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A Computationally Efficient Neural Network For Faster Image Classification

机译:一种计算效率高的神经网络,用于更快的图像分类

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Deep Convolutional Neural Networks have led to series of breakthroughs in image classification. With increasing demand to run DCNN based models on mobile platforms with minimal computing capabilities and lesser storage space, the challenge is optimizing those DCNN models for lesser computation and smaller memory footprint. This paper presents a highly efficient and modularized Deep Neural Network (DNN) model for image classification, which outperforms state of the art models in terms of both speed and accuracy. The proposed DNN model is constructed by repeating a building block that aggregates a set of transformations with the same topology. In order to make a lighter model, it uses Depthwise Separable convolution, Grouped convolution and identity shortcut connections. It reduces computations approximately by 100M FLOPs in comparison to MobileNet with a slight improvement in accuracy when validated on CIFAR-10, CIFAR-100 and Caltech-256 datasets.
机译:深度卷积神经网络在图像分类方面带来了一系列突破。随着在具有最小计算能力和较小存储空间的移动平台上运行基于DCNN的模型的需求不断增加,面临的挑战是优化这些DCNN模型以减少计算量和减小内存占用。本文提出了一种用于图像分类的高效且模块化的深度神经网络(DNN)模型,该模型在速度和准确性方面均优于最新模型。所提出的DNN模型是通过重复构建积木来构建的,该积木以相同的拓扑聚合一组转换。为了创建更轻的模型,它使用了深度可分离卷积,分组卷积和标识快捷方式连接。与MobileNet相比,它在CIFAR-10,CIFAR-100和Caltech-256数据集上进行验证时,与MobileNet相比,将计算量减少了约1亿个FLOP,并且在准确性方面略有提高。

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