When it comes to image compression in digital cameras, denoising is traditionally performed prior to compression. However, there are applications where image noise may be necessary to demonstrate the trustworthiness of the image, such as court evidence and image forensics. This means that noise itself needs to be coded, in addition to the clean image itself. In this paper, we present a learnt image compression framework where image denoising and compression are performed jointly. The latent space of the image codec is organized in a scalable manner such that the clean image can be decoded from a subset of the latent space at a lower rate, while the noisy image is decoded from the full latent space at a higher rate. The proposed codec is compared against established compression and denoising benchmarks, and the experiments reveal considerable bitrate savings of up to 80% compared to cascade compression and denoising.
翻译:当涉及到数字相机的图像压缩时,通常在压缩之前进行去除。然而,有些应用程序可能需要图像噪音来显示图像的可信度,例如法庭证据和图像法证。这意味着噪音本身需要编码,除了干净图像本身之外,还需要进行编码。在本文中,我们展示了一个经过学习的图像压缩框架,通过这个框架可以共同进行图像去除和压缩。图像编码的潜伏空间以可缩放的方式组织起来,这样干净的图像可以以较低的速率从一个潜藏空间子组中解码,而噪音图像则以更高的速率从整个潜藏空间解码。提议的编码器比既有的压缩和去除污染基准做了比较,而实验显示比级压缩和淡化要节省高达80%的比特率。