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Latent HyperNet: Exploring the Layers of Convolutional Neural Networks

机译:潜在的HyperNet:探索卷积神经网络的各个层

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Since Convolutional Neural Networks (ConvNets) are able to simultaneously learn features and classifiers to discriminate different categories of activities, recent works have employed ConvNets approaches to perform human activity recognition (HAR) based on wearable sensors, allowing the removal of expensive human work and expert knowledge. However, these approaches have their power of discrimination limited mainly by the large number of parameters that compose the network and the reduced number of samples available for training. Inspired by this, we propose an accurate and robust approach, referred to as Latent HyperNet (LHN). The LHN uses feature maps from early layers (hyper) and projects them, individually, onto a low dimensionality (latent) space. Then, these latent features are concatenated and presented to a classifier. To demonstrate the robustness and accuracy of the LHN, we evaluate it using four different network architectures in five publicly available HAR datasets based on wearable sensors, which vary in the sampling rate and number of activities. We experimentally demonstrate that the proposed LHN is able to capture rich information, improving the results regarding the original ConvNets. Furthermore, the method outperforms existing state-of-the-art methods, on average, by 5.1 percentage points.
机译:由于卷积神经网络(ConvNets)能够同时学习特征和分类器以区分不同类别的活动,因此最近的工作采用了ConvNets方法基于可穿戴式传感器执行人类活动识别(HAR),从而消除了昂贵的人类工作和专家知识。但是,这些方法的辨别能力主要受到构成网络的大量参数和可用于训练的样本数量减少的限制。受此启发,我们提出了一种准确而强大的方法,称为潜伏超网(LHN)。 LHN使用早期图层(超级)的特征贴图,并将其分别投影到低维(潜在)空间上。然后,将这些潜在特征连接起来并呈现给分类器。为了证明LHN的鲁棒性和准确性,我们在基于可穿戴传感器的五个可公开获得的HAR数据集中使用四种不同的网络体系结构对LHN进行了评估,这些传感器的采样率和活动数量有所不同。我们通过实验证明了所提出的LHN能够捕获丰富的信息,从而改善了有关原始ConvNets的结果。此外,该方法平均比现有的最新方法高出5.1个百分点。

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