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首页> 外文期刊>ACM Transactions on Embedded Computing Systems >Distill-Net: Application-Specific Distillation of Deep Convolutional Neural Networks for Resource-Constrained IoT Platforms
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Distill-Net: Application-Specific Distillation of Deep Convolutional Neural Networks for Resource-Constrained IoT Platforms

机译:蒸馏网:资源受限区域平台的深度卷积神经网络的特定应用特定蒸馏

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摘要

Many Internet-of-Things (IoT) applications demand fast and accurate understanding of a few key events in their surrounding environment. Deep Convolutional Neural Networks (CNNs) have emerged as an effective approach to understand speech, images, and similar high-dimensional data types. Algorithmic performance of modern CNNs, however, fundamentally relies on learning class-agnostic hierarchical features that only exist in comprehensive training datasets with many classes. As a result, fast inference using CNNs trained on such datasets is prohibitive for most resource-constrained IoT platforms. To bridge this gap, we present a principled and practical methodology for distilling a complex modern CNN that is trained to effectively recognize many different classes of input data into an application-dependent essential core that not only recognizes the few classes of interest to the application accurately but also runs efficiently on platforms with limited resources. Experimental results confirm that our approach strikes a favorable balance between classification accuracy (application constraint), inference efficiency (platform constraint), and productive development of new applications (business constraint).
机译:许多互联网的东西(IOT)应用程序需要快速准确地了解周围环境中的一些关键事件。深度卷积神经网络(CNNS)已成为理解语音,图像和类似的高维数据类型的有效方法。然而,现代CNN的算法性能从根本上依赖于学习类别 - 不可知的分层功能,这些特征只存在于具有许多类的全面训练数据集中。结果,使用在这种数据集上训练的CNNS的快速推断对于大多数资源受限的物联网具有禁止。为了弥合这一差距,我们提出了一种用于蒸馏的复杂现代CNN的原则和实用的方法,该方法被训练,以有效地将许多不同类别的输入数据识别到应用程序相关的必要核心,这不仅可以准确地识别申请的少数兴趣但也有效地在资源有限的平台上运行。实验结果证实,我们的方法在分类精度(应用限制),推理效率(平台约束)和新应用程序的生产开发(业务约束)之间攻击了有利的平衡。

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