Remote Sensing Image Compression Evaluation Method Based on Neural Network Prediction and Fusion Quality Fidelity
Author(s) -
Wenbing Yang,
Feng Tong,
Xiaoqi Gao,
Chunlei Zhang,
Guantian Chen,
Xiao Zhi-jian
Publication year - 2021
Publication title -
mobile information systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.346
H-Index - 34
eISSN - 1875-905X
pISSN - 1574-017X
DOI - 10.1155/2021/9948811
Subject(s) - computer science , image compression , lossy compression , artificial neural network , data compression , image quality , artificial intelligence , block (permutation group theory) , remote sensing , fidelity , computer vision , image (mathematics) , image processing , mathematics , telecommunications , geometry , geology
Lossy compression can produce false information, such as blockiness, noise, ringing, ghosting, aliasing, and blurring. This paper provides a comprehensive model for optical remote sensing image characteristics based on the block standard deviation’s retention rate (BSV). We first propose a compression evaluation method, CR_CI, that combines neural network prediction and remote sensing image quality fidelity. Through the compression evaluation and improved experimental verification of multiple satellites (CBERS-02B satellite, ZY-1-02C satellite, CBERS-04 satellite, GF-1, GF-2, etc.), CR_CI can be stable, cleverly test changes in the information extraction performance of optical remote sensing images, and provide strong support for optimizing the design of compression schemes. In addition, a predictor of remote sensing image number compression is constructed based on deep neural networks, which combines compression efficiency (compression ratio), image quality, and protection. Empirical results demonstrate the image’s highest compression efficiency under the premise of satisfying visual interpretation and quantitative application.
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