Video shared over the internet is commonly referred to as user generated content (UGC). UGC video may have low quality due to various factors including previous compression. UGC video is uploaded by users, and then it is re encoded to be made available at various levels of quality and resolution. In a traditional video coding pipeline the encoder parameters are optimized to minimize a rate-distortion criteria, but when the input signal has low quality, this results in sub-optimal coding parameters optimized to preserve undesirable artifacts. In this paper we formulate the UGC compression problem as that of compression of a noisy/corrupted source. The noisy source coding theorem reveals that an optimal UGC compression system is comprised of optimal denoising of the UGC signal, followed by compression of the denoised signal. Since optimal denoising is unattainable and users may be against modification of their content, we propose using denoised references to compute distortion, so the encoding process can be guided towards perceptually better solutions. We demonstrate the effectiveness of the proposed strategy for JPEG compression of UGC images and videos.
翻译:在互联网上共享的视频通常被称为用户生成的内容(UGC)。UGC视频由于包括先前压缩在内的各种因素,其质量可能较低。UGC视频由用户上传,然后重新编码,以不同质量和分辨率水平提供。在传统的视频编码管道中,编码器参数得到优化,以尽量减少率扭曲标准,但如果输入信号质量低,则其结果为优化的次最佳编码参数,以保存不受欢迎的文物。在本文中,我们将UGC压缩问题与压缩吵杂/碎源相提并论。热源编码符显示,最佳UGC压缩系统包括优化地拆除UGC信号,随后是压缩已解密信号。由于最佳解密是无法实现的,用户可能反对修改其内容,因此我们建议使用分解的引用来计算扭曲,以便编码过程可以引导为概念上更好的解决方案。我们展示了拟议对UGC图像和视频进行 JEG压缩的战略的有效性。