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Reflectance Prediction Modelling for Residual-Based Hyperspectral Image Coding

机译:基于残差的高光谱图像编码的反射率预测建模

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摘要

A Hyperspectral (HS) image provides observational powers beyond human vision capability but represents more than 100 times the data compared to a traditional image. To transmit and store the huge volume of an HS image, we argue that a fundamental shift is required from the existing “original pixel intensity”-based coding approaches using traditional image coders (e.g., JPEG2000) to the “residual”-based approaches using a video coder for better compression performance. A modified video coder is required to exploit spatial-spectral redundancy using pixel-level reflectance modelling due to the different characteristics of HS images in their spectral and shape domain of panchromatic imagery compared to traditional videos. In this paper a novel coding framework using Reflectance Prediction Modelling (RPM) in the latest video coding standard High Efficiency Video Coding (HEVC) for HS images is proposed. An HS image presents a wealth of data where every pixel is considered a vector for different spectral bands. By quantitative comparison and analysis of pixel vector distribution along spectral bands, we conclude that modelling can predict the distribution and correlation of the pixel vectors for different bands. To exploit distribution of the known pixel vector, we estimate a predicted current spectral band from the previous bands using Gaussian mixture-based modelling. The predicted band is used as the additional reference band together with the immediate previous band when we apply the HEVC. Every spectral band of an HS image is treated like it is an individual frame of a video. In this paper, we compare the proposed method with mainstream encoders. The experimental results are fully justified by three types of HS dataset with different wavelength ranges. The proposed method outperforms the existing mainstream HS encoders in terms of rate-distortion performance of HS image compression.
机译:高光谱(HS)图像可提供超出人类视觉能力的观察力,但与传统图像相比,其代表的数据量是其100倍以上。为了传输和存储大量的HS图像,我们认为,需要从使用传统图像编码器(例如JPEG2000)的现有基于“原始像素强度”的编码方法到使用以下“基于残差”的方法进行根本转变。视频编码器以获得更好的压缩性能。与传统视频相比,由于HS图像在全色图像的光谱和形状域中具有不同的特性,因此需要使用像素级反射模型来开发空间视频冗余的改进视频编码器。本文提出了一种在最新的HS编码视频编码标准高效视频编码(HEVC)中使用反射预测建模(RPM)的新颖编码框架。 HS图像提供了大量数据,其中每个像素都被视为不同光谱带的向量。通过定量比较和分析沿频谱带的像素向量分布,我们得出结论,建模可以预测不同频带的像素向量的分布和相关性。为了利用已知像素矢量的分布,我们使用基于高斯混合的建模方法从先前的频带中估算了当前的预测频带。当我们应用HEVC时,预测频段将与之前的频段一起用作附加参考频段。 HS图像的每个光谱带都被视为视频的单个帧。在本文中,我们将提出的方法与主流编码器进行了比较。三种不同波长范围的HS数据集完全证明了实验结果的正确性。所提出的方法在HS图像压缩的速率失真性能方面优于现有的主流HS编码器。

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