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Poster

Removing Cost Volumes from Optical Flow Estimators

Simon Kiefhaber · Stefan Roth · Simone Schaub-Meyer


Abstract: Cost volumes are used in every modern optical flow estimator, but due to their computational and space complexity, they are often a limiting factor in optical flow methods regarding both processing speed and the resolution of input frames. Motivated by our empirical observation that cost volumes lose their importance once all other network parts of, e.g., a RAFT-based pipeline have been sufficiently trained, we introduce a training strategy that allows to remove the cost volume from optical flow estimators throughout training. This leads to significantly improved inference speed and reduced memory requirements. Using our training strategy, we create three different models covering different compute budgets. Our most accurate model reaches state-of-the-art accuracy while being $1.2\times$ faster and having a $6\times$ lower memory footprint than comparable models; our fastest model is capable of processing Full HD frames at $20\mathrm{FPS}$ using only $500\mathrm{MB}$ of memory.

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