AI RESEARCH
Lossy Common Information in a Learnable Gray-Wyner Network
arXiv CS.LG
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ArXi:2601.21424v2 Announce Type: replace Many computer vision tasks share substantial overlapping information, yet conventional codecs tend to ignore this, leading to redundant and inefficient representations. The Gray-Wyner network, a classical concept from information theory, offers a principled framework for separating common and task-specific information. Inspired by this idea, we develop a learnable three-channel codec that disentangles shared information from task-specific details across multiple vision tasks.