Abstract

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 โ€œoriginal pixel intensityโ€-based coding approaches using traditional image coders (e.g., JPEG2000) to the โ€œresidualโ€-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.

Highlights

  • Hyperspectral (HS) images are concerned with the measurement, analysis, and interpretation of spectra acquired from a given scene at a short, medium or long distance

  • Other than the abovementioned methods, Principal Component Analysis (PCA)-discrete cosine transform (DCT) and PCA-JPEG2000 have been widely applied in HS image compression fields [10,11,12,13,14,15,16,17,18]

  • In this paper we propose the Reflectance Prediction Modelling (RPM) technique to improve the compression capability of a HS image and Gaussian mixture-based common informatics wavelength (CIW) band modelling into the High Efficiency Video Coding (HEVC) video-coding framework

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Summary

Introduction

Hyperspectral (HS) images are concerned with the measurement, analysis, and interpretation of spectra acquired from a given scene (or specific object) at a short, medium or long distance. We argue that a fundamental shift is required from the existing โ€œoriginal pixel intensityโ€-based coding approaches using traditional image coders (e.g. JPEG2000) to the โ€œresidualโ€ based approaches similar to a video coder (e.g. HEVC [3]) to achieve high compression ratios for HS images. To take advantage of the similarity and variability among contiguous spectral bands, we generate a common informatics wavelength (CIW) band in each band using a Gaussian mixture modelling and a linear spectral predicted band by considering the differences of spectral bands. The CIW band is updated before encoding the current band using the spectral predicted band through Gaussian modelling. This is a new approach to using HEVC inter-coding for HS data compression, with RPM noticeably improving the HEVCinter compression performance in our experiments. The results of the experiment confirm that the proposed compression technique based on RPM outperforms the standalone HEVC and other leading-edge compression techniques in terms of rate-distortion performance

Background
Motivation of multispectral data prediction
Findings
Conclusion
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