window data segmentation approach, LSTM estimates the dynamic state corresponding to each window by parsing the contiguous raw data points within the window. HMM then links all of the individual window estimations and further improves the estimation. A case study with bottlenose dolphins was conducted to demonstrate the approach. The combined LSTM-HMM method achieved a 6% improvement over conventional methods such as K-Nearest Neighbor and Support Vector Machine, pushing the accuracy above 90%. In addition to performance improvements, the proposed method requires a similar amount of training data to traditional machine learning methods, making the method easily adaptable to new tasks.
机译:通常使用训练有素的专家进行的视觉观察来研究野外动物的行为。但是,这些观察结果往往用于对离散时间段内的行为进行分类,并且在用于监视数天或数周的多个人时变得更加困难。在这项工作中,我们提供了自动工具,可通过动物传播的生物记录标签收集的数据进行有效的行为和动态状态估计/分类,而无需进行统计特征工程。开发了LSTM(长期短期记忆)网络和HMM(隐藏马尔可夫模型)的组合框架,以利用原始运动数据在两个级别(窗口内和窗口之间)的顺序时间信息。采用移动窗口数据分割方法,LSTM通过解析窗口内的连续原始数据点来估计与每个窗口相对应的动态状态。然后,HMM链接所有单个窗口估计,并进一步改进估计。用宽吻海豚进行了案例研究,以证明该方法。 LSTM-HMM组合方法比传统方法(例如K最近邻和支持向量机)提高了6%,将准确性提高了90%以上。除了性能改进之外,所提出的方法还需要与传统机器学习方法相似数量的训练数据,从而使该方法易于适应新任务。

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