Multispectral Image Compression Based on HEVC Using Pel-Recursive Inter-Band Prediction

Anna Meyer, Nils Genser, A. Kaup
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引用次数: 2

Abstract

Recent developments in optical sensors enable a wide range of applications for multispectral imaging, e.g., in surveillance, optical sorting, and life-science instrumentation. Increasing spatial and spectral resolution allows creating higher quality products, however, it poses challenges in handling such large amounts of data. Consequently, specialized compression techniques for multispectral images are required. High Efficiency Video Coding (HEVC) is known to be the state of the art in efficiency for both video coding and still image coding. In this paper, we propose a cross-spectral compression scheme for efficiently coding multispectral data based on HEVC. Extending intra picture prediction by a novel inter-band predictor, spectral as well as spatial redundancies can be effectively exploited. Dependencies among the current band and further spectral references are considered jointly by adaptive linear regression modeling. The proposed backward prediction scheme does not require additional side information for decoding. We show that our novel approach is able to outperform state-of-the-art lossy compression techniques in terms of rate-distortion performance. On different data sets, average Bjøntegaard delta rate savings of 82 % and 55 % compared to HEVC and a reference method from literature are achieved, respectively.
基于带间递归预测的HEVC多光谱图像压缩
光学传感器的最新发展为多光谱成像提供了广泛的应用,例如,在监视,光学分选和生命科学仪器中。提高空间和光谱分辨率可以创建更高质量的产品,然而,它在处理如此大量的数据时带来了挑战。因此,需要专门的多光谱图像压缩技术。高效视频编码(HEVC)被认为是视频编码和静止图像编码效率最高的技术。本文提出了一种基于HEVC的多光谱数据高效编码的交叉光谱压缩方案。通过一种新的带间预测器扩展图像内预测,可以有效地利用光谱和空间冗余。采用自适应线性回归模型,综合考虑了当前波段与进一步光谱参考之间的依赖关系。所提出的反向预测方案不需要额外的侧信息进行解码。我们表明,我们的新方法能够在率失真性能方面优于最先进的有损压缩技术。在不同的数据集上,与HEVC和文献中的参考方法相比,平均Bjøntegaard δ速率分别节省了82%和55%。
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