1. On Self-Adaptive Perception Loss Function for Sequential Lossy Compression
- Author
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Salehkalaibar, Sadaf, Phan, Buu, Cai, Likun, Dick, Joao Atz, Yu, Wei, Chen, Jun, and Khisti, Ashish
- Subjects
Computer Science - Machine Learning ,Computer Science - Information Theory - Abstract
We consider causal, low-latency, sequential lossy compression, with mean squared-error (MSE) as the distortion loss, and a perception loss function (PLF) to enhance the realism of reconstructions. As the main contribution, we propose and analyze a new PLF that considers the joint distribution between the current source frame and the previous reconstructions. We establish the theoretical rate-distortion-perception function for first-order Markov sources and analyze the Gaussian model in detail. From a qualitative perspective, the proposed metric can simultaneously avoid the error-permanence phenomenon and also better exploit the temporal correlation between high-quality reconstructions. The proposed metric is referred to as self-adaptive perception loss function (PLF-SA), as its behavior adapts to the quality of reconstructed frames. We provide a detailed comparison of the proposed perception loss function with previous approaches through both information theoretic analysis as well as experiments involving moving MNIST and UVG datasets., Comment: arXiv admin note: text overlap with arXiv:2305.19301
- Published
- 2025