Content-aware Progressive Image Compression and Syncing

2023 IEEE International Symposium on Multimedia (ISM)(2023)

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摘要
Progressive image compression and syncing between devices is an important and challenging problem. When the users are collaboratively editing the same image online, they would expect the changes made by others to be instantly displayed on their side. Since such syncing can be very frequent and usually the image sizes are significantly larger than text data, image live co-editing cannot be easily achieved in the same way as those commonly seen in document co-editing tools. While previous compression techniques like PNG, JPEG and FLIF enable spatially progressive compression, they do not support content-aware compression. Thus, even though the image can be gradually displayed, users cannot prioritize the transmission and display of the most important bits of the image, and often times the resulting pixelation during syncing greatly hurts the user experience. Many existing works on saliency detection can be utilized to provide content awareness. However, many of those techniques are deep-learning-based and it would be computationally prohibitive to directly use them in a latency sensitive scenario like collaborative editing on client devices. In this work, we aim to find a middle ground between a good quality pixel prioritization strategy and extremely fast compression. We start with the pipeline proposed in FLIF and improve it with an entropy-based pixel prioritization strategy, which enables better progressive compression and syncing. Specifically, we modify the traditional Adam interlacing mode [1] to enable an arbitrary pixel transmission order avoiding spatial dependency issues. After constructing the MANIAC tree, we calculate entropy values for each leaf nodes and use them to determine the priority. In addition, we propose to use pixel masks of individual zoom levels to indicate the positions of the transmitted pixels. We further integrate the mask compression algorithm to reduce the communication cost. Through extensive experiments on over 2000 images, we show our proposed method outperforms the baseline methods.
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关键词
Image Compression,Progressive Compression,User Experience,Extensive Experiments,Text Data,Spatial Dependence,Leaf Node,Compression Algorithm,Saliency Detection,Zoom Level,Part Of The Image,Version Of Image
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