DCT- compcnn:一种使用JPEG压缩DCT系数的图像分类网络

B. Rajesh, M. Javed, Shubham Srivastava, Madan Mohan Malaviya
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引用次数: 18

摘要

卷积神经网络(CNN)在图像处理和计算机视觉领域的普及,激励了全球的研究人员和行业专家以高精度解决各种具有挑战性的研究问题。训练CNN分类器最简单的方法是直接将原始RGB像素图像馈送到网络中。但是,如果我们打算直接使用压缩数据对图像进行分类,那么相同的方法可能效果不佳,就像JPEG压缩图像的情况一样。本文研究了对JPEG压缩数据的输入表示进行修改,然后将其送入CNN的问题。该体系结构被称为DCT-CompCNN。这种新颖的方法表明,CNN也可以用JPEG压缩的DCT系数进行训练,随后可以产生与传统CNN方法相似的良好性能。在CIFAR-10、Dogs vs Cats和MNIST等公共图像分类数据集上,使用现有的ResNet-50架构和提出的DCT-CompCNN架构对改进后的输入表示进行了效率测试,结果表明改进后的输入表示具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DCT-CompCNN: A Novel Image Classification Network Using JPEG Compressed DCT Coefficients
The popularity of Convolutional Neural Network (CNN) in the field of Image Processing and Computer Vision has motivated researchers and industry experts across the globe to solve different challenging research problems with high accuracy. The simplest way to train a CNN classifier is to directly feed the original RGB pixel images into the network. However, if we intend to classify images directly with its compressed data, the same approach may not work better, like in case of JPEG compressed images. This research paper investigates the issues of modifying the input representation of the JPEG compressed data, and then feeding into the CNN. The architecture is termed as DCT-CompCNN. This novel approach has shown that CNNs can also be trained with JPEG compressed DCT coefficients and subsequently can produce a good performance similar to the conventional CNN approach. The efficiency of the modified input representation is tested with the existing ResNet-50 architecture and the proposed DCT-CompCNN architecture on a public image classification datasets like CIFAR-10, Dogs vs Cats and MNIST datasets, reporting a better performance.
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