判别式
计算机科学
高光谱成像
有损压缩
人工智能
模式识别(心理学)
特征(语言学)
图像压缩
特征学习
数据压缩
特征提取
编码(内存)
压缩(物理)
频道(广播)
失真(音乐)
图像(数学)
图像处理
计算机网络
放大器
哲学
语言学
材料科学
带宽(计算)
复合材料
作者
Yuanyuan Guo,Yanwen Chong,Shaoming Pan
标识
DOI:10.1109/tgrs.2023.3282186
摘要
In recent years, advances in deep learning have greatly promoted the development of hyperspectral image (HSI) compression algorithms. However, most existing compression approaches directly rely on rate-distortion optimization without other guidance during model learning. Therefore, this brings challenges to distinguishing similar features or objects that are widely available in HSIs, especially in remote sensing scenes, since quantification in lossy compression can cause informative attribute (e.g., category) collapse and loss problems at high compression ratios. In this paper, we propose a novel hyperspectral compression network via contrastive learning (HCCNet) to help generate discriminative representations and preserve informative attributes as much as possible. Specifically, we design a contrastive informative feature encoding (CIFE) to extract and organize discriminative attributes from the original HSIs by enlarging the discrimination over the learned latents in different channel indexes to relieve attribute collapses. In the case of attribute losses, we define a contrastive invariant feature recovery (CIFR) to discover the lost attributes via contrastive feature refinement. Experiments on five different HSI datasets illustrate that the proposed HCCNet can achieve impressive compression performance, such as improvement of the peak signal-to-noise ratio (PSNR) from 28.86 dB (at 0.2284 bpppb) to 30.30 dB (at 0.1960 bpppb) on the Chikusei dataset.
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