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Distributed fine-tuning of CNNs for image retrieval on multiple mobile devices

机译:用于多个移动设备上的图像检索的CNN分布微调

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The high performance of mobile devices has enabled deep learning to be extended to also exploit its strengths on such devices. However, because their computing power is not yet sufficient to perform on-device training, a pre-trained model is usually downloaded to mobile devices, and only inference is performed on them. This situation leads to the problem that accuracy may be degraded if the characteristics of the data for training and those for inference are sufficiently different. In general, fine-tuning allows a pre-trained model to adapt to a given data set, but it has also been perceived as difficult on mobile devices. In this paper, we introduce our on-going effort to improve the quality of mobile deep learning by enabling fine-tuning on mobile devices. In order to reduce its cost to a level that can be operated on mobile devices, a light-weight fine-tuning method is proposed, and its cost is further reduced by using distributing computing on mobile devices. The proposed technique has been applied to LetsPic-DL, a group photoware application under development in our research group. It required only 24 seconds to fine-tune a pre-trained MobileNet with 100 photos on five Galaxy S8 units, resulting in an excellent image retrieval accuracy reflected a 27-35% improvement. (C) 2020 Elsevier B.V. All rights reserved.
机译:移动设备的高性能使得能够扩展深度学习,也可以利用其在这些设备上的优势。然而,由于它们的计算能力尚未足以执行设备训练,所以通常将预先接受的模型用于移动设备,并且仅对它们执行推断。如果培训数据的特性和推动的那些足够不同,这种情况会导致准确度可能降低的问题。通常,微调允许预先训练的模型适应给定的数据集,但在移动设备上也被认为是困难的。在本文中,我们通过在移动设备上进行微调来提高我们的持续提高移动深度学习的质量。为了将其成本降低到可在移动设备上运行的水平,提出了一种轻量微调方法,通过在移动设备上使用分布计算进一步降低了其成本。所提出的技术已应用于Letspic-DL,在我们的研究组下开发的群体Photow-DL。只需24秒即可微调预先训练的MobileNet,在五个星系S8单元上有100张照片,导致优异的图像检索精度反映了27-35%的改进。 (c)2020 Elsevier B.V.保留所有权利。

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