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Evolutionary Design of Convolutional Neural Networks for Human Activity Recognition in Sensor-Rich Environments

机译:传感器丰富环境中用于人类活动识别的卷积神经网络进化设计

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Human activity recognition is a challenging problem for context-aware systems and applications. It is gaining interest due to the ubiquity of different sensor sources, wearable smart objects, ambient sensors, etc. This task is usually approached as a supervised machine learning problem, where a label is to be predicted given some input data, such as the signals retrieved from different sensors. For tackling the human activity recognition problem in sensor network environments, in this paper we propose the use of deep learning (convolutional neural networks) to perform activity recognition using the publicly available OPPORTUNITY dataset. Instead of manually choosing a suitable topology, we will let an evolutionary algorithm design the optimal topology in order to maximize the classification F1 score. After that, we will also explore the performance of committees of the models resulting from the evolutionary process. Results analysis indicates that the proposed model was able to perform activity recognition within a heterogeneous sensor network environment, achieving very high accuracies when tested with new sensor data. Based on all conducted experiments, the proposed neuroevolutionary system has proved to be able to systematically find a classification model which is capable of outperforming previous results reported in the state-of-the-art, showing that this approach is useful and improves upon previously manually-designed architectures.
机译:人类活动识别对于上下文感知的系统和应用程序是一个具有挑战性的问题。由于存在各种不同的传感器源,可穿戴智能对象,环境传感器等,因此它引起了人们的兴趣。通常将此任务作为有监督的机器学习问题来解决,在该问题中,要给定一些输入数据(例如信号)来预测标签从不同的传感器检索。为了解决传感器网络环境中的人类活动识别问题,在本文中,我们提出使用深度学习(卷积神经网络)来使用可公开获得的机会数据集进行活动识别。为了让分类F1得分最大化,我们将让进化算法设计最佳拓扑,而不是手动选择合适的拓扑。之后,我们还将探讨由进化过程产生的模型委员会的绩效。结果分析表明,提出的模型能够在异构传感器网络环境中执行活动识别,并在使用新传感器数据进行测试时实现了很高的准确性。基于所有进行的实验,所提出的神经进化系统已被证明能够系统地找到分类模型,该模型能够胜过现有技术中报道的先前结果,表明该方法是有用的,并且在以前的手动方法上有所改进设计的架构。

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