BCS-AE: Integrated Image Compression-Encryption Model Based on AE and Block-CS

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
S. Jameel, Jafar Majidpour
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引用次数: 0

Abstract

For Compressive Sensing problems, a number of techniques have been introduced, including traditional compressed-sensing (CS) image reconstruction and Deep Neural Network (DNN) models. Unfortunately, due to low sampling rates, the quality of image reconstruction is still poor. This paper proposes a lossy image compression model (i.e. BCS-AE), which combines two different types to produce a model that uses more high-quality low-bitrate CS reconstruction. Initially, block-based compressed sensing (BCS) was utilized, and it was done one block at a time by the same operator. It can correctly extract images with complex geometric configurations. Second, we create an AutoEncoder architecture to replace traditional transforms, and we train it with a rate-distortion loss function. The proposed model is trained and then tested on the CelebA and Kodak databases. According to the results, advanced deep learning-based and iterative optimization-based algorithms perform better in terms of compression ratio and reconstruction quality.
BCS-AE:基于AE和块CS的集成图像压缩加密模型
对于压缩传感问题,已经引入了许多技术,包括传统的压缩传感(CS)图像重建和深度神经网络(DNN)模型。不幸的是,由于采样率低,图像重建的质量仍然很差。本文提出了一种有损图像压缩模型(即BCS-AE),它结合了两种不同的类型来产生一种使用更高质量的低比特率CS重建的模型。最初,使用基于块的压缩传感(BCS),由同一操作员一次一个块地完成。它可以正确地提取具有复杂几何配置的图像。其次,我们创建了一个AutoEncoder架构来取代传统的变换,并使用率失真损失函数对其进行训练。所提出的模型经过训练,然后在CelebA和Kodak数据库上进行测试。结果表明,基于深度学习和迭代优化的高级算法在压缩比和重建质量方面表现更好。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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