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MobileDA: Toward Edge-Domain Adaptation

机译:Mobileda:走向边缘域适应

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摘要

Deep neural networks (DNNs) have made significant advances in computer vision and sensor-based smart sensing. DNNs achieve prominent results based on standard data sets and powerful servers, whereas, in real applications with domain-shift data and resource-constrained environments such as Internet-of-Things (IoT) devices in the edge computing, DNNs are likely to have degraded performance in terms of accuracy and efficiency. To this end, we develop the MobileDA framework that learns transferable features while keeping the simple structure of the deep model. Our method allows a novel teacher network trained in the server to distill the knowledge for a student network running in the edge device, which is achieved by a cross-domain distillation. Leveraging unlabeled data in the new environment, our student model amends the feature learning to be domain invariant, then being our objective model running in the edge device. Our approach is evaluated on a challenging IoT-based WiFi gesture recognition scenario, and three classic visual adaptation benchmarks. The empirical studies corroborate the effectiveness of distillation for domain transfer, and the overall results show that our model achieves state-of-the-art performance merely using a simple network.
机译:深度神经网络(DNN)在计算机视觉和基于传感器的智能感测方面取得了重大进展。 DNN基于标准数据集和强大的服务器实现突出结果,而在具有域移位数据和资源受限环境中的实际应用中,则在边缘计算中的互联网(IoT)设备,DNN可能会降级在准确性和效率方面表现。为此,我们开发了MobileDa框架,了解可转让功能的同时保持深度模型的简单结构。我们的方法允许在服务器中培训的新教师网络培训,以蒸发在边缘设备中运行的学生网络的知识,这通过跨域蒸馏实现。在新环境中利用未标记的数据,我们的学生模型修改了学习的功能是域不变的,然后是我们在边缘设备中运行的客观模型。我们的方法是对基于某种基于某种基于物联网的WiFi手势识别方案和三种经典视觉适应基准。实证研究证实了域转移蒸馏的有效性,总体结果表明,我们的模型仅使用简单的网络实现最先进的性能。

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