Learning from the NN-based Compressed Domain with Deep Feature Reconstruction Loss

Liuhong Chen, Heming Sun, Xiaoyang Zeng, Yibo Fan
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引用次数: 2

Abstract

To speedup the image classification process which conventionally takes the reconstructed images as input, compressed domain methods choose to use the compressed images without decompression as input. Correspondingly, there will be a certain decline about the accuracy. Our goal in this paper is to raise the accuracy of compressed domain classification method using compressed images output by the NN-based image compression networks. Firstly, we design a hybrid objective loss function which contains the reconstruction loss of deep feature map. Secondly, one image reconstruction layer is inte-grated into the image classification network for up-sampling the compressed representation. These methods greatly help increase the compressed domain image classification accuracy and need no extra computational complexity. Experimental results on the benchmark ImageNet prove that our design outperforms the latest work ResNet-41 with a large accuracy gain, about 4.49% on the top-1 classification accuracy. Besides, the accuracy lagging behinds the method using reconstructed images is also reduced to 0.47 %. Moreover, our designed classification network has the lowest computational complexity and model complexity.
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基于深度特征重构损失的神经网络压缩域学习
为了加快传统的以重构图像作为输入的图像分类过程,压缩域方法选择使用未解压缩的压缩图像作为输入。相应的,精度也会有一定的下降。本文的目标是利用基于神经网络的图像压缩网络输出的压缩图像来提高压缩域分类方法的准确率。首先,设计了包含深度特征映射重构损失的混合目标损失函数;其次,在图像分类网络中集成一个图像重构层,对压缩后的图像表示进行上采样;这些方法大大提高了压缩域图像分类的精度,并且不需要额外的计算复杂度。在基准ImageNet上的实验结果证明,我们的设计优于最新的工作ResNet-41,具有较大的精度增益,在前1分类精度上约为4.49%。此外,精度也降低到0.47%,相对于使用重建图像的方法。此外,我们设计的分类网络具有最低的计算复杂度和模型复杂度。
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