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首页> 外文期刊>Chinese Journal of Electronics >Complex SAR Image Compression Using Entropy-Constrained Dictionary Learning and Universal Trellis Coded Quantization
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Complex SAR Image Compression Using Entropy-Constrained Dictionary Learning and Universal Trellis Coded Quantization

机译:熵约束字典学习和通用网格编码量化的复杂SAR图像压缩

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摘要

In this paper, an Entropy-constrained dictionary learning algorithm (ECDLA) is introduced for efficient compression of Synthetic aperture radar (SAR) complex images. ECDLA RI encodes the Real and imaginary parts of the images using ECDLA and sparse representation, and ECDLA AP encodes the Amplitude and phase parts respectively. When compared with the compression method based on the traditional Dictionary learning algorithm (DLA), ECDLA RI improves the Signal-to-noise ratio (SNR) up to 0.66dB and reduces the Mean phase error (MPE) up to 0.0735 than DLA RI. With the same MPE, ECDLA AP outperforms DLA AP by up to 0.87dB in SNR. Furthermore, the proposed method is also suitable for real-time applications.
机译:本文介绍了一种熵约束字典学习算法(ECDLA),用于有效压缩合成孔径雷达(SAR)复杂图像。 ECDLA RI使用ECDLA和稀疏表示对图像的实部和虚部进行编码,而ECDLA AP分别对振幅部分和相位部分进行编码。与基于传统字典学习算法(DLA)的压缩方法相比,ECDLA RI比DLA RI的信噪比(SNR)最高可提高0.66dB,平均相位误差(MPE)最高可降低0.0735。使用相同的MPE,ECDLA AP在SNR方面比DLA AP高出0.87dB。此外,所提出的方法也适用于实时应用。

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