Comparative analysis of compression algorithms for four-dimensional light fields

R. Bolbakov, V. A. Mordvinov, A. D. Makarevich
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Abstract

Objectives. The widespread use of systems for capturing light fields is due to the high quality of the reproduced image. This type of capture, although qualitatively superior to traditional methods to capturing volumetric images, generates a huge amount of data needed to reconstruct the original captured 4D light field. The purpose of the work is to consider traditional and extended to four-dimensional image compression algorithms, to perform a comparative analysis and determine the most suitable.Methods. Mathematical methods of signal processing and methods of statistical analysis are used.Results. Algorithms are compared and analyzed in relation to the compression of four-dimensional light fields using the PSNR metric. The selected evaluation criterion is affected not only by the dimension of the compression algorithm, but also by the distance of the baseline of the capture setting, since the difference between images increases with the distance between the optical centers of each camera matrix. Thus, for installations consisting of an array of machine vision cameras located on racks and placed in a room, the obvious choice would be to use conventional image compression methods. Furthermore, based on the assessment of the arbitrariness of video compression methods, it should be noted that the XVC algorithm remains undervalued, although its results are higher. Algorithm AV1 can be considered the next in order of importance. It has been established that the latest compression algorithms show higher performance if compared to their predecessors. It has also been shown that with a small distance between the optical centers of the captured images, the use of video compression algorithms is preferable to the use of image compression algorithms, since they show better results in both three-dimensional and four-dimensional versions.Conclusions. A comparison of the results obtained shows the need to use algorithms from the video compression family (XVC, AV1) on installations with a long baseline (mounted on camera stands). When working with integrated light field cameras (Lytro) and setting the capture with a short baseline, it is recommended to use image compression algorithms (JPEG). In general, video compression algorithms are recommended, in particular XVC, since on average it shows an acceptable level of PSNR in both the case of a short and long installation baseline.
四维光场压缩算法的比较分析
目标。捕获光场的系统的广泛使用是由于再现图像的高质量。这种类型的捕获虽然在质量上优于传统的捕获体图像的方法,但产生了重建原始捕获的4D光场所需的大量数据。本工作的目的是考虑传统的和扩展到四维的图像压缩算法,进行比较分析,确定最合适的方法。应用了信号处理的数学方法和统计分析的方法。比较和分析了利用PSNR度量对四维光场进行压缩的算法。所选择的评价标准不仅受压缩算法维数的影响,还受捕获设置基线距离的影响,因为图像之间的差异随着每个相机矩阵光学中心之间的距离而增加。因此,对于安装在机架上并放置在房间内的一系列机器视觉摄像机来说,显而易见的选择是使用传统的图像压缩方法。此外,基于对视频压缩方法任意性的评估,应该注意到XVC算法仍然被低估,尽管它的结果更高。算法AV1可以被认为是下一个重要的顺序。研究表明,最新的压缩算法与以前的算法相比具有更高的性能。还表明,在捕获图像的光学中心之间的距离较小的情况下,使用视频压缩算法比使用图像压缩算法更可取,因为它们在三维和四维版本中都显示出更好的结果。所获得的结果的比较表明,需要在长基线(安装在摄像机支架上)的安装上使用视频压缩家族(XVC, AV1)的算法。当使用集成光场相机(Lytro)并使用短基线设置捕获时,建议使用图像压缩算法(JPEG)。一般来说,建议使用视频压缩算法,特别是XVC,因为无论在短基线还是长基线的情况下,它都显示出可接受的PSNR水平。
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