Proceedings of the 2nd International Workshop on Embedded and Mobile Deep Learning

Hongkai Wen, Petko Georgiev, Erran L. Li, Samir Kumar, A. Balasubramanian, Youngki Lee
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Abstract

In recent years, breakthroughs from the field of deep learning have transformed how sensor data (e.g., images, audio, and even accelerometers and GPS) can be interpreted to extract the high-level information needed by bleeding-edge sensor-driven systems like smartphone apps and wearable devices. Today, the state-of-the-art in computational models that, for example, recognize a face, track user emotions, or monitor physical activities are increasingly based on deep learning principles and algorithms. Unfortunately, deep models typically exert severe demands on local device resources and this conventionally limits their adoption within mobile and embedded platforms. As a result, in far too many cases existing systems process sensor data with machine learning methods that have been superseded by deep learning years ago.
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第二届嵌入式和移动深度学习国际研讨会论文集
近年来,深度学习领域的突破已经改变了传感器数据(例如图像,音频,甚至加速度计和GPS)的解释方式,以提取智能手机应用程序和可穿戴设备等前沿传感器驱动系统所需的高级信息。如今,最先进的计算模型,例如识别人脸、跟踪用户情绪或监控身体活动,越来越多地基于深度学习原理和算法。不幸的是,深度模型通常会对本地设备资源产生严重的需求,这通常限制了它们在移动和嵌入式平台中的应用。因此,在很多情况下,现有系统使用机器学习方法处理传感器数据,而这些方法在几年前就被深度学习所取代。
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