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Rate-energy-accuracy optimization of convolutional architectures for face recognition

机译:用于人脸识别的卷积架构的速率能量精度优化

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Face recognition systems based on Convolutional Neural Networks (CNNs) or convolutional architectures currently represent the state of the art, achieving an accuracy comparable to that of humans. Nonetheless, there are two issues that might hinder their adoption on distributed battery-operated devices (e.g., visual sensor nodes, smartphones, and wearable devices). First, convolutional architectures are usually computationally demanding, especially when the depth of the network is increased to maximize accuracy. Second, transmitting the output features produced by a CNN might require a bitrate higher than the one needed for coding the input image. Therefore, in this paper we address the problem of optimizing the energy-rate-accuracy characteristics of a convolutional architecture for face recognition. We carefully profile a CNN implementation on a Raspberry Pi device and optimize the structure of the neural network, achieving a 17-fold speedup without significantly affecting recognition accuracy. Moreover, we propose a coding architecture custom-tailored to features extracted by such model. (C) 2015 Elsevier Inc. All rights reserved.
机译:目前,基于卷积神经网络(CNN)或卷积架构的人脸识别系统代表了最先进的技术,其准确性可与人类媲美。尽管如此,仍有两个问题可能会阻止其在分布式电池供电的设备(例如视觉传感器节点,智能手机和可穿戴设备)上采用。首先,卷积体系结构通常对计算有要求,尤其是当网络深度增加以最大程度地提高准确性时。其次,传输CNN产生的输出特征可能需要比编码输入图像所需的比特率更高的比特率。因此,在本文中,我们解决了优化用于人脸识别的卷积架构的能量率准确性特征的问题。我们在Raspberry Pi设备上仔细分析了CNN实施方案,并优化了神经网络的结构,实现了17倍的加速,而不会显着影响识别精度。此外,我们提出了针对这种模型所提取的特征量身定制的编码架构。 (C)2015 Elsevier Inc.保留所有权利。

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