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DeepN-JPEG: A Deep Neural Network Favorable JPEG-based Image Compression Framework

机译:Deepn-JPEG:深度神经网络有利的JPEG基于图像压缩框架

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As one of most fascinating machine learning techniques, deep neural network (DNN) has demonstrated excellent performance in various intelligent tasks such as image classification. DNN achieves such performance, to a large extent, by performing expensive training over huge volumes of training data. To reduce the data storage and transfer overhead in smart resource-limited Internet-of-Thing (IoT) systems, effective data compression is a “must-have” feature before transferring real-time produced dataset for training or classification. While there have been many well-known image compression approaches (such as JPEG), we for the first time find that a human-visual based image compression approach such as JPEG compression is not an optimized solution for DNN systems, especially with high compression ratios. To this end, we develop an image compression framework tailored for DNN applications, named “DeepN-JPEG”, to embrace the nature of deep cascaded information process mechanism of DNN architecture. Extensive experiments, based on “ImageNet” dataset with various state-of-the-art DNNs, show that “DeepN-JPEG” can achieve $sim 3.5$× higher compression rate over the popular JPEG solution while maintaining the same accuracy level for image recognition, demonstrating its great potential of storage and power efficiency in DNN-based smart IoT system design.
机译:作为最具吸引力的机器学习技术之一,深神经网络(DNN)在诸如图像分类之类的各种智能任务中表现出优异的性能。 DNN在很大程度上通过对大量培训数据进行昂贵的培训来实现这种性能。为了减少智能资源有限的Internet(IoT)系统中的数据存储和转移开销,在传输实时产生的数据集以进行培训或分类之前,有效的数据压缩是“必有的”功能。虽然已经有许多众所周知的图像压缩方法(例如JPEG),但我们首次发现人类视觉基于的图像压缩方法,例如JPEG压缩不是DNN系统的优化解决方案,尤其是高压缩比。为此,我们开发了针对DNN应用程序量身定制的图像压缩框架,名为“Deepn-JPEG”,以接受DNN架构的深层级联信息流程机制的性质。基于具有各种最先进的DNN的“ImageNet”数据集的大量实验,显示“Deepn-JPEG”可以通过流行的JPEG解决方案实现$ SIM 3.5 $×更高的压缩率,同时保持相同的精度水平图像识别,展示了基于DNN的智能物联网系统设计中的存储和功率效率的巨大潜力。

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