Video Coding for Machines (VCM) is committed to bridging to an extent separate research tracks of video/image compression and feature compression, and attempts to optimize compactness and efficiency jointly from a unified perspective of high accuracy machine vision and full fidelity human vision. In this paper, we summarize VCM methodology and philosophy based on existing academia and industrial efforts. The development of VCM follows a general rate-distortion optimization, and the categorization of key modules or techniques is established. From previous works, it is demonstrated that, although existing works attempt to reveal the nature of scalable representation in bits when dealing with machine and human vision tasks, there remains a rare study in the generality of low bit rate representation, and accordingly how to support a variety of visual analytic tasks. Therefore, we investigate a novel visual information compression for the analytics taxonomy problem to strengthen the capability of compact visual representations extracted from multiple tasks for visual analytics. A new perspective of task relationships versus compression is revisited. By keeping in mind the transferability among different machine vision tasks (e.g. high-level semantic and mid-level geometry-related), we aim to support multiple tasks jointly at low bit rates. In particular, to narrow the dimensionality gap between neural network generated features extracted from pixels and a variety of machine vision features/labels (e.g. scene class, segmentation labels), a codebook hyperprior is designed to compress the neural network-generated features. As demonstrated in our experiments, this new hyperprior model is expected to improve feature compression efficiency by estimating the signal entropy more accurately, which enables further investigation of the granularity of abstracting compact features among different tasks.
翻译:机器的视频编码( VCM) 致力于在一定程度上弥补视频/图像压缩和特征压缩等不同研究轨迹的不同研究轨迹,并试图从高精度机器视觉和完全忠诚的人的视觉的统一角度,共同优化压缩和效益。 在本文中,我们根据现有的学术和工业努力,总结VCM的方法和哲学。 VCM的开发遵循了普遍的比例扭曲优化,并确定了关键模块或技术的分类。从以往的著作可以看出,尽管现有工作试图显示在处理机器和人类视觉任务时,比特部分的可缩缩缩缩缩代表的性质,但从低比特率代表的通用角度,以及据此如何支持各种视觉分析任务。 因此,我们调查分析分析学问题的新视觉信息压缩,以加强从多项任务中提取的直观表述能力。 重现任务与压缩之间的新模式关系,通过铭记不同机器视觉任务的可转换性( 例如,高调调调调调调调的内脏和中调),仍然有罕见的研究:低级网络的内脏结构,我们的目标是从高调的预估测。