Perceptually Lossless Compression for Mastcam Multispectral Images: A Comparative Study

Q3 Computer Science
C. Kwan, Jude Larkin
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引用次数: 4

Abstract

The two mast cameras, Mastcams, onboard Mars rover Curiosity are multispectral imagers with nine bands in each. Currently, the images are compressed losslessly using JPEG, which can achieve only two to three times of compression. We present a comparative study of four approaches to compressing multispectral Mastcam images. The first approach is to divide the nine bands into three groups with each group having three bands. Since the multispectral bands have strong correlation, we treat the three groups of images as video frames. We call this approach the Video approach. The second approach is to compress each group separately and we call it the split band (SB) approach. The third one is to apply a two-step approach in which the first step uses principal component analysis (PCA) to compress a nine-band image cube to six bands and a second step compresses the six PCA bands using conventional codecs. The fourth one is to apply PCA only. In addition, we also present subjective and objective assessment results for compressing RGB images because RGB images have been used for stereo and disparity map generation. Five well-known compression codecs, including JPEG, JPEG-2000 (J2K), X264, X265, and Daala in the literature, have been applied and compared in each approach. The performance of different algorithms was assessed using four well-known performance metrics. Two are conventional and another two are known to have good correlation with human perception. Extensive experiments using actual Mastcam images have been performed to demonstrate the various approaches. We observed that perceptually lossless compression can be achieved at 10:1 compression ratio. In particular, the performance gain of the SB approach with Daala is at least 5 dBs in terms peak signal-to-noise ratio (PSNR) at 10:1 compression ratio over that of JPEG. Subjective comparisons also corroborated with the objective metrics in that perceptually lossless compression can be achieved even at 20 to 1 compression.
桅杆凸轮多光谱图像感知无损压缩的比较研究
好奇号火星探测器上的两个桅杆照相机是多光谱成像仪,每个都有九个波段。目前使用JPEG对图像进行无损压缩,只能实现2 ~ 3倍的压缩。我们提出了四种方法来压缩多光谱Mastcam图像的比较研究。第一种方法是将九个波段分成三组,每组有三个波段。由于多光谱波段具有很强的相关性,我们将三组图像作为视频帧处理。我们称这种方法为视频方法。第二种方法是分别压缩每个组,我们称之为分割带(SB)方法。第三步是采用两步方法,其中第一步使用主成分分析(PCA)将九波段图像立方体压缩为六个波段,第二步使用传统编解码器压缩六个PCA波段。第四种方法是只应用PCA。此外,由于RGB图像已被用于立体和视差图的生成,我们还提供了压缩RGB图像的主观和客观评估结果。在每种方法中应用并比较了五种知名的压缩编解码器,包括文献中的JPEG、JPEG-2000 (J2K)、X264、X265和Daala。使用四个众所周知的性能指标来评估不同算法的性能。两种是传统的,另外两种已知与人类感知有很好的相关性。利用Mastcam的实际图像进行了大量实验,以演示各种方法。我们观察到在10:1的压缩比下可以实现感知无损压缩。特别是,使用Daala的SB方法在10:1压缩比下的峰值信噪比(PSNR)比JPEG的性能增益至少为5 db。主观比较也证实了客观指标,即即使在20比1的压缩下也可以实现感知无损压缩。
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来源期刊
CiteScore
3.20
自引率
0.00%
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