基于CNN的无人机遥感多光谱图像压缩研究

Mengxu Zhu, Guohong Li, Wenhao Zhang
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引用次数: 2

摘要

无人机遥感多光谱图像因其高时空分辨率而越来越受到人们的青睐。然而,多光谱图像具有频带数量多、数据量大、空间和光谱冗余等特点。这些特点给图像的存储和传输带来了巨大的挑战。根据多光谱图像的特点,采用基于CNN的端到端多光谱图像压缩框架。整个框架由自编码器、量化结构、熵编码和率失真优化组成。本文的创新之处是提出了一种新的多源数据预处理方法,将多光谱图像的DN值统一转换为反射率,多光谱图像压缩框架采用1 * 1卷积减少图像的谱间冗余,自编码器降低图像维数,高斯混合熵编码估计码率,码率失真优化共同优化码率和失真。实验结果表明,在相同比特率下,该方法模型的图像压缩效果明显优于传统的图像压缩方法,重构图像的质量明显提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on UAV remote sensing multispectral image compression based on CNN
UAV remote sensing multispectral image has become more and more popular because of its high temporal and spatial resolution. However, multispectral image has the characteristics of large number of bands, large amount of data, spatial and spectral redundancy. These characteristics bring great challenges to image storage and transmission. According to the characteristics of multispectral images, an end-to-end multispectral image compression framework based on CNN is adopted. The whole framework is composed of self-encoder, quantization structure, entropy coding and rate distortion optimization. The innovation of this paper is to propose a new multi-source data preprocessing method, which uniformly converts the DN value of multispectral image into reflectivity, and the multispectral image compression framework uses 1 * 1 convolution to reduce the inter spectral redundancy of the image, self-encoder to reduce the dimension of the image, Gaussian mixture entropy coding to estimate the code rate, rate distortion optimization to jointly optimize the code rate and distortion. The experimental results show that under the same bit rate, the image compression effect of this method model is significantly better than the traditional image compression method, and the quality of the reconstructed image is significantly improved.
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