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FlexDNN: Input-Adaptive On-Device Deep Learning for Efficient Mobile Vision

机译:FlexDNN:高效移动视觉的输入 - 自适应设备深度学习

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Mobile vision systems powered by the recent advancement in Deep Neural Networks (DNNs) are enabling a wide range of on-device video analytics applications. Considering mobile systems are constrained with limited resources, reducing resource demands of DNNs is crucial to realizing the full potential of these applications. In this paper, we present FlexDNN, an input-adaptive DNN-based framework for efficient on-device video analytics. To achieve this, FlexDNN takes the intrinsic dynamics of mobile videos into consideration, and dynamically adapts its model complexity to the difficulty levels of input video frames to achieve computation efficiency. FlexDNN addresses the key drawbacks of existing systems and pushes the state-of-the-art forward. We use FlexDNN to build three representative on-device video analytics applications, and evaluate its performance on both mobile CPU and GPU platforms. Our results show that FlexDNN significantly outperforms status quo approaches in accuracy, average CPU/GPU processing time per frame, frame drop rate, and energy consumption.
机译:由深神经网络最近进步的移动视觉系统(DNN)提供了各种设备,可实现各种设备视频分析应用程序。考虑到移动系统受到限制资源的限制,降低DNN的资源需求对于实现这些应用的全部潜力至关重要。在本文中,我们呈现FlexDNN,一种基于输入自适应DNN的框架,用于高效的设备视频分析。为此,FlexDNN考虑了移动视频的内在动态,并动态地将其模型复杂性与输入视频帧的难度级别进行了动态,以实现计算效率。 FlexDNN解决了现有系统的关键缺点,并推动了最先进的前进。我们使用FlexDNN构建三个代表性的设备上的视频分析应用程序,并评估其在移动CPU和GPU平台上的性能。我们的研究结果表明,FlexDNN在精度,平均CPU / GPU处理时间,帧降率和能量消耗的平均CPU / GPU处理时间明显优于现状。

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